Tire cornering stiffness estimation system and method
09739689 · 2017-08-22
Assignee
Inventors
Cpc classification
B60C99/00
PERFORMING OPERATIONS; TRANSPORTING
B60C2019/004
PERFORMING OPERATIONS; TRANSPORTING
B60C23/00
PERFORMING OPERATIONS; TRANSPORTING
B60T8/00
PERFORMING OPERATIONS; TRANSPORTING
B60T8/1725
PERFORMING OPERATIONS; TRANSPORTING
International classification
B60C99/00
PERFORMING OPERATIONS; TRANSPORTING
B60T8/172
PERFORMING OPERATIONS; TRANSPORTING
Abstract
A tire cornering stiffness estimation system and method includes multiple tire-affixed sensors mounted to a supportive vehicle tire for operably measuring tire-specific parameters and generating tire-specific information relating tire pressure, temperature, wear state, tire identification and tire loading. One or more accelerometer(s) are mounted to the hub supporting the tire to generate a hub accelerometer signal. A model-based tire cornering stiffness estimator is included to generate a model-derived tire cornering stiffness estimation based upon the hub accelerometer signal adapted by the tire-specific information.
Claims
1. A tire cornering stiffness estimation system comprising: a vehicle supported by at least one vehicle tire mounted to a hub, the vehicle tire having a tire cavity and a ground-engaging tread, and the tire having a plurality of tire-specific measureable parameters, the tire-specific measureable parameters including a load estimation for the one vehicle tire, a temperature of the one vehicle tire, an air pressure within a cavity of the one vehicle tire, and a tire identification identifying the one vehicle tire; a plurality of tire-affixed sensors mounted to the tire operably measuring the tire-specific measureable parameters to generate tire-specific information; at least one accelerometer mounted to the hub and generating a hub accelerometer signal to provide a wear estimation for the ground-engaging tread of the one vehicle tire; a tire cornering stiffness estimator employing a model operable to generate a tire cornering stiffness estimation based upon the hub accelerometer signal and adapted by the tire-specific information.
2. The cornering stiffness estimation system of claim 1, wherein the tire cornering stiffness estimator operably conducts a frequency domain spectral analysis of the hub accelerometer signal.
3. The cornering system estimation of claim 1, wherein the hub accelerometer signal is provided to the tire cornering stiffness estimator from a vehicle CAN-bus.
4. A tire cornering stiffness estimation system comprising: a vehicle supported by at least one vehicle tire mounted to a hub, the vehicle tire having a tire cavity and a ground-engaging tread, and the tire having a plurality of tire-specific measureable parameters, the tire-specific measureable parameters including a load estimation for the one vehicle tire, a temperature of the one vehicle tire, an air pressure within a cavity of the one vehicle tire, and a tire identification identifying the one vehicle tire; a plurality of tire-affixed sensors mounted to the tire operably measuring the tire-specific measureable parameters to generate tire-specific information; at least one accelerometer mounted to the hub and generating a vehicle CAN-bus hub accelerometer signal to provide a wear estimation for the ground-engaging tread of the one vehicle tire; a tire cornering stiffness estimator employing a model operable to generate a tire cornering stiffness estimation based upon the vehicle CAN-bus hub accelerometer signal and adapted by the tire-specific information.
5. The cornering stiffness estimation system of claim 4, wherein the tