| United States Patent | 6,900,607 |
| Kleinau , et al. | May 31, 2005 |
Combined feedforward and
feedback parameter estimation for electric machines
Abstract
A method and system for estimating a parameter of an electric machine, including a controller and a switching device, the controller responsive to at least one of: a current sensor, and a temperature sensor. Where the controller executes a parameter estimation process, which is responsive to at least one of: a current value, a torque command and the resultant of the parameter estimation process representing an estimated parameter of the electric machine. The parameter estimation includes a method for estimating a temperature of the electric machine comprising: a temperature sensor operatively connected to and transmitting a temperature signal corresponding to a measured temperature to a controller, which executes a temperature estimation process responsive to a temperature signal from a temperature sensor.
| Inventors: | Kleinau; Julie A. (Bay City, MI); Collier-Hallman; Steven J. (Frankenmuth, MI); Chandy; Ashok (Fenton, MI); Patankar; Ravindra P. (Chassell, MI); Shafer; Daniel W. (Flushing, MI); Zuraski; Jeffery A. (Saginaw, MI) |
| Assignee: | Delphi Technologies, Inc. (Troy, MI) |
| Appl. No.: | 013933 |
| Filed: | December 11, 2001 |
| Current U.S. Class: | 318/432; 180/446; 318/472; 318/783; 388/934; 701/42 |
| Intern'l Class: | H02P 007/00; H02H005/04; B62D011/06; B62D006/00 |
| Field of Search: | 318/432,783,788,791,792,798,806,433,434,471,472,473 180/443,446 388/934 322/33,34 337/298 |
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Primary Examiner: Hsieh; Shih-Yung
Assistant Examiner: Martin; Edgardo San
Attorney, Agent or Firm: Smith; Michael D.
Parent Case Text
CROSS-REFERENCE TO RELATED APPLICATIONS
This application claims the benefit of U.S. provisional
application No. 60/313,302 filed Aug. 17, 2001 the contents of
which are incorporated by reference herein in their entirety.
Claims
1. A system for estimating a parameter of an electric machine,
comprising:
a controller operatively connected to a switching device said
switching device operatively connected between said electric
machine and a power source, said switching device being coupled
to said controller;
a current sensor operatively connected to and transmitting a
current value indicative of a current in said electric machine;
a temperature sensor operatively connected to and transmitting a
temperature signal corresponding to a measured temperature to
said controller; and
said controller executing a parameter estimation process
responsive to at least one of; a temperature value responsive to
said temperature signal, said current value, and a torque command
indicative of a desired torque for said electric machine, wherein
a resultant of said parameter estimation process represents a
parameter of said electric machine.
2. The system of claim 1 wherein said electric machine comprises
an electric motor.
3. The system of claim 1 wherein said parameter comprises at
least one of a resistance, an inductance, and a motor constant.
4. The system of claim 1 wherein said current value is
representative of a torque current for said electric machine.
5. The system of claim 1 wherein said parameter estimation
process comprises a feedback estimation methodology.
6. The system of claim 5 wherein said feedback estimation
methodology comprises a closed loop compensation for build and
life variations in said parameter of said electric machine.
7. The system of claim 5 further including a velocity sensor
disposed to measure a velocity of said electric machine and
transmitting a velocity signal to said controller and wherein
said feedback estimation methodology is responsive to said torque
command signal, said current value, and said velocity signal.
8. The system of claim 5 wherein said feedback estimation
methodology includes comparing said torque command signal with an
estimated torque in a time coherent manner to generate a torque
error.
9. The system of claim 8 wherein said estimated torque is
responsive to said current value, a velocity signal, and an
earlier parameter estimate.
10. The system of claim 9 wherein said earlier parameter estimate
is an earlier motor constant estimate.
11. The system of claim 8 wherein said feedback estimation
methodology includes an error accumulator, which generates said
parameter estimate in response to said torque error.
12. The system of claim 11 wherein said error accumulator
comprises a conditional integrator.
13. The method of claim 11 wherein said error accumulator is
initialized to a zero condition.
14. The system of claim 11 wherein said error accumulator is
initialized to a nominal value of said parameter.
15. The system of claim 11 wherein said error accumulator is
initialized to a saved value of said error accumulator, said
saved value updated with a current output of said error
accumulator only if said current output of said error accumulator
exhibits a change in excess of a selected threshold.
16. The system of claim 5 wherein said controller receives an
estimate good flag.
17. The system of claim 16 wherein said estimate good flag is
indicative of a validity of said estimated torque.
18. The system of claim 16 wherein said feedback estimation
methodology is responsive to said estimate good flag.
19. The system of claim 18 wherein said feedback estimation
methodology is disabled when said estimate good flag indicates an
invalid estimated torque.
20. The system of claim 5 wherein said controller receives a rate
flag.
21. The system of claim 20 wherein said rate flag is indicative
of current dynamics beyond a selected threshold.
22. The system of claim 21 wherein said feedback estimation
methodology is disabled when said rate flag indicates current
dynamics beyond said selected threshold.
23. The system of claim 22 wherein said selected threshold is two
amperes over a 2 millisecond duration.
24. The system of claim 1 wherein said temperature sensor
comprises a thermistor.
25. The system of claim 1 wherein said controller executes a
process for linearizing said temperature signal.
26. The system of claim 25 wherein said linearizing comprises
processing via a linearization function mechanism, with said
output of said temperature sensor being provided to an input of
said linearization function mechanism and an output of said
linearization function mechanism being provided to an input of
said parameter estimation process.
27. The system of claim 1 wherein said parameter estimation
process includes a feedforward estimation methodology responsive
to said temperature value.
28. The system of claim 27 wherein said feedforward estimation
methodology comprises compensation for temperature variations of
said parameter, said compensation employing a temperature
coefficient of said parameter.
29. The system of claim 28 wherein said temperature value is
responsive to a temperature estimation process.
30. The system of claim 29 wherein said temperature estimation
process is implemented by at least one of:
a silicon temperature estimate filter, responsive to said output
from said temperature sensor, said silicon temperature estimate
filter having an output corresponding to an estimated temperature
of a switching device for said electric machine;
a magnet temperature estimate filter, responsive to said output
from said temperature sensor, said magnet temperature estimate
filter having an output corresponding to an estimated temperature
of a magnet associated with said electric machine; and
a copper winding temperature estimate filter responsive to said
output from said temperature sensor, said copper winding
temperature estimate filter having an output corresponding to an
estimated temperature of copper windings associated with said
electric machine.
31. The system of claim 30 wherein said silicon temperature
estimate filter, said magnet temperature estimate filter, and
said copper winding temperature estimate filter are first order,
lead-lag filters.
32. The system of claim 31 wherein said silicon temperature
estimate filter includes a lag frequency range between about 53
µHz and about 320 µHz and a lead frequency range
between about 53 µHz and about 160 µHz.
33. The system of claim 31 wherein said magnet temperature
estimate filter includes a lag frequency range between about 35
µHz and about 80 µHz and a lead frequency range
between about 53 µHz and about 160 µHz.
34. The system of claim 31 wherein said copper winding
temperature estimate filter includes a lag frequency range
between about 35 µHz and about 80 µHz and a lead
frequency range between about 53 µHz and about 160 µHz.
35. The system of claim 29 further comprising an initialization
signal in communication with said controller.
36. The system of claim 35 wherein said initialization signal
initializes said temperature estimation process to a substrate
temperature corresponding to a linearized output of said
temperature sensor.
37. The system of claim 35 wherein said initialization signal
initializes said temperature estimation process by continuing to
operate following power down until said temperature estimation
process approaches an approximately steady state value.
38. The system of claim 35 wherein said initialization signal
initializes said temperature estimation process to an initial
value based on temperature estimates responsive to another
temperature sensor.
39. The system of claim 38 wherein said another temperature
sensor is an engine coolant sensor.
40. The system of claim 35 wherein said initialization signal is
responsive to a computed duration of temperature change as a
function of said another temperature sensor.
41. The system of claim 40 wherein said temperature estimation
process computes a temperature Tx in accordance with
the equation: ##EQU24##
where:
Tx indicates a generalized a temperature for a
material,
Tx0 indicates a generalized initial temperature for Tx,
Te is the engine coolant temperature,
Te0 is the hot engine coolant temperature when the
ignition is first turned off,
Ta is the ambient temperature,
te is the cooling time constant for the engine,
tx is the cooling time constant for the material.
42. The system of claim 35 wherein said initialization signal
initializes said temperature estimation process to an ambient
temperature.
43. The system of claim 35 wherein said initialization signal
initializes said temperature estimation process to an ambient
temperature estimate.
44. The system of claim 43 wherein said ambient temperature
estimate comprises a filter having a cutoff frequency sized to
estimate a thermal time constant of said electric machine.
45. The system of claim 44 wherein said ambient temperature
estimate comprises a first order, lag filter.
46. The system of claim 45 wherein said first order, lag filter
includes a lag frequency range between about 35 µHz and
about 80 µHz.
47. The system of claim 35 wherein said temperature estimation
process is implemented by at least one of:
a silicon temperature estimate filter, responsive to said output
from said temperature sensor, said silicon temperature estimate
filter having an output corresponding to an estimated temperature
of a switching device for said electric machine;
a magnet temperature estimate filter, responsive to said output
from said temperature sensor, said magnet temperature estimate
filter having an output corresponding to an estimated temperature
of a magnet associated with said electric machine; and
a copper winding temperature estimate filter responsive to said
output from said temperature sensor, said copper winding
temperature estimate filter having an output corresponding to an
estimated temperature of copper windings associated with said
electric machine.
48. The system of claim 47 wherein said silicon temperature
estimate filter, said magnet temperature estimate filter, and
said copper winding temperature estimate filter are first order,
lead-lag filters.
49. The system of claim 48 wherein said silicon temperature
estimate filter includes a lag frequency range between about 53
µHz and about 320 µHz and a lead frequency range
between about 53 µHz and about 160 µHz.
50. The system of claim 48 wherein said magnet temperature
estimate filter includes a lag frequency range between about 35
µHz and about 80 µHz and a lead frequency range
between about 53 µHz and about 160 µHz.
51. The system of claim 48 wherein said copper winding
temperature estimate filter includes a lag frequency range
between about 35 µHz and about 80 µHz and a lead
frequency range between about 53 µHz and about 160 µHz.
52. The system of claim 29 further comprising initializing said
parameter estimate with an initialization signal said
initialization signal in communication with said temperature
estimation process.
53. The system of claim 1 wherein said parameter estimation
process comprises a combination of a feedback estimation
methodology and a feedforward estimation methodology.
54. The system of claim 53 wherein said combination is responsive
to at least one of said torque command signal, said current
value, said temperature value, and a velocity signal.
55. The system of claim 53 wherein said combination includes
summing a parameter estimate correction from a feedback
estimation methodology with a parameter estimate from a
feedforward estimation methodology.
56. A method for estimating a parameter of an electric machine,
comprising:
receiving a torque command signal indicative of a desired torque
for said electric machine;
receiving a current value;
receiving a temperature value; and
wherein said estimating is a resultant of a parameter estimation
process responsive to at least one of said torque command signal,
said current value, and said temperature value, a resultant of
said parameter estimation process representing said parameter of
said electric machine.
57. The method of claim 56 wherein said electric machine
comprises an electric motor.
58. The method of claim 56 wherein said parameter comprises at
least one of a resistance, an inductance, and a motor constant.
59. The method of claim 56 wherein said current value is
representative of a torque current for said electric machine.
60. The method of claim 56 wherein said parameter estimation
process comprises a feedback estimation methodology.
61. The method of claim 60 wherein said feedback estimation
methodology comprises a closed loop compensation for build and
life variations in said parameter of said electric machine.
62. The method of claim 60 further including obtaining a velocity
signal responsive to a velocity of said electric machine, wherein
said feedback estimation methodology is responsive to said torque
command signal, said current value, and said velocity signal.
63. The method of claim 60 wherein said feedback estimation
methodology includes comparing said torque command signal with an
estimated torque in a time coherent manner to generate a torque
error.
64. The method of claim 63 wherein said estimated torque is
responsive to said current value, a velocity signal, and an
earlier parameter estimate.
65. The method of claim 64 wherein said earlier parameter
estimate is an earlier motor constant estimate.
66. The method of claim 63 wherein said feedback estimation
methodology includes an error accumulator, which generates said
parameter estimate in response to said torque error.
67. The method of claim 66 wherein said error accumulator
comprises a conditional integrator.
68. The method of claim 66 wherein said error accumulator is
initialized to a zero condition.
69. The method of claim 66 wherein said error accumulator is
initialized to a nominal value of said parameter.
70. The method of claim 66 wherein said error accumulator is
initialized to a saved value of said error accumulator, said
saved value updated with a current output of said error
accumulator only if said current output of said error accumulator
exhibits a change in excess of a selected threshold.
71. The method of claim 60 further comprising receiving an
estimate good flag.
72. The method of claim 71 wherein said estimate good flag is
indicative of a validity of said estimated torque.
73. The method of claim 71 wherein said feedback estimation
methodology is responsive to said estimate good flag.
74. The method of claim 73 wherein said feedback estimation
methodology is disabled when said estimate good flag indicates an
invalid estimated torque.
75. The method of claim 60 further comprising receiving a rate
flag.
76. The method of claim 75 wherein said rate flag is indicative
of current dynamics beyond a selected threshold.
77. The method of claim 76 wherein said feedback estimation
methodology is disabled when said rate flag indicates current
dynamics beyond said selected threshold.
78. The method of claim 77 wherein said selected threshold is two
amperes over a 2 millisecond duration.
79. The method of claim 56 wherein said temperature value is
responsive to a temperature signal from a temperature sensor.
80. The method of claim 79 wherein said temperature sensor
comprises a thermistor.
81. The method of claim 79 further comprising linearizing said
temperature signal.
82. The method of claim 81 wherein said linearizing comprises
processing via a linearization function mechanism interposed
between said temperature sensor and said temperature estimation
process, with said output of said temperature sensor being
connected to an input of said linearization function mechanism
and an output of said linearization function mechanism being
connected to said input of said temperature estimation process.
83. The method of claim 56 wherein said parameter estimation
process includes a feedforward estimation methodology responsive
to said temperature value.
84. The method of claim 83 wherein said feedforward estimation
methodology comprises compensation for temperature variations of
said parameter, said compensation employing a temperature
coefficient of said parameter.
85. The method of claim 84 wherein said temperature value is
responsive to a temperature estimation process.
86. The method of claim 85 wherein said temperature estimation
process further comprises at least one of:
a silicon temperature estimate filter, responsive to said output
from said temperature sensor, said silicon temperature estimate
filter having an output corresponding to an estimated temperature
of a switching device for said electric machine;
a magnet temperature estimate filter, responsive to said output
from said temperature sensor, said magnet temperature estimate
filter having an output corresponding to an estimated temperature
of a magnet associated with said electric machine; and
a copper winding temperature estimate filter responsive to said
output from said temperature sensor, said copper winding
temperature estimate filter having an output corresponding to an
estimated temperature of copper windings associated with said
electric machine.
87. The method of claim 86 wherein said silicon temperature
estimate filter, said magnet temperature estimate filter, and
said copper winding temperature estimate filter are first order,
lead-lag filters.
88. The method of claim 87 wherein said silicon temperature
estimate filter includes a lag frequency range between about 53
µHz and about 320 µHz and a lead frequency range
between about 53 µHz and about 160 µHz.
89. The method of claim 87 wherein said magnet temperature
estimate filter includes a lag frequency range between about 35
µHz and about 80 µHz and a lead frequency range
between about 53 µHz and about 160 µHz.
90. The method of claim 87 wherein said copper winding
temperature estimate filter includes a lag frequency range
between about 35 µHz and about 80 µHz and a lead
frequency range between about 53 µHz and about 160 µHz.
91. The method of claim 85 further comprising initializing said
temperature estimation process with an initialization signal.
92. The method of claim 91 wherein said initialization signal
initializes said temperature estimation process to a substrate
temperature corresponding to a linearized output of said
temperature sensor.
93. The method of claim 91 wherein said initialization signal
initializes said temperature estimation process by continuing to
operate following power down until said temperature estimation
process approaches an approximately steady state value.
94. The method of claim 91 wherein said initialization signal
initializes said temperature estimation process to an initial
value based on temperature estimates responsive to another
temperature sensor.
95. The method of claim 94 wherein said another temperature
sensor is an engine coolant sensor.
96. The method of claim 94 wherein said initialization signal is
responsive to a computed duration of temperature change as a
function of said another temperature sensor.
97. The method of claim 96 wherein said temperature estimation
process computes a temperature Tx in accordance with
the equation: ##EQU25##
where:
Tx indicates a generalized a temperature for a
material,
Tx0 indicates a generalized initial temperature for Tx,
Te is the engine coolant temperature,
Te0 is the hot engine coolant temperature when the
ignition is first turned off,
Ta is the ambient temperature,
te is the cooling time constant for the engine,
tx is the cooling time constant for the material.
98. The method of claim 91 wherein said initialization signal
initializes said temperature estimation process to an ambient
temperature.
99. The method of claim 91 wherein said initialization signal
initializes said temperature estimation process to an ambient
temperature estimate.
100. The method of claim 99 wherein said ambient temperature
estimate comprises a filter having a cutoff frequency sized to
estimate a thermal time constant of said electric machine.
101. The method of claim 100 wherein said ambient temperature
estimate comprises a first order, lag filter.
102. The method of claim 101 wherein said first order, lag filter
includes a lag frequency range between about 35 µHz and
about 80 µHz.
103. The method of claim 91 wherein said temperature estimation
process comprises at least one of:
a silicon temperature estimate filter, responsive to said output
from said temperature sensor, said silicon temperature estimate
filter having an output corresponding to an estimated temperature
of a switching device for said electric machine;
a magnet temperature estimate filter, responsive to said output
from said temperature sensor, said magnet temperature estimate
filter having an output corresponding to an estimated temperature
of a magnet associated with said electric machine; and
a copper winding temperature estimate filter responsive to said
output from said temperature sensor, said copper winding
temperature estimate filter having an output corresponding to an
estimated temperature of copper windings associated with said
electric machine.
104. The method of claim 103 wherein said silicon temperature
estimate filter, said magnet temperature estimate filter, and
said copper winding temperature estimate filter are first order,
lead-lag filters.
105. The method of claim 104 wherein said silicon temperature
estimate filter includes a lag frequency range between about 53
µHz and about 320 µHz and a lead frequency range
between about 53 µHz and about 160 µHz.
106. The method of claim 104 wherein said magnet temperature
estimate filter includes a lag frequency range between about 35
µHz and about 80 µHz and a lead frequency range
between about 53 µHz and about 160 µHz.
107. The method of claim 104 wherein said copper winding
temperature estimate filter includes lag frequency range between
about 35 µHz and about 80 µHz and a lead frequency
range between about 53 µHz and about 160 µHz.
108. The method of claim 85 further comprising initializing said
parameter estimate with an initialization signal said
initialization signal in communication with said temperature
estimation process.
109. The method of claim 56 wherein said parameter estimation
process comprises a combination of a feedback estimation
methodology and a feedforward estimation methodology.
110. The method of claim 109 wherein said combination is
responsive to at least one of said torque command signal, said
current value, said temperature value, and a velocity signal.
111. The method of claim 109 wherein said combination includes
summing a parameter estimate correction from a feedback
estimation methodology with a parameter estimate from a
feedforward estimation methodology.
112. A storage medium encoded with computer program code; said
code including instructions for causing a controller to implement
a method for estimating a parameter of an electric machine
comprising:
receiving a torque command signal indicative of a desired torque
for said electric machine;
receiving a current value;
receiving a temperature value; and
wherein said estimating is a resultant of a parameter estimation
process responsive to at least one of said torque command signal,
said current value, and said temperature value, a resultant of
said parameter estimation process representing said parameter of
said electric machine.
113. The storage medium of claim 112 wherein said parameter
comprises at least one of a resistance, an inductance, and a
motor constant.
114. The storage medium of claim 112 wherein said current value
is representative of a torque current for said electric machine.
115. The storage medium of claim 112 wherein said parameter
estimation process comprises a feedback estimation methodology.
116. The storage medium of claim 115 wherein said feedback
estimation methodology comprises a closed loop compensation for
build and life variations in said parameter of said electric
machine.
117. The storage medium of claim 115 further including a velocity
signal responsive to a velocity of said electric machine, wherein
said feedback estimation methodology is responsive to said torque
command signal, said current value, and said velocity signal.
118. The storage medium of claim 115 wherein said feedback
estimation methodology includes comparing said torque command
signal with an estimated torque in a time coherent manner to
generate a torque error.
119. The storage medium of claim 118 wherein said estimated
torque is responsive to said current value, a velocity signal,
and an earlier parameter estimate.
120. The storage medium of claim 119 wherein said earlier
parameter estimate is an earlier motor constant estimate.
121. The storage medium of claim 118 wherein said feedback
estimation methodology includes an error accumulator, which
generates said parameter estimate in response to said torque
error.
122. The storage medium of claim 121 wherein said error
accumulator comprises a conditional integrator.
123. The storage medium of claim 121 wherein said error
accumulator is initialized to a zero condition.
124. The storage medium of claim 121 wherein said error
accumulator is initialized to a nominal value of said parameter.
125. The storage medium of claim 121 wherein said error
accumulator is initialized to a saved value of said error
accumulator, said saved value updated with a current output of
said error accumulator only if said current output of said error
accumulator exhibits a change in excess of a selected threshold.
126. The storage medium of claim 115 further comprising
instructions for causing said controller to implement a method
further comprising receiving an estimate good flag.
127. The storage medium of claim 126 wherein said estimate good
flag is indicative of a validity of said estimated torque.
128. The storage medium of claim 115 further comprising
instructions for causing said controller to implement a method
further comprising receiving a rate flag.
129. The storage medium of claim 128 wherein said rate flag is
indicative of current dynamics beyond a selected threshold.
130. The storage medium of claim 129 wherein said feedback
estimation methodology is disabled when said rate flag indicates
current dynamics beyond said selected threshold.
131. The storage medium of claim 112 wherein said temperature
value is responsive to a temperature signal from a temperature
sensor.
132. The storage medium of claim 131 further comprising
instructions for causing said controller to implement a method
further comprising linearizing said temperature signal.
133. The storage medium of claim 112 wherein said parameter
estimation process includes a feedforward estimation methodology
responsive to said temperature value and wherein said temperature
value is responsive to a temperature estimation process.
134. The storage medium of claim 133 wherein said feedforward
estimation methodology comprises compensation for temperature
variations of said parameter, said compensation employing a
temperature coefficient of said parameter.
135. The storage medium of claim 134 wherein said temperature
estimation process further comprises at least one of:
a silicon temperature estimate filter, responsive to said output
from said temperature sensor, said silicon temperature estimate
filter having an output corresponding to an estimated temperature
of a switching device for said electric machine;
a magnet temperature estimate filter, responsive to said output
from said temperature sensor, said magnet temperature estimate
filter having an output corresponding to an estimated temperature
of a magnet associated with said electric machine; and
a copper winding temperature estimate filter responsive to said
output from said temperature sensor, said copper winding
temperature estimate filter having an output corresponding to an
estimated temperature of copper windings associated with said
electric machine.
136. The storage medium of claim 133 further comprising
instructions for causing said controller to implement a method
further comprising initializing said temperature estimation
process with an initialization signal.
137. The storage medium of claim 136 wherein said initialization
signal initializes said temperature estimation process to a
substrate temperature corresponding to a linearized output of
said temperature sensor.
138. The storage medium of claim 136 wherein said initialization
signal initializes said temperature estimation process by
continuing to operate following power down until said temperature
estimation process approaches an approximately steady state value.
139. The storage medium of claim 136 wherein said initialization
signal is responsive to a computed duration of temperature change
as a function of another temperature sensor.
140. The storage medium of claim 136 wherein said initialization
signal initializes said temperature estimation process to an
ambient temperature.
141. The storage medium of claim 136 wherein said initialization
signal initializes said temperature estimation process to an
ambient temperature estimate.
142. The storage medium of claim 136 wherein said temperature
estimation process comprises at least one of:
a silicon temperature estimate filter, responsive to said output
from said temperature sensor, said silicon temperature estimate
filter having an output corresponding to an estimated temperature
of a switching device for said electric machine;
a magnet temperature estimate filter, responsive to said output
from said temperature sensor, said magnet temperature estimate
filter having an output corresponding to an estimated temperature
of a magnet associated with said electric machine; and
a copper winding temperature estimate filter responsive to said
output from said temperature sensor, said copper winding
temperature estimate filter having an output corresponding to an
estimated temperature of copper windings associated with said
electric machine.
143. The storage medium of claim 134 further comprising
instructions for causing said controller to implement a method
further comprising initializing said parameter estimate with an
initialization signal said initialization signal in communication
with said temperature estimation process.
144. The storage medium of claim 112 wherein said parameter
estimation process comprises a combination of a feedback
estimation methodology and a feedforward estimation methodology.
145. The storage medium of claim 144 wherein said combination is
responsive to at least one of said torque command signal, said
current value, said temperature value, and a velocity signal.
146. The storage medium of claim 144 wherein said combination
includes summing a parameter estimate correction from a feedback
estimation methodology with a parameter estimate from a
feedforward estimation methodology.
147. A computer data signal embodied in a carrier wave, the
computer data signal comprising:
code configured to cause a controller to implement a method for
estimating a parameter of an electric machine comprising:
receiving a torque command signal indicative of a desired torque
for said electric machine;
receiving a current value;
receiving a temperature value; and
wherein said estimating is a resultant of a parameter estimation
process responsive to at least one of said torque command signal,
said current value, and said temperature value, a resultant of
said parameter estimation process representing said parameter of
said electric machine.
148. The computer data signal of claim 147 wherein said parameter
comprises at least one of a resistance, an inductance, and a
motor constant.
149. The computer data signal of claim 147 wherein said current
value is representative of a torque current for said electric
machine.
150. The computer data signal of claim 147 wherein said parameter
estimation process comprises a feedback estimation methodology.
151. The computer data signal of claim 150 wherein said feedback
estimation methodology comprises a closed loop compensation for
build and life variations in said parameter of said electric
machine.
152. The computer data signal of claim 150 further including a
velocity signal responsive to a velocity of said electric
machine, wherein said feedback estimation methodology is
responsive to said torque command signal, said current value, and
said velocity signal.
153. The computer data signal of claim 150 wherein said feedback
estimation methodology includes comparing said torque command
signal with an estimated torque in a time coherent manner to
generate a torque error.
154. The computer data signal of claim 153 wherein said estimated
torque is responsive to said current value, a velocity signal,
and an earlier parameter estimate.
155. The computer data signal of claim 154 wherein said earlier
parameter estimate is an earlier motor constant estimate.
156. The computer data signal of claim 153 wherein said feedback
estimation methodology includes an error accumulator, which
generates said parameter estimate in response to said torque
error.
157. The computer data signal of claim 156 wherein said error
accumulator comprises a conditional integrator.
158. The computer data signal of claim 156 wherein said error
accumulator is initialized to a zero condition.
159. The computer data signal of claim 156 wherein said error
accumulator is initialized to a nominal value of said parameter.
160. The computer data signal of claim 156 wherein said error
accumulator is initialized to a saved value of said error
accumulator, said saved value updated with a current output of
said error accumulator only if said current output of said error
accumulator exhibits a change in excess of a selected threshold.
161. The computer data signal of claim 150 further comprising
instructions for causing said controller to implement a method
further comprising receiving an estimate good flag.
162. The computer data signal of claim 160 wherein said estimate
good flag is indicative of a validity of said estimated torque.
163. The computer data signal of claim 150 further comprising
instructions for causing said controller to implement a method
further comprising receiving a rate flag.
164. The computer data signal of claim 163 wherein said rate flag
is indicative of current dynamics beyond a selected threshold.
165. The computer data signal of claim 164 wherein said feedback
estimation methodology is disabled when said rate flag indicates
current dynamics beyond said selected threshold.
166. The computer data signal of claim 147 wherein said
temperature value is responsive to a temperature signal from a
temperature sensor.
167. The computer data signal of claim 166 further comprising
instructions for causing said controller to implement a method
further comprising linearizing said temperature signal.
168. The computer data signal of claim 147 wherein said parameter
estimation process includes a feedforward estimation methodology
responsive to said temperature value and wherein said temperature
value is responsive to a temperature estimation process.
169. The computer data signal of claim 168 wherein said
feedforward estimation methodology comprises compensation for
temperature variations of said parameter, said compensation
employing a temperature coefficient of said parameter.
170. The computer data signal of claim 169 wherein said
temperature estimation process further comprises at least one of:
a silicon temperature estimate filter, responsive to said output
from said temperature sensor, said silicon temperature estimate
filter having an output corresponding to an estimated temperature
of a switching device for said electric machine;
a magnet temperature estimate filter, responsive to said output
from said temperature sensor, said magnet temperature estimate
filter having an output corresponding to an estimated temperature
of a magnet associated with said electric machine; and
a copper winding temperature estimate filter responsive to said
output from said temperature sensor, said copper winding
temperature estimate filter having an output corresponding to an
estimated temperature of copper windings associated with said
electric machine.
171. The computer data signal of claim 168 further comprising
instructions for causing said controller to implement a method
further comprising initializing said temperature estimation
process with an initialization signal.
172. The computer data signal of claim 171 wherein said
initialization signal initializes said temperature estimation
process to a substrate temperature corresponding to a linearized
output of said temperature sensor.
173. The computer data signal of claim 171 wherein said
initialization signal initializes said temperature estimation
process by continuing to operate following power down until said
temperature estimation process approaches an approximately steady
state value.
174. The computer data signal of claim 171 wherein said
initialization signal is responsive to a computed duration of
temperature change as a function of another temperature sensor.
175. The computer data signal of claim 171 wherein said
initialization signal initializes said temperature estimation
process to an ambient temperature.
176. The computer data signal of claim 171 wherein said
initialization signal initializes said temperature estimation
process to an ambient temperature estimate.
177. The computer data signal of claim 171 wherein said
temperature estimation process comprises at least one of:
a silicon temperature estimate filter, responsive to said output
from said temperature sensor, said silicon temperature estimate
filter having an output corresponding to an estimated temperature
of a switching device for said electric machine;
a magnet temperature estimate filter, responsive to said output
from said temperature sensor, said magnet temperature estimate
filter having an output corresponding to an estimated temperature
of a magnet associated with said electric machine; and
a copper winding temperature estimate filter responsive to said
output from said temperature sensor, said copper winding
temperature estimate filter having an output corresponding to an
estimated temperature of copper windings associated with said
electric machine.
178. The computer data signal of claim 169 further comprising
instructions for causing said controller to implement a method
further comprising initializing said parameter estimate with an
initialization signal said initialization signal in communication
with said temperature estimation process.
179. The computer data signal of claim 147 wherein said parameter
estimation process comprises a combination of a feedback
estimation methodology and a feedforward estimation methodology.
180. The computer data signal of claim 179 wherein said
combination is responsive to at least one of said torque command
signal, said current value, a velocity signal, and said
temperature value.
181. The computer data signal of claim 179 wherein said
combination includes summing a parameter estimate correction from
a feedback estimation methodology with a parameter estimate from
a feedforward estimation methodology.
Description
BACKGROUND
Electric machines, for example, permanent magnet (PM) motors as
may be employed in electric power steering systems (EPS) are
affected by parameter variations, which impact the overall system
performance as a function of temperature, build and changes over
life. The motor circuit resistance, R; inductance, L; and the
motor torque/voltage constant, Ke; are the three
primary parameters, which affect motor control and performance.
Over normal operating temperatures, the motor circuit resistance,
R changes by up to 60 to 70%; the motor inductance, L varies a
modest amount; and the motor constant, Ke varies by as
much as +/-7%. In addition, both the motor circuit resistance, R
and motor constant, Ke exhibit variations of about +/-5%
for build and a degradation of approximately 10% over the life of
the system. The motor resistance, R increases with life and the
motor constant, Ke decreases over life. On the other
hand, build variations of the motor parameters tend to be
randomly distributed. Therefore, without some form of
temperature, build, or duration/life dependent compensation, the
variations in motor output torque and system damping will result
in decreased performance of the power steering system.
To account for variations in the resistance R only, a resistance
estimation methodology was conceived of and described in pending
commonly assigned U.S. patent application Ser. No. 60/154,692, by
Sayeed Mir et al. While able to correct for variations in
resistance R due to temperature, build, and life, and well suited
for its intended purposes, the correction scheme disclosed in
that invention was not always capable of addressing varied motor
operating conditions. For example, such conditions may include,
when the motor is at stall, in quadrant II of the torque vs.
velocity plane, at low currents, or at high motor velocities. In
a vehicle employing an electronic steering system significant
time may be spent at stall and low motor currents (highway
driving for example), and large changes in temperature may occur
during these periods. Most correction schemes are configured to
make corrections very slowly, thus, it may require significant
time to eliminate such an error. Of further significance,
existing design schemes may not account for variation in other
motor parameters, such as motor constant, which may vary
significantly over temperature, build, and life.
Steering systems currently exist which employ the use of current
controlled motors. In order to maintain the desired current
levels as the temperature in the system varies, these current
controlled motors are typically equipped with current sensors as
part of a hardware current loop. However, there are also other
motor designs in existence that, for cost purposes, require the
use of a voltage mode controlled system. In such a situation, the
same methods described above to compensate for temperature in the
current controlled motor cannot be applied to the voltage-controlled
motor in a cost effective manner. Without the benefit of numerous
expensive sensors, it becomes necessary to obtain accurate
estimations of motor resistance R, motor constant Ke, and
temperature readings for voltage control, which accurately
controls motor torque.
SUMMARY OF THE INVENTION
A system for estimating a parameter of an electric machine,
comprising: a controller operatively connected to a switching
device, which is operatively connected between the electric
machine and a power source, the switching device being responsive
to the controller; and at least one of: a current sensor
operatively connected to and transmitting a current value
indicative of a current in the electric machine, and a
temperature sensor operatively connected to and transmitting a
temperature signal corresponding to a measured temperature to the
controller. Where the controller executes a parameter estimation
process, which is responsive to at least one of, a current value
indicative of a current in the electric machine, a torque command
indicative of a desired torque for the electric machine, the
temperature value, and a resultant of the parameter estimation
process representing an estimated parameter of the electric
machine.
A method for estimating a parameter of an electric machine,
comprising: receiving at least one of: a torque command signal
indicative of a desired torque for the electric machine; a
current value; and a temperature value. The parameter estimating
is a resultant of a parameter estimation process responsive to
one or more of the torque command signal, the current value, and
the temperature value.
A storage medium encoded with a machine-readable computer program
code for estimating a parameter of an electric machine. The
storage medium including instructions for causing controller to
implement the method for estimating a parameter of an electric
machine as described above.
A computer data signal embodied in a carrier wave for estimating
a parameter of an electric machine. The computer data signal
comprising code configured to cause a controller to implement the
method for estimating a parameter of an electric machine as
described above.
BRIEF DESCRIPTION OF THE DRAWINGS
Referring now to the drawings wherein like elements are numbered
alike in the several figures:
FIG. 1 is a block diagram depicting a motor control system;
FIG. 2 is a block diagram of an exemplary temperature estimation
system;
FIG. 3 is a block diagram depicting a model of the thermal
characteristics for a motor, a motor controller, and a
temperature estimation filter;
FIG. 4 is an illustrative graphical depiction of the unit step
response of the block diagram models in FIG. 3;
FIG. 5 is a block diagram of an exemplary embodiment of a
temperature estimation filter;
FIG. 6 is a table of the characteristics of the filters shown in
FIG. 5;
FIG. 7 is a schematic of a filter initialization implementation;
FIG. 8 is a block diagram depicting an alternative temperature
estimation implementation;
FIG. 9 is a block diagram depicting an alternative embodiment for
temperature estimation with ambient temperature estimation;
FIG. 10 is a block diagram representing the use of the
temperature estimates in parameter calculations;
FIG. 11 is a block diagram depicting the combined feedforward/feedback
estimation process; and
FIG. 12 depicts a Ke estimator error signal gain as a
function of motor velocity.
DETAILED DESCRIPTION OF AN EXEMPLARY EMBODIMENT
In many practical applications of motor control, such as
electronic power steering systems, it is often the case that cost
and design considerations prohibit the use of temperature sensors
placed directly on the motor windings or the magnets. However,
such data is used to maintain motor torque accuracy over
temperature, build, and life variations of the key parameters in
a voltage mode controlled system. To insure adequate torque
control and operation of a motor in an electronic power steering
system it has become desirable to compensate the control of the
motor for variations in motor parameters such as, but not limited
to, motor resistance R, and motor constant Ke as a
function of temperature, build, and life. In a motor control
system, a motor employing voltage mode control is controlled via
an applied motor voltage, not the motor current. However the
torque produced by the motor is proportional to the motor current.
Therefore, variations of the motor parameters such as those
described directly impart inaccuracies in the control system. The
motor parameter variations generate direct torque variations and
accuracy errors as a function of build, life, and temperature
variations. Therefore, a system that compensates for motor
parameter variations as a function of temperature, build, and
life may exhibit improved response and more accurate control. As
such, a motor parameter estimation/compensation scheme that
accounts for such variations is disclosed. Generally, build and
life deviations may be compensated for by means of long-term
compensation of modeled motor parameters. This is usually the
case because such deviations vary slowly over the operational
life of a motor. However, the temperature variations induced
become much more evident as a result of the repeated operational
cycling of the electric motor. Therefore, emphasis on temperature
estimation addresses the evident temperature dependent
characteristics of the motor parameters being estimated. Thus, a
detailed analysis supporting the estimation of various
temperatures within the system is provided to facilitate the
motor parameter estimation.
Disclosed herein in the several embodiments are methods and
systems for estimating the temperature and parameters of an
electric machine. More particularly, the disclosed embodiments
identify models to simulate the variation of the motor parameters
as a function of temperature, build and life. Particular to this
variation is identification of the coefficients that characterize
the change in the motor parameters with temperature, and
predictions for build, and life variations. For example, for the
temperature variation, the models simulate the effects of three
coefficients: first, the thermal coefficient of resistivity of
the substrate silicon in the switching devices employed to
control the motor; second, the thermal coefficient of resistivity
of the copper utilized in the motor windings; finally, the
thermal coefficient of magnetic field strength of the magnets
employed in the motor. Likewise, selected estimates define and
characterize the variations in the motor control system
components as a function of build and life.
The disclosed methodologies include, but are not limited to,
feedback methodologies and predictive or feedforward
methodologies. In addition, combined methodologies utilizing both
feedback and feedforward parameter estimation are disclosed. An
exemplary embodiment of the invention, by way of illustration, is
described herein and may be applied to an electric motor in a
vehicle steering system. While a preferred embodiment is shown
and described, it will be appreciated by those skilled in the art
that the invention is not limited to the embodiment described
herein, but also to any control system employing an electric
machine where parameter and temperature estimates are desired.
Referring now to the drawings in detail, FIG. 1 depicts a PM
electric machine system where numeral 10 generally
indicates a system for controlling the torque of a PM electric
machine (e.g. a motor), hereinafter referred to as a motor 12.
The torque control system hereafter system 10 includes,
but is not limited to, a motor rotor position encoder 14,
a velocity measuring circuit 16, a current measurement
device (not shown), a controller 18, power circuit or
inverter 20 and power source 22. Controller 18
is configured to develop the necessary voltage(s) out of inverter
20 such that, when applied to the motor 12, the
desired torque is generated. Because these voltages are related
to the position and velocity of the motor 12, the position
and velocity of the rotor are determined. The rotor position
encoder 14 is connected to the motor 12 to detect
the angular position of the rotor denoted ?. The encoder 14
may sense the rotary position based on optical detection,
magnetic field variations, or other methodologies. Typical
position sensors include potentiometers, resolvers, synchros,
encoders, and the like, as well as combinations comprising at
least one of the forgoing. The position encoder 14 outputs
a position signal 24 indicating the angular position of
the rotor. The current measurement device, detects the current
provided to the motor 12 and transmits a signal to the
controller 18 indicative of the current value. In an
exemplary embodiment, the current is measured at the inverter 20,
however, it is evident that the current could be measured at any
location convenient to a particular implementation. Moreover, it
should also be evident that other equivalent means of
ascertaining the value of the current are possible.
In an exemplary embodiment and referring also to FIG. 2, the
temperature of the motor 12 is measured utilizing one or
more temperature measuring device(s) or sensor(s) 13
located at the substrate of a switching device which controls the
application of excitation voltage to the motor 12. It
should be understood that while an exemplary embodiment discloses
placing a temperature sensor 13 at the switching device
substrate, various other locations are possible. Alternative
locations may include placement in or in proximity to: the motor 12,
the controller 18, and the like. The temperature sensor 13
transmits a temperature signal 23 to the controller 18
to facilitate the processing prescribed herein. Typical
temperature sensors include, but are not limited to,
thermocouples, thermistors, resistive thermal devices (RTD),
semiconductors, and the like, as well as combinations comprising
at least one of the foregoing, which when appropriately placed
provide a calibratable signal proportional to the particular
temperature.
The position signal 24, velocity signal 26,
temperature signal 23, current value, and a torque command
signal 28 are applied to the controller 18. The
torque command signal 28 is representative of the desired
motor torque value. The controller 18 processes all input
signals to generate values corresponding to each of the signals
resulting in a rotor position value, a motor velocity value, a
temperature value and a torque command value being available for
the processing in the algorithms as prescribed herein. It should
be noted that while a velocity signal 26 is disclosed as
derived from other measured parameters, e.g., motor position, in
an exemplary embodiment, such a signal may also be a measured
signal. For example, motor velocity may be approximated and
derived as the change of the position signal 24 over a
selected duration of time or measured directly with a tachometer
or similar device.
Measurement signals, such as the abovementioned are also commonly
linearized, compensated, and filtered as desired or necessary to
enhance the characteristics or eliminate undesirable
characteristics of the acquired signal. For example, the signals
may be linearized to improve processing velocity, or to address a
large dynamic range of the signal. In addition, frequency or time
based compensation and filtering may be employed to eliminate
noise or avoid undesirable spectral characteristics.
The controller 18 determines the voltage amplitude Vref31
required to develop the desired torque by using the position
signal 24, velocity signal 26, and torque command
signal 28, and other motor parameter values. The
controller 18 transforms the voltage amplitude signal Vref
31 into three phases by determining phase voltage command
signals Va, Vb, and Vc from the
voltage amplitude signal 31 and the position signal 24.
Phase voltage command signals Va, Vb, and Vc
are used to generate the motor duty cycle signals Da,
Db, and Dc32 using an appropriate
pulse width modulation (PWM) technique. Motor duty cycle signals 32
of the controller 18 are applied to a power circuit or
inverter 20, which is coupled with a power source 22
to apply phase voltages 34 to the stator windings of the
motor in response to the motor voltage command signals. The
inverter 20 may include one or more switching devices for
directing and controlling the application of voltage to the motor.
The switching devices may include, but need not be limited to,
switches, transmission gates, transistors, silicon controlled
rectifiers, triacs and the like, as well as combinations of the
foregoing. In this instance, for example, silicon power
transistors, often MOSFETs, are employed.
In order to perform the prescribed functions and desired
processing, as well as the computations therefore (e.g., the
execution of voltage mode control algorithm(s), the estimation
prescribed herein, and the like), controller 18 may
include, but not be limited to, a processor(s), computer(s),
memory, storage, register(s), timing, interrupt(s), communication
interfaces, and input/output signal interfaces, as well as
combinations comprising at least one of the foregoing. For
example, controller 18 may include signal input signal
filtering to enable accurate sampling and conversion or
acquisitions of such signals from communications interfaces.
Additional features of controller 18 and certain processes
therein are thoroughly discussed at a later point herein.
Temperature Estimation
Identified herein as exemplary embodiments are methodologies for
estimating motor parameters from the components of the
temperature as measured from the power transistor substrate.
Understanding the origin of these temperature components helps to
identify and quantify the relationship between the power
transistors and motor. Therefore, it is important to appreciate
and understand the principles of conservation of energy (first
law of thermodynamics) particularly as applied to the disclosed
embodiments. Equation (1) states the first law of thermodynamics:
where Ein is the energy added or transferred to a
system; Eg is the energy converted to thermal energy
manifested as heat; Eout is the energy transferred out
of a system or released to the ambient; and Est is the
energy stored in the system.
A system 10 as depicted in FIG. 1 may include, but is not
necessarily limited to, three primary components to affect
control, in this instance of a vehicle: a motor, a controller and
an assist mechanism. Within the system mechanical, electrical,
and electromagnetic energy are converted to thermal energy (Eg).
Electrical energy is converted to thermal energy in the
controller from various components. For example, a voltage
regulator, shunt resistor, bus capacitors, power relay, power
transistors, and the like, as well as other various electronic
components. The motor 12 also converts electrical energy
into thermal energy in the copper windings. The core losses in
the motor 12 are minimal and therefore electromagnetic
heating is neglected with respect to thermodynamic considerations.
The assist mechanism provides mechanical force multiplication and
converts mechanical energy into thermal energy in the form of
heat generated from friction. Some of these energies are stored
within components (Est), while others are released to
the ambient environment within the system by convection (Eout).
In addition, the energy transferred to the ambient may also enter
other components (Ein). Finally, energy may be
supplied from outside the system 10. The vehicle heating
system, for example, in automobile applications could potentially
cause an 80� C. temperature rise under certain conditions.
To facilitate effective temperature estimation the relationship
between the measured temperature and the transistor silicon,
motor copper windings, and motor magnet temperatures is
determined. Temperature estimation may be complicated, in that
the measured temperature to be utilized may include multiple
coupled components. Therefore, separating these components from a
single measured temperature is desirable to enhance the accuracy
of a temperature estimate. Identified herein in the exemplary
embodiments are components of the power transistor substrate
temperature and a methodology for performing the temperature
estimation.
For the purpose of this analysis, consideration will be given to
four components of the measured temperature: convection from the
motor; conduction and convection from the power transistors;
convection from the controller 18 electronics; and the
convection from the vehicle. To illustrate the temperature
estimation, equations are derived for the motor copper winding
and the transistor silicon temperatures. Thereafter, the
additional components are identified. Finally, a temperature
estimation algorithm will be identified that includes all the
components.
A description of the time differential of energy (i.e., power)
relates the temperature the copper windings of the motor 12
to the silicon temperature of the power transistor. The power
generated from electrical energy is the product of the motor
current I squared and electrical resistance R. The electrical
resistance R is a function of geometry l/A, conductivity s and
temperature T. ##EQU1##
When the power transistors are activated current conducts through
the transistors' silicon and the motor copper windings. The power
stored is a function of volume V, density ?, specific heat c, and
temperature T. ##EQU2##
Convection is a function of the coefficient of convection h,
surface area As, and the difference in surface
temperature Ts and a boundary layer temperature
defined here as ambient temperature Ta. In the
instance of the exemplary embodiment disclosed herein, for
simplicity, the power transistors and motor windings share the
same ambient temperature within a few degrees of each other.
Therefore, when equations (2), (4) and (5) are substituted into
equation (1) to sum the associated energy in the system, the
relationship in thermal power output between the silicon and
copper becomes a function of geometry (l, A, As, V),
mass, material properties (s, ?, c, h) and temperature. ##EQU3##
Equation (6) may be solved for the surface temperature Ts,
thereby yielding in equation (7) two separate temperatures: an
ambient temperature Ta, and a surface temperature Ts
representing the substrate temperature value 25 (or motor
temperature). The ambient temperature Ta includes the
convection from the vehicle and controller electronics. The
surface temperature Ts includes convection from the
power transistors of the inverter 20 or motor 12.
The measured substrate temperature value 25 (as linearized) is
separated from the power transistors by a conduction path. This
conduction path is considered when assigning values to h, A, ?, V
and c for the substrate. Moreover, the I2R loss in the
silicon is transferred across a thermal conduction path
characterized by k�A/L where k is the coefficient of thermal
conductivity of the silicon substrate. Consideration of this k�A/L
conduction path is not represented in equation (7) for the
representation of the substrate temperature value 25 (or motor
temperature). ##EQU4##
It is noteworthy to recognize that because the current is shared
between the silicon and copper, equation (7) indicates that the
difference in a change in temperature above ambient between the
copper and the silicon is characterized by material properties (h,
s) and geometry of both the copper and the silicon. Recall the
limit of exponentials as time goes to infinity. ##EQU5##
The steady-state temperature rise above ambient for the substrate
and motor now becomes more apparent. ##EQU6##
To find the difference in the total change in temperature above
ambient between the copper and the silicon find the ratio of the
steady-state temperature rise. Notice how the current term
cancels out. ##EQU7##
Equations (7) and (8) illustrate a principle that may be employed
to implement the temperature estimation. Under close examination
it may be demonstrated that a filter (in this instance, first
order) and gain may be implemented to have a response to a
measured temperature, which would duplicate these results when
the ambient temperature Ta is treated as a separate
component. The time constant in equation (7) is ##EQU8##
When equation (7) is applied to the measured silicon, this time
constant is used to calibrate the lead portion of all three
filters since it is the silicon that is actually being measured.
In other words, the dynamics of the measured substrate
temperature is cancelled out. When equation (7) is applied to the
motor copper windings, magnet and power transistors these time
constants are used to calibrate the lag portion of all three
filters. In other words, the dynamics of the motor copper
windings, magnet and power transistors are estimated. The
frequency of the filters is determined from the time constants in
the following equation, ##EQU9##
The gains are determined by the ratio of the steady-state delta-temperatures
described in equation (8).
An exemplary embodiment includes a method and system for
temperature estimation of the power transistor silicon, motor
copper windings and rotor magnets of a motor 12 in
accordance with the abovementioned disclosure and analysis. This
is achieved by measuring at least one temperature, in this
instance, on the power transistor substrate. This measured
temperature is then processed to estimate all three temperatures
utilizing the abovementioned filter estimation.
Feedforward Parameter Estimation and Temperature Estimation
An exemplary embodiment includes a motor control method and
system employing a process for temperature estimation of the
power transistor silicon, motor copper windings and rotor magnets
in accordance with the abovementioned disclosure and analysis to
facilitate motor parameter estimation. This is achieved by
measuring at least one temperature, in this instance, on the
power transistor substrate. This measured temperature is then
processed to estimate all three temperatures utilizing filter
estimation, the abovementioned analysis, which is provided above.
An exemplary embodiment includes a feedforward parameter
estimation method and system by which actual operating motor
temperatures and parameters may be estimated. FIG. 2 depicts a
block diagram for practicing an exemplary embodiment. The
requisite processing for performing the method disclosed may, but
need not be performed in controller 18. Such processing
may also be distributed to or across a variety devices provided
in the system 10 as desired and necessary for practicing
the invention. Referring also to FIG. 1, a temperature sensor 13,
is used to directly measure the temperature of motor controller 18
for an electric motor 12. The temperature sensor 13
is preferably affixed to a power transistor substrate (not shown),
which is a component of the motor controller 18 or
inverter 20. It should be noted that the temperature
sensor 13 as described may also be placed in other
locations as practical considerations permit. Moreover, placement
may also be internal to the motor 12, controller 18,
or inverter 20 or external. In either instance appropriate
consideration of the thermodynamic considerations is preferred to
ensure generation of an accurate thermal model. In an exemplary
embodiment, motor parameters are estimated and compensated as a
function of temperature. To further enhance the compensation and
estimation, and yet address the cost ramifications of additional
sensors, the application of multiple sensors is reduced by
further estimation of temperatures in the motor controller 18
and electric motor 12. Therefore, multiple embodiments are
disclosed herein disclosing various means for temperature
determination and ultimately motor parameter estimation.
Referring once again to FIG. 2, to determine a temperature
estimate, the output of a temperature sensor 13,
temperature signal 23 is transmitted through a
linearization function mechanism 15 to compensate for non-linearities
in the measurement. Linearization function mechanisms are well
known in the art and may comprise either hardware or software
embodiments, or a combination of both. Thereafter the linearized
temperature signal denoted the substrate temperature value 25 is
directed to a temperature estimation process 100, the
output of which represents the temperature estimate 70.
One example of a temperature estimation process 100 as
depicted in FIG. 2, may comprise a simple low pass filter having
a cut off frequency designed to estimate the thermal time
constant of the motor. However, it has been found that even with
careful adjustment of the time constant of such a temperature
estimation process 100, the transient response may still
show error between the actual temperature of the motor and the
temperature estimate 70, especially under dynamic
conditions. Therefore, in order to improve the transient accuracy
of the filter estimate, a filter structure such as the one shown
in FIG. 3 also employing lag, lead-lag, and/or lag-lead filters
may be used. FIG. 4 illustrates a unit step response of an
exemplary lead-lag filter estimate as compared with the both the
actual motor and motor controller temperatures. An error in the
filter parameters has been introduced to illustrate how the
estimated response closely resembles the desired response even
with variation of the filter parameters.
In an exemplary embodiment as depicted in FIG. 5, multiple
temperature estimation filters are employed to facilitate the
temperature estimation and thereby, the motor parameter
estimation. Depicted in the figure, are actually three separate
estimation filters, which serve to estimate three operating
temperatures in an exemplary embodiment: the temperature of the
motor controller silicon, the temperature of the motor magnet and
the temperature of the copper winding of the motor. Hereinafter,
the three temperature estimation filters shall be referred to as
the silicon temperature estimate filter 40, the magnet
temperature estimation filter 50, and the copper winding
temperature estimate filter 60. It is important to
appreciate that while the disclosed exemplary embodiment
identifies three filters and three estimated temperatures, this
should not be considered limiting. It will be apparent that the
temperature estimation may be applied to as many temperature
estimates or parameter estimates as desired and practical for
estimation or to enhance the accuracy or response characteristics
of the estimation.
FIG. 5 depicts the block diagram, which illustrates the
processing of the substrate temperature value 25 (FIG. 2 as well).
As can be seen, the substrate temperature value 25 is transmitted
to the silicon temperature estimate filter 40, the magnet
temperature estimation filter 50, and the copper winding
temperature estimate filter 60. In this manner, multiple
temperature estimate(s) 70, comprising; 70a for
silicon, 70b for magnet, and 70c for
copper temperature estimates respectively, are generated using a
single temperature signal 23 from the temperature sensor 13.
Referring to FIG. 5, in an embodiment, the silicon, magnet, and
copper winding temperature estimate filters 40, 50,
and 60 are implemented as first order filters. Once again,
first order lead-lag and lag-lead filters are selected because
equation 7 indicates such a filter implementation will provide an
accurate estimate with the expected response characteristics. The
range of the lead and lag filters and gain amplifiers is intended
to cover multiple levels of controller and motor thermal
coupling, placement within vehicle, convection schemes, power
distribution and heat sink capability. Depending on the above
mentioned thermal characteristics between the motor and
controller the gain amplifier could be less than unity, unity or
greater than unity. As shown in FIG. 6, in an exemplary
embodiment, the lag frequency range of the silicon temperature
estimate filter 40 is between about 53 µHz (microhertz)
and about 320 µHz and the lead frequency range is between
about 53 µHz and about 160 µHz. The lag frequency
range of the magnet temperature estimate filter 50 is
between about 35 µHz and about 80 µHz and the lead
frequency range is between about 53 µHz and about 160
µHz. The lag frequency range of the copper winding
temperature estimate filter 60 is between about 35 µHz
(microhertz) and about 80 µHz and the lead frequency range
is between about 53 µHz and about 160 µHz. The
temperature estimate filters (e.g., 40, 50, and 60)
respectively include an option to disable the zero or the
combination of the zero and the pole yielding a low pass filter
or a unity gain respectively. It will be appreciated that the
temperature estimate filters 40, 50, and 60
respectively may be implemented employing a variety of methods
including but not limited to passive, active, discrete, digital,
and the like, as well as combinations thereof. In an exemplary
embodiment, for example, each of the temperature estimation
filters 40, 50, and 60 is digitally
implemented and operates at the rate of about 128 milliseconds.
Moreover, it should also be noted that the gain amplifiers
depicted in the figures are included for clarity and completeness.
It is well known that such gain amplifiers depicted with each of
the temperature estimate filters 40, 50, and 60
may, like the filters be implemented employing numerous
variations, configurations, and topologies for flexibility.
It is noteworthy to recognize and appreciate that because the
thermal time constant of a motor winding is relatively long (over
20 minutes), it takes a long time for the temperatures of the
motor 12 and the substrate to equalize after a system
shutdown if the motor and substrate temperatures were
significantly different upon shutdown. When the system is
subsequently "powered on" again such a difference may
cause an introduction of an error in the temperature estimates.
To address this anomaly, an initialization scheme is employed at
power application, which reduces the impact of the abovementioned
temperature differences. In an embodiment, an initialization
signal 80 is provided for initialization of the silicon,
magnet, and copper temperature estimate filters 40, 50,
and 60 respectively to the substrate temperature value 25
following linearization of the temperature signal 23 as
measured by temperature sensor 13. It is also noteworthy
to appreciate that such an initialization may introduce an offset
error into the motor temperature estimate, which could require a
relatively long time to be significantly reduced or eliminated.
As a result, the system 10 may experience decreased torque
accuracy until the error is sufficiently reduced. Such an offset
error may be acceptable in some applications and yet be
objectionable in others and therefore more sophisticated
initialization schemes may prove beneficial.
Accordingly, an alternative embodiment may include an additional
initialization processes whereby the temperature estimation
process 100 (e.g., comprising 40, 50, and 60)
continues to execute after the system 10 is shut off,
until such time as the temperature estimate 27 from
temperature estimation process 100 approaches a steady
state value. If the temperature estimation process 100 is
still running when the system is activated, then no
initialization to the temperature estimation process 100
would be necessitated.
Yet another exemplary embodiment addresses the estimation filter
initialization error by initializing the digital temperature
estimation filter(s) of temperature estimation process 100
with reduced error using information from another sensor should
it be available. In such an exemplary embodiment, an engine
coolant temperature, for instance, may be available and utilized.
For example, if te is the time for the engine to cool
by 63%, then
If tcu and tm are the times for the motor
windings and magnets to cool by 63% respectively, then
and
It is noteworthy to appreciate that the multiplication term with
the present and last engine coolant temperatures Te
and Te0 is a fraction between zero and one indicating
the change in the final recorded temperatures Tcu0 and
Tm0 since the system was last shut down. The product
of these two terms (from equations (13) and (14)) is then
employed to initialize the digital temperature filters. When the
fraction term is zero the digital filter is likewise initialized
to zero and the motor winding and magnet temperatures become
equal to the ambient temperature as initialized before. It should
be noted that many of the equations are presented as material
specific. However, these equations may be generalized to apply to
any material of interest by substituting the appropriate
subscripts in the equations. For example, with equation (14),
which is specific to the magnetic material could be generalized
by substituting as follows: ##EQU12##
where the m subscripts are replaced by an x to indicate a
generalized application to another material.
The embodiment as disclosed may be implemented utilizing two 2-dimensional
look-up tables for each digital filter initial value. FIG. 7
depicts an implementation of equations (1) and (14) for
generating the filter initialization signal 80 for the
magnet and copper winding filters 80a and 80b
respectively. Look-up tables 86 and 88
respectively may employ linear interpolation, quantization, and
the like to reduce the size of, or number of entries in the
tables. It should be appreciated that while an exemplary
embodiment is disclosed identifying an initialization for the
magnet and copper filters (e.g., 50, and 60), such
an embodiment is equally applicable to any estimation filter
utilized.
In yet another exemplary embodiment, the disclosure outlined
above is supplemented once again with additional filtering and
estimation. The scheme outlined above provides a method for
enhancing the initialization of the estimation filters 40,
50, and 60 (FIG. 5) under particular operating
conditions. Each of the estimation filters 40, 50,
and 60 (FIG. 5) employs the ambient temperature Ta
as one of the terms in the initialization equation(s) (e.g.,
equations (13) and (14)) to formulate the initialization signal 80.
It is noted that under particular operating condition where the
ambient temperature Ta varies significantly, errors
may be introduced after the initial ambient temperature is
recorded. For example, if the estimation process 100 are
initialized under extreme cold conditions, and then heating
causes the ambient temperature to rise significantly. Under close
examination of equations (7) and (8) it should also be evident
that once again a simple filter and gain may be employed to
accurately estimate the delta-temperature (e.g. the change in
temperature above ambient) from a measured current and resistance
when the ambient temperature is treated as a separate component.
In an embodiment, a first order low-pass filter is utilized to
simulate the desired response. FIG. 8 depicts a block diagram of
a motor temperature estimation filter 150 employing this
methodology. An alternative motor delta-temperature estimate
signal 27a is generated by the motor temperature
estimation filter 150. By using this alternative means of
motor delta-temperature estimation as a reference, the ambient
temperature recorded at initialization can be adjusted where
appropriate. This alternate motor delta-temperature estimation
can be processed from a current estimation and the motor
resistance estimation features disclosed herein. The change in
motor temperature with no other contributing factors, addressing
only convection, can be simplified in the following equation:
where I represents a peak phase current of the motor (e.g., the
total heat producing current), Rm represents the
resistance of the motor as may be estimated by the embodiments
disclosed herein and Rtherm represents the thermal
resistance associated with convection, t represents the thermal
time constant related to the heat transfer through the motor 12,
the system 10 and the temperature control system. In an
embodiment, a calibratable filter 152 provides the time
element and a gain 154 provides for the thermal resistance
Rtherm and other system variables. These other
variables include convection and heat transfer from the
controller. In an embodiment, the calibratable filter 152
may be a first order low pass filter. Although the time constant
of the heat transferred from the controller may vary from the
motor, it contributes as little as 10-15� C. It should be noted
that this delta-temperature estimate is implemented as a motor
delta-temperature estimate. It therefore follows that a silicon
or magnet delta-temperature estimate may be implemented in a
similar manner as well.
Referring now to FIG. 9, a block diagram depicting the combined
ambient temperature estimation/initialization scheme integrated
with the temperature estimation process 100. These two
approaches provide two methods of estimating the change in
surface temperature from equation (7) without an estimation of
the ambient temperature Ta. While the first method
requires that a measured ambient temperature Ta be
known before filtering, the second method does not. Therefore,
when these two methodologies are combined an estimation of the
ambient temperature Ta is the result. This is
illustrated in FIG. 9 for the copper temperature estimation
filter 60 as it may be implemented. It should be noted
that the motor temperature estimation filter 150 as
depicted in FIG. 8 may be further simplified to facilitate ease
of implementation and processing burden for controller 18
by once again employing a lookup table 156.
It may be the standard condition or operation to use the initial
substrate temperature 25 at start-up as the initial
ambient temperature Ta. An accuracy range check may be
employed to determine whether the ambient temperature estimation
disclosed is needed and used to compensate the initial ambient
temperature. Similar to the previous estimation methodologies,
another filter (not shown), may be used to provide a slow and
smooth transition from an initial ambient temperature to a new
ambient temperature estimate. An offset term for trim adjustment
is also included to account for constant heat transfer, known
errors, or unanticipated errors and biases. When this delta motor
temperature estimate 27 is subtracted from the estimate
temperature (in this instance the winding copper temperature
estimate 70c) the result is an estimation of the
ambient temperature Ta. The estimated ambient
temperature may thereafter be employed to compensate the
respective temperature estimates e.g., 70a, 70b,
and 70c as depicted at ambient temperature
compensator 158.
It should be noted that this exemplary embodiment only utilizes
one filter with estimate of ambient temperature Ta (e.g.,
depicted with the copper estimation filter 60) as depicted
in FIG. 9. The same ambient temperature estimate may, but
need not be, utilized for additional parameter temperature
estimation filters. For example, for the magnet temperature
estimate, the same scheme may be employed, however, for the
silicon estimation filter, to account for the previously
mentioned difference in the ambient temperatures for the
controller 18 and the motor 12, an additional
offset calibration should be added to the ambient temperature
estimate. Additionally, it should be noted that the initial value
of the measured substrate temperature value 25 may be adequate as
the ambient temperature Ta over the duration of the
system operation within a required threshold. Then, if or when
the ambient estimation crosses such a threshold as may occur
during excessive controller or vehicle heating the initial value
is compensated by an additional ambient temperature estimation
process following the (copper) estimation filter 60. It
should also be noted that the compensated ambient temperature
estimate may further require adjusted scaling in response to the
gain now applied within the copper estimation filter 60.
Turning now to FIG. 10, a block diagram depicting a feedforward
parameter estimation process 110 employing the
abovementioned temperature estimation process(es) 100 is
depicted. Deriving accurate temperature estimates of the various
motor and system components facilitates the estimation and
calculation of motor parameter values and therefrom,
determination of the correct operating voltage to command the
motor 12 (see also FIG. 11). Once again, in an
embodiment, the calculations may be accomplished either by using
lookup tables to simplify and expedite processing or by solving
the equations. FIG. 10, as well as FIG. 11 illustrate an example
of how such temperature estimation data may be processed to
calculate the total motor circuit resistance and motor constant
and thereafter, the correct motor operating voltage in response
to temperature changes. Nominal parameter values 82 (in
this instance, for the transistor silicon resistance as well as
the motor copper resistance and motor constant Ke) are
used as inputs, along with the temperature estimates 70,
into the corresponding parameter calculation blocks 90, 92,
and 94. The equations of all three parameter calculation
blocks 90, 92, 94 are of the following form:
where Tnom is the temperature at which the nominal
parameter value is defined, Thermal Coefficient is the thermal
coefficient of the thermally sensitive material of the parameter
being calculated (such as the temperature coefficient of
resistivity of copper for the motor resistance), and Tact is
the actual temperature of the material.
It should, however, be noted that the diagram in FIG. 10 depicts
three temperature estimates 70a 70b,
and 70c (e.g., silicon, copper, and magnet) used in
the parameter calculation, are employed. However, it should be
evident that the same technique shown in FIG. 10 may logically be
applied using any number of temperature estimates.
Enhanced Feedback Parameter Estimation
Feedforward parameter estimation provides an open loop means of
approximating the variations in the motor parameters with
temperature. Even with such estimation, because the models are
not exactly correct, there will still be an error in the
temperature estimates. Moreover, life degradation of the machine
parameter values cannot be accounted for and compensated.
Finally, the parameter changes due to build variation may only be
addressed utilizing 100% part evaluation and calibration, which
would require additional time and cost to manufacturing. A closed
loop (feedback) approach utilizing error integrators allows for
compensation of the slowly changing build and life variations.
Errors in temperature estimates resulting in parameter estimation
errors may also be compensated.
An exemplary embodiment includes one or more conditional
integrators for accumulating and correcting both motor circuit
resistance R errors and motor constant Ke errors. The
integration conditions are determined by the accuracy of the
error signals for each integrator. In addition, error integration
for R estimation occurs in the low velocity/high torque command
region of motor operation and error integration for Ke occurs
in a high velocity/low torque command region. This is due to the
fact that at low velocities, the resistance error signal equation
is more accurate, while at high velocities the Ke error
signal equation is more accurate.
Referring now to FIG. 11 depicting combined feedforward
methodology 120 and feedback methodology 130 for
parameter estimation as may be implemented and executed by the
controller 18. Generally, in a voltage control scheme, a
torque command signal TCMD 28, which identifies
the desired torque command, is utilized along with the current
motor velocity ? to generate voltage and phase advance angle d
commands to the motor. Moreover, the torque command signal TCMD
28 may include envelope and magnitude limiting, or
other such processing and the like, to control the signal
characteristics. Controller 18 may also include such
processing, the motor control and estimation processing as may be
present in an inverse motor model 112 may also take
advantage of estimates of motor parameters such as resistance R,
inductance L, and motor constant Ke.
The embodiment also includes conditional integrators 104
and 106 (e.g. they integrate their inputs only under
predefined conditions) for correcting both motor circuit
resistance R (104) and motor constant Ke (106).
The conditional integrators 104 and 106 are
responsive to a torque error signal 204 generated via the
comparison of an estimated torque 206 generated at 108
and a time shifted version of the TCMD 28
denoted the delayed torque command 202. It will be
appreciated, that by noting that the torque producing current Iq
is directly proportional to the torque, either of the two
analogous quantities may be employed in this approach. Hereafter,
the torque and torque current will be treated equivalently.
The process, estimate torque 108 utilizes a measurement
representing the torque producing current, or Iq, of
the motor (also referred to as the "real", "quadrature",
or "torque" component of the motor current vector) and
the motor velocity ? as inputs. Appropriate scaling is applied to
facilitate comparison of the measured torque producing current Iq
to the expected value determined from the torque command TCMD
28. An appropriate delay depicted at 114
between the TCMD 28 and the comparison
operation is applied to ensure that the measured Iq is
time coherent with the TCMD 28 to which it is
being compared thereby generating a delayed torque command 202.
The most recent estimated value of the combined feedforward and
feedback motor constant estimate KeEST is employed
used in the scaling process. Since torque is equal to Ke*Iq,
either the delayed torque command 202 may be divided by KeEST
to create a commanded torque current variable to compare to
the computed Iq, conversely, Iq may be
multiplied by KeEST to create a computed torque
estimate TEST 206 and compared to the delayed
torque command 202. The latter is depicted in FIG. 11.
The torque error signal 204 generated by the comparison is
range checked at limiting process 122 and ignored if the
torque error signal 204 exceeds a selected limit.
Otherwise, the torque error signal 204 is supplied to the
resistance conditional integrator 104. Similarly, the
torque error signal 204 is supplied to the motor constant
Ke conditional integrator 106.
An additional output of the estimate torque process 108 is
a signal which represents that the measured value of Iq
is valid, or within selected error bounds. The operation of the
conditional integrators may be interlocked as a function of this
validity condition to ensure that the integrators only operate
under selected conditions. For instance, the Iq measurement
input to the estimate torque process 108 may be
unavailable or of lesser accuracy. The conditional integrators 104
and 106 are employed to generate feedback corrections for
resistance R and motor constant Ke responsive to the
torque error signal 204. The integration conditions are
determined by the accuracy of the torque error signal 204
applied to each integrator. In addition, error integration for
resistance estimation occurs in the low velocity/high torque
command region of motor operation, while the error integration
for motor constant Ke occurs in a high velocity/low
torque command region. It will be appreciated that at low
velocities, the resistance error signal equation (e.g., equation
23) is more accurate; while at high velocities the Ke error
signal equation (e.g., equation 25) is more accurate.
The conditional integrators 104 and 106 themselves
also operate as a function of numerous input signals to establish
the selected integrating conditions. In an exemplary embodiment,
motor velocity ?, motor torque command TCMD 28,
a rate flag 208, and the estimate good flag as discussed
earlier are employed to further define the desired integration
envelopes. It is noteworthy to appreciate that motor velocity ?
is utilized to enhance the accuracy of the error equations being
used for the estimation. As described herein above, the feedback
compensation equations, exhibit enhanced accuracy in different
velocity ranges for the numerous motor parameters. On the other
hand, as stated earlier, the resistance estimate in equation (23)
approaches infinity at Iq=0. Therefore, low torque
commands need to be excluded from the integration component of
the estimation for resistance. Similarly, the Ke estimate
in equation (25) approaches infinity at ?=0, and thus the motor
stall and/or low velocity condition should be excluded from the Ke
integration. In addition, it is noteworthy to recognize
that the resistance error estimate is more accurate for low
velocities and the motor constant estimate is more accurate for
low torques.
The estimate good flag provides an interlock on the estimate
computation for those operating conditions when the torque
estimate from the estimate torque process 108 may not be
valid. For example, under certain operating conditions the
algorithm employed to ascertain the torque current may experience
degradation in accuracy or may not be deterministic. One such
condition employed to invalidate the torque estimate is when the
motor 12 is operating in quadrant II or IV, that is, when
the torque command and velocity ? are in opposite directions.
Such conditions occur when there are torque and direction
reversals.
In yet another embodiment, the conditional integrators may also
be a function of additional conditions and criteria. For example,
additional constraints may be employed upon the integrations. In
this embodiment, a rate flag is also employed to identify
conditions when the spectral content of the torque command is
undesirable and thus the integration should be disabled. In this
instance, a rate flag 208 is employed by each of the
conditional integrators 104 and 106 as an interlock
on the feedback estimate computation under transient conditions.
The rate flag 208 indicates that the spectral content of
the torque command TCMD 28 is below a selected
frequency threshold. An interlock of this nature is desirable to
avoid including in the estimate computation contributions to the
torque error which are resultant from sudden but short duration
torque commands by the operator.
Continuing with FIG. 11, it is noteworthy to appreciate that the
integration envelope boundaries may be implemented with a variety
of boundary conditions. For example, "hard" boundaries,
which are exemplified by the conditional integrator(s) 104
and 106 being either "on" and running or "off"
when on either side of the boundary respectively. Conversely,
"soft" boundaries, where the integrator gain is
gradually reduced when crossing the boundary from the "on"
or active side to the "off" or inactive side and
gradually increased back to its nominal value when crossing the
boundary from the "off" side to the "on" side.
A "hard" boundary may be easier to implement but a
"soft" boundary may allow the integration window to
grow slightly. In an embodiment, a "hard" boundary may
be employed to simplify implementation requirements.
Having reviewed the interfaces to, and operation of, the
conditional integrators 104 and 106, attention may
now be given to some details of operation of the remainder of the
feedback parameter estimation as depicted in FIG. 11. It
may be noted that the parameters of interest usually vary
relatively slowly over time. For example, the temperature
dependent variation and the life variation of the parameters may
exhibit time constants on the order of minutes, days if not even
years. Therefore, the conditional integrators 104 and 106
may be configured as desired to exhibit relatively slow response
times, or low gains. Setting the gains too high or the response
too fast, for example, may inadvertently cause the conditional
integrators 104 and 106 to initiate correction of
parameters during higher frequency commanded torques as might be
experienced under rapid or aggressive steering maneuvers. Because
the normal delay between commanded torque TCMD 28
and actual torque (as supplied from the process estimate torque 108)
becomes less predictable in this case, the delayed TCMD 202
and TEST 206 may not be time coherent (matched
in time). However, by maintaining the conditional integrator
gains lower and the response characteristics of the conditional
integrator slower, overall response to erroneous torque error
signals, if any, are limited and unable to adversely affect the
outputs of the conditional integrators 104 and 106,
or the motor parameter estimates. Once again, this may be
accomplished by disabling the conditional integrators 104
and 106 under selected conditions to ensure that the
effect on the parameter estimates will be minimized. The rate
flag disclosed in the above mentioned embodiment may be employed
to address this requirement in a manner similar to that described
earlier.
Another important consideration for the practical implementation
employing the conditional integrators 104 and 106
is initialization. It is well understood that because of the
nature of an integrating function, controlling the initial
conditions is very important. This is the case because any error
in the initial conditions may only be eliminated via the gain and
at the integrating rate specified. Therefore, in the instant case
where the desired response is purposefully maintained slow to
accommodate system characteristics, the initial error may take
significant time to be completely eradicated.
Like the estimation filters 40, 50, and 60
discussed earlier, initialization of the conditional integrators 104
and 106 presents unique circumstances for consideration.
In another embodiment, the conditional integrators 104 and
106 may be initialized to a nominal parameter value with
each initialization or vehicle starting condition (e.g., with
each ignition cycle or power on cycle in an automobile). However,
employing this approach once again means that at key on (initial
power turn on) the parameter estimate applied to the inverse
motor model 112 will now start at the nominal parameter
value, and therefore once again not include any information about
the parameter estimates "learned" during previous
operational cycles. Considering, as stated earlier, the
conditional integrators 104 and 106 are interlocked
at motor stall (e.g. ?=0), this again means that for the first
steering maneuver (first commanded torque TCMD 28)
the operator performs, a significant, albeit smaller than the
abovementioned embodiment, error may be present.
In yet another embodiment, the output of each conditional
integrator 104 and 106 may be saved in a storage
location at the end of each ignition/operational cycle. It is
noteworthy to recognize that at the end of each ignition cycle,
the output of each conditional integrator 104 and 106
represents the parameter estimate correction needed to overcome
the build and life errors and variations. Furthermore, it should
be noted and apparent that from one operational cycle to the
next, the parameter variation dependent upon build variations
will not have changed significantly and therefore, the build
variation error correction required is zero. Likewise, the life
variation correction from one operational cycle (e.g., each power
application to the motor control system 10) to the next is
minimal if not negligible. Therefore, in an embodiment, the
output of the conditional integrators 104 and 106
may be compared with values from previous operational cycles and
saved as a correction only if they differ from the saved values
by some selected margin. As such, only significant differences in
the response of the conditional integrators 104 and 106
between operational cycles will be saved, thereby reducing
processing effort and impact on storage utilization.
To appreciate and understand the accuracy ranges for the
estimates, and the operation of the feedback motor parameter
estimates, it is helpful to review the theoretical equations for
each and their generation. The motor resistance R and motor
constant Ke estimates are based upon a simplification
of the motor torque and voltage equations.
The equation for calculating the actual motor circuit resistance
is derived from the motor torque and voltage equations in the
following manner. The motor torque Tm is equal to:
##EQU13##
where R, Ke, and L are all the actual motor circuit
parameters of resistance, motor constant and inductance
respectively, ?e is the electrical motor velocity (i.e.
the rotational velocity times the number of poles divided by 2, ?mNp/2),
Np is the number of motor poles and d is the actual
motor phase advance angle. V is the applied motor voltage, which
is derived using estimates of the parameters.
The concept is as follows: Equation (17) for the motor torque is
divided by the actual value of the motor constant Ke
which gives an equation for the torque producing component of the
total motor current, Iq as shown in equation (18).
##EQU14##
Equation (18) is then solved for the actual resistance R, with
the exception that the L/R terms are still on the right hand side
of the equation yielding equation (19). ##EQU15##
The equation for commanded motor voltage V is derived from
equation (17) and using estimated motor parameters yields
equation (20), which is subsequently substituted into equation (19),
thereby resulting in a new equation for the resistance R,
equation (21). ##EQU16##
Hereafter, certain assumptions are applied to aid simplification
of equation (21). First, it is noteworthy that if the error
between the estimated values REST and LEST and
the actual values for R and L is small, and further, if the motor
velocity ?m low (such that phase advance angle d is
also small), then, the phase advance terms (terms of the form cos(d)+?eL/R*sin(d))
of equation (21) may be ignored and canceled. The resultant is
equation (22) as shown. Second, assuming that the error between
the estimated value KeEST and Ke is small
and again that the motor velocity ?m is low allows the
first term in the numerator to be neglected and cancelled. ##EQU17##
Finally, the numerator and denominator terms of the form 1+(?eLEST/REST)2
may be cancelled based on the first assumption that the
errors between the estimated values REST and LEST
and the actual values for R and L is small. This results in
a relatively simple equation for the actual value of R as follows:
##EQU18##
To determine a "measured" value of Ke from
the available signals, the following vector equation for motor
current can be used. V represents the applied motor voltage, E
represents the motor BEMF, or back electromotive force, I
represents the motor current, ?m is the motor
mechanical velocity, and Z represents the motor circuit impedance.
##EQU19##
Since the left side of the equation (24) is real, the right side
using well known principles can be written in terms of its real
part only. ##EQU20##
It should be noted that all of the values on the right side of
the equation are available either as software parameters or
software inputs. By subtracting this "measured" value
of Ke from the Ke estimate, a Ke error
signal can be developed and used for gradually integrating out
the error in the estimate. Also noteworthy is to recognize that
as motor velocities approach zero velocity, this equation becomes
undefined and should not be used. Moreover, under conditions
where the imaginary part of the motor current is nonzero the
equation is not as accurate.
It may seem as though equation (23) could be solved directly for
R since all the parameters on the right hand side of the equation
are readily available. However, it is noteworthy to realize that
Iq may realistically not always be available or
accurate, especially at start up. Further, the assumptions used
to derive the equations initially, were characterized as valid
primarily at low velocities, thus dictating that equation (23) is
only valid at low velocities. Therefore, the approach disclosed
in this embodiment should preferably, be employed under
conditions where the resultant of the integration can either be
combined with a constant nominal value for the resistance R, or
more substantially, as in an exemplary embodiment disclosed later
herein, an estimate for R derived from the feedforward
compensation as described in previous embodiments.
An alternate approach to computing an equation for Ke
estimation may be employed. Employing the same technique utilized
above to develop an equation for the estimate for R, an equation
to estimate Ke may be developed. Referring once again
to equation (18), the equation can be solved for Ke to
yield equation (26). ##EQU21##
Again in a similar fashion, utilizing equation (20) for the
voltage and then substituting into equation (26), equation (27)
for Ke is generated. ##EQU22##
Once again, applying the assumptions and simplifications employed
above to solve for R, a simplified equation for Ke may
be developed in terms of known parameters. That is, because the
errors in R and L are small, allows the phase advance terms to
cancel. Additional simplification of the remaining terms yields
equation (28) shown below. ##EQU23##
Although not as simple as the estimation equation for R (equation
23), the error between Ke and KeEST is
still a function of the difference equation Tcmd/KeEST
minus Iq. Two other velocity dependent terms act
as a "gain" term for the difference equation.
Observation indicates that this "gain" term approaches
infinity at zero velocity (e.g., ?e=0), then the
"gain" term reduces to a minimum at motor operation mid-range
velocities, and then increases again at high velocities. An
example of the "gain" term versus velocity in shown in
FIG. 12. Therefore, it may be apparent then that the
difference equation of equation (28) provides an indeterminate
estimate for Ke at low or zero velocity as stated
earlier, and yet an improved indication of the Ke estimate
error at high velocities where the "gain" term is
larger. Therefore the best range to estimate Ke would
be at high velocities.
It is easy to see from equation (23) for R that if TCMD
is equal to KeEST Iq then R will be equal
to REST. If TCMD is larger than KeEST Iq
then REST is too small, and vice versa.
Therefore, the error signal for the conditional integrators 104
and 106 may readily be computed by subtracting KeEST Iq
from TCMD (or equivalently TCMD/KeEST
minus Iq). Integration should then take place
only at low motor velocities where d is small and at values of Iq
greater than zero, since at Iq=0 the above
equation for R goes to infinity and is not valid.
Returning to equation (25) and the computation of Ke,
in this instance, the error between Ke and KeEST is
also a function of the difference equation TCMD/KeEST
minus Iq. The two other velocity dependent terms
provide scaling for the difference equation. It is noteworthy to
recognize that these scaling terms approach infinity at zero
velocity, then reduce to a minimum for mid-range velocities of
motor operation, and then increase again at high velocities.
Therefore, the difference equation will then be a better
indicator of the Ke estimate error at high velocities
where the gain is larger. Therefore, the best range to integrate
for Ke would be at high velocities and avoiding the
anomaly at low or zero velocity. FIG. 12 depicts a Ke estimator
error signal gain as a function of motor velocity.
Therefore, by starting with the explicit equations for the
parameters and applying several educated assumptions and
constraints, simple equations for estimating the parameters may
be derived. The resultant parameter estimates are proportional to
the error between the commanded motor torque and the actual or
measured motor torque. This approach facilitates employing a
simple error integration technique to compute corrections for the
motor parameters. Once again, it is noteworthy to appreciate that
the integration process should be constrained to the motor
operational regions where the simplified equations are valid due
to the abovementioned assumptions and constraints.
Yet another embodiment, employs another enhancement to feedback
parameter estimation by establishing conditions under which the
parameter estimation should be halted and not performed. Such
conditions may exist for a variety of reasons particularly those
associated with conditions under which the assumptions employed
to establish the parameter estimation equations may no longer be
valid. One such condition may be dynamic operating conditions for
the motor 12, for example, dynamic torque and current as
may be induced by more aggressive operator inputs. Under such
dynamic conditions, for example, high torque or current or high
rate motor commands, the parameter estimation algorithms
disclosed above may update existing estimations for motor
parameters with estimates which are consequently inaccurate as a
result of the dynamic conditions. Therefore, an exemplary
embodiment provides a means of selectively enabling the motor
parameter estimation as a function of the commanded motor dynamic
conditions. Such selective enablement of the estimation process
yields a more accurate estimate by avoiding parameter estimation
responses to conditions that produce undesirable results.
The inverse motor model depicted at 112 in FIG. 11
employed for motor control is effectively a steady state inverse
of the motor equations of operation providing voltage to be
applied to the motor 12 as a function of motor velocity
and desired output torque. It will be appreciated that utilizing
this steady state model, for example, in motor control
applications for vehicle steering, produces acceptable results
while avoiding undesirable driver feel anomalies associated with
the dynamic characteristics of the system 10. This has
been the case because the motor time constant and dynamic
responses are negligible when compared to the mechanical time
constant of the vehicle steering mechanisms. In other words and
more particularly, the lag and dynamics between the commanded
current in the steady-state inverse motor model and the torque
produced by the motor are not felt by the driver and are thus,
transparent to the driver.
In an exemplary embodiment and referring once again to FIG. 11,
to facilitate motor parameter estimation a comparison and error
computation between commanded torque and motor torque is
employed, thereby, generating a torque error. Even when ideal
motor parameters are considered, such an error will persist,
particularly under dynamic conditions. Moreover, because the
torque error is utilized to correct and compensate the motor
parameters as disclosed herein, such a torque error will
effectively "correct" the motor parameters from more
accurate or ideal values to less accurate, non-ideal values under
certain conditions. This "correction" away from more
accurate values is characteristic of the parameter estimation
process, which is preferably avoided. Therefore, it will be
evident that one way to prevent "improper" correction
is to disable the parameter estimation of the conditional
integrators 104 and 106 during selected dynamic
conditions. The rate flag 208 discussed in earlier
embodiments is an implementation, which addresses this disabling
of the conditional integrators 104 and 106 under
selected conditions. It will be appreciated that while the
disclosed embodiment pertains an enhancement for parameter
estimation employing a determination of a torque error resultant
from a difference between commanded and actual torque, analogous
comparisons may be employed utilizing current. In fact, under
certain conditions it may be advantageous in implementation to
employ current rather than torque as the subject compared
parameter.
An exemplary embodiment presents method and system for preventing
undesirable correction of motor parameter estimation under
dynamic operating conditions. In the system 10 motor 12
operates under true steady state conditions (no dynamics) if all
orders of the motor torque and motor velocity derivatives are
zero. It will be appreciated that over a short duration of time
and neglecting highly dynamic conditions, the motor velocity ?m
exhibits little change due to physical constraints and properties
(e.g., mass, inertia, and the like). Hence, it may be assumed
that all orders of derivatives of motor velocity are zero during
one sample period. Moreover, the velocity of the motor remains
relatively constant under operating conditions where the torque
is not rapidly changing as well. Therefore, the characteristics
of the motor torque often provide a good indication of the
characteristics of the velocity of the motor. However,
significant dynamics may exist when the commanded torque exhibits
rapid changes. In addition, the greater the rate of change of the
commanded torque, the greater the resulting motor dynamics. The
first derivative of the motor torque may be approximated by the
change of commanded torque over a fixed period of time, for
example, one sample period, or a specified motor torque change
divided by the associated duration of time for that torque change.
It will be appreciated that there are numerous methodologies for
ascertaining the rate of change of motor torque or motor current.
The two given here are exemplary and illustrative and are not
necessarily inclusive of other potential means of determining a
derivative. It will also be appreciated that, in practice, it is
often difficult to obtain a true measurement or estimate of
higher order derivatives utilizing the abovementioned or similar
methods. Because of noise amplification difficulties and
mathematical anomalies, such methodologies are limited to certain
characteristics of data and applications. Ideally, it would be
preferred to include all the higher order derivatives of the
motor current to facilitate the determination and characteristics
of the motor dynamics, but nonetheless, the rate of change of
commanded torque and therefore the current presents a useful
estimate of the motor dynamics.
Referring once again to FIG. 11, it will be appreciated that the
rate of change of commanded current may be calculated as the
difference between current commands over a period of time. For
instance, the difference between current commands over two
consecutive or a selected number of controller cycles. If the
rate of change of current command exceeds a selected threshold
value, the parameter estimation may be disabled (no integration
by the conditional integrators 104 and 106 (FIG. 11)
during that time period). If this rate is less than the
threshold, parameter estimation is allowed to integrate the error.
In an exemplary embodiment, a threshold value of 2 Amperes (A)
over a 2 millisecond duration was employed and found to provide
more efficient conditional integrators.
It should be noted that the maximum gains of the conditional
integrators 104 and 106 may therefore be determined
by the maximum acceptable wandering fluctuations of the estimated
parameters R and Ke. It is further noteworthy to
appreciate that by restricting the parameter estimation to
operate under the threshold as disclosed herein, to a finite
extent, an increase in the gain of the conditional integrators 104
and 106 may be achieved thereby improving the response
characteristics of the conditional integrators 104 and 106
for the parameter estimation.
Combined Feedback and Feedforward Parameter Estimation
Another exemplary embodiment contemplates an enhancement of the
processes of the feedback methodology 130 for parameter
estimation embodiments discussed earlier combined with the
processes of the feedforward methodology 120 for parameter
estimation also discussed earlier. Such a combination of feedback
methodology 130 combined with feedforward methodology 120
for parameter estimation captures the advantages of both
methodologies while minimizing the disadvantages and limitations
of either methodology when implemented alone. FIG. 11 depicts a
diagram outlining the processes employed. It is noted that
feedback methodologies are generally closed loop and provide
accurate control of a parameter or system at the expense of
mandating an accurate sensing method or apparatus and poor
transient response or stability. Moreover, feedback systems often
require additional processing time to compute the desired
corrections. Conversely, feedforward methodologies are generally
open loop and do not require a sensor measurement of the
parameter of interest. Additionally, a feedforward methodology
exhibits excellent transient response characteristics usually at
the expense of accuracy of response. Therefore, a combination of
the feedback methodology with the feedforward methodology
provides the increased accuracy attributable to feedback with the
dynamic response attributable to feedforward.
A description of the processes employed to facilitate the
feedback methodology 130 and the feedforward methodology 120
has been provided earlier and will not be repeated here to avoid
redundancy. Therefore, it should be understood that a reference
to feedback includes the full description and disclosure of the
abovementioned feedback parameter estimation methodology.
Furthermore, reference to feedforward includes the full
description and disclosure of the abovementioned temperature
estimation and feedforward parameter estimation methodology.
Further descriptions provided herein are intended to expound the
capabilities either the feedback or feedforward parameter
estimation or the combination thereof.
Having reviewed the interfaces to, and operation of, the
conditional integrators 104 and 106, attention may
now be given to some details of operation of the remainder of the
combined feedforward and feedback parameter estimation as
depicted in FIG. 11. Turning now to the feedback
methodology 130, it may be noted that the parameters of
interest usually vary relatively slowly over time. For example,
the life variation of the parameters may exhibit time constants
on the order of minutes, days if not even years. Moreover, the
build variations tend to be more random in nature from one unit
to another. Therefore, the conditional integrators 104 and
106 may be configured as desired to exhibit relatively
slow response times, or low gains. Setting the gains too high or
the response too fast, for example, may inadvertently cause the
conditional integrators 104 and 106 to initiate
correction of parameters during higher frequency commanded
torques as might be experienced under rapid or aggressive
steering maneuvers. Because the normal delay between commanded
torque TCMD 28 and actual torque (as supplied
from the process estimate torque 108) becomes less
predictable in this case, the delayed TCMD 202
and TEST may not be time coherent (matched in time)
possibly resulting in the generation of erroneous error signals,
albeit briefly. However, by maintaining the conditional
integrator gains lower and the response slower any erroneous
signals generated are limited and unable to adversely affect the
outputs of the conditional integrators 104 and 106,
or the motor parameter estimates. Once again, this may be
accomplished by disabling the conditional integrators 104
and 106 under selected conditions to ensure that the
effect on the parameter estimates will be minimized. The rate
flag disclosed in the above mentioned embodiment may be employed
to address this requirement in a manner similar to that described
earlier.
Returning once again to FIG. 11, the feedforward methodology 130
comprising the feedforward parameter estimation 110 as
well as the component temperatures estimation process 100
has been disclosed earlier, and together, computes a temperature
dependent feedforward parameter estimate for both the resistance
R and the motor constant Ke. The feedback methodology 130
compute long term slowly varying corrections to the parameter
estimates to address build and life variations. In an embodiment,
the output of the conditional integrators 104 and 106
respectively, is combined at summers 116 and 118
respectively with the output of the feedforward parameter
estimation for resistance estimate 210 and motor constant
estimate 212 described earlier yielding combined parameter
estimates 214 and 216 for resistance and motor
constant respectively. The combined parameter estimates 214
and 216 update continuously with temperature (feedforward),
and as needed to correct for build or life variations (feedback).
The result of these combinations is the final motor parameter (R,
Ke) estimate, which is applied to the inverse motor
model 112 and used to calculate the appropriate voltage
and phase commands for the motor to achieve the desired torque.
In an embodiment of the combined feedback methodology 130
and feedforward methodology 120, once again initialization
is paramount. The combined approach yields significant advantages
not readily achieved with either the feedback methodology 130
or feedforward methodology 120 alone. Turning to the
initialization of the conditional integrators, in an exemplary
embodiment of the combined processes, the conditional integrators
104 and 106 could simply be initialized to a zero
output with each vehicle starting condition as disclosed earlier.
However, employing this approach means that at key on (initial
power turn on) the combined parameter estimate applied to the
inverse motor model 112 will equal the feedforward
estimate only from the feedforward parameter estimate process 110.
While this approach may be adequate for some applications, once
again, it does not take advantage of the information "learned"
about the build and life variations of the parameters.
In yet another embodiment, similar to that disclosed earlier, the
output of each conditional integrator 104 and 106
may be saved in a storage location at the end of each ignition/operational
cycle. It is noteworthy to recognize that at the end of each
ignition cycle, the output of each conditional integrator 104
and 106 represents the parameter estimate correction
needed to overcome the build, life, and feedforward correction
error variations. Furthermore, it should be noted and apparent
that from one operational cycle to the next, the parameter
variation dependent upon build variations will not have changed
significantly and therefore, the build variation error correction
required is zero. Likewise, the life variation correction from
one operational cycle (e.g., each power application to the motor
control system 10) to the next is minimal if not
negligible. Therefore, once again, the contribution to the output
of the conditional integrators 104 and 106 due to
these variations may be assumed to be constant. As such, the only
significant difference in the response of the conditional
integrators 104 and 106 between operational cycles
may be attributed to errors in the feedforward estimation as a
function of temperature.
Fortunately, these types of errors have been previously addressed
in an embodiment disclosed, which minimizes their impact.
Therefore, the feedforward estimation errors most likely, will be
smaller than the build and life variations carried forward.
Moreover, employing this approach, the overall initialization
error will still be much smaller than if the conditional
integrators 104 and 106 were initialized to a zero
as the assumed initial output. Employing this technique will
reduce the errors due to parameter errors at initialization with
the application of power, and will reduce the amount of time for
the integrators to approach their final value.
Once again, it is significant to recall and recognize that the
feedforward estimation contribution to the motor parameter
estimates primarily addresses temperature related changes, while
the feedback contribution to the motor parameter estimation
primarily addresses long-term variations. Therefore, once the
outputs of the conditional integrators 104 and 106
approach final values they should not change significantly until
the end of the ignition cycle.
Moreover, looking to the conditions for initialization of the
conditional integrator 106 associated with the estimation
of Ke, it should be recognized that Ke
feedback compensation occurs only under certain operational
conditions, for example, in disclosed embodiment, high motor/hand
wheel velocities. Significantly, some operating conditions are
less probable and occur less frequently, for example in an
instance employing a vehicle, some drivers may very rarely drive
in a manner in which they use high hand wheel velocities. Thus,
from a practical position, it would be fruitless to discard the
information learned and accumulated about the actual value of Ke
from each operational cycle to the next. Thus, to avoid
errors in the Ke estimate, which may result in
substantial changes in torque output and damping, and possibly
stability degradation, the last output values of the conditional
integrator (in this instance 106) may be stored, and saved
for later use at the end of each operational cycle. More
appropriately, at the end of an operational cycle, the last value
of the parameter estimate may be compared with a stored value
from previous operations and saved only if there has been a
significant change in that parameter estimate since the last
cycle.
However, the shortcomings described above, due, mainly to the
large periods of time where the integrators 104 and 106
are set inactive would remain therefore combining the feedback
estimation with the feedforward estimation yields more accurate
results. Another advantage of the combining approach described
herein is that the accuracy requirements of the feedforward
methodology 120 could potentially be relaxed slightly due
to the presence of the feedback processes. Thereby, allowing the
feedback contribution to the parameter estimates to make up the
difference without impacting overall system performance. For
example, lower cost temperature sensors may be employed or less
complex initialization utilized for the temperature estimation
process 100 than may be desired with feedforward parameter
estimation alone. It will be further appreciated the while an
embodiment disclosing the operation of a pair of conditional
integrators responsive to a torque error signal has been
described, it will be understood as being exemplary and
illustrative only. Other implementations of the same concepts are
conceivable. For example, the integrators as described are
effectively error accumulators or counters, which accumulate
errors at a predetermined rate. Other implementations employing
accumulators, counters or other summation methods may readily be
employed.
The disclosed method may be embodied in the form of computer-implemented
processes and apparatuses for practicing those processes. The
method can also be embodied in the form of computer program code
containing instructions embodied in tangible media, such as
floppy diskettes, CD-ROMs, hard drives, or any other computer-readable
storage medium, wherein, when the computer program code is loaded
into and executed by a computer, the computer becomes an
apparatus capable of executing the method. The present method can
also be embodied in the form of computer program code, for
example, whether stored in a storage medium, loaded into and/or
executed by a computer, or as data signal transmitted whether a
modulated carrier wave or not, over some transmission medium,
such as over electrical wiring or cabling, through fiber optics,
or via electromagnetic radiation, wherein, when the computer
program code is loaded into and executed by a computer, the
computer becomes an apparatus capable of executing the method.
When implemented on a general-purpose microprocessor, the
computer program code segments configure the microprocessor to
create specific logic circuits.
While the invention has been described with reference to an
exemplary embodiment, it will be understood by those skilled in
the art that various changes may be made and equivalents may be
substituted for elements thereof without departing from the scope
of the invention. In addition, many modifications may be made to
adapt a particular situation or material to the teachings of the
invention without departing from the essential scope thereof.
Therefore, it is intended that the invention not be limited to
the particular embodiment disclosed as the best mode contemplated
for carrying out this invention, but that the invention will
include all embodiments falling within the scope of the appended
claims.
* * * * *
Last Updated : Sun Mar 9 22:20:03 EST 2008
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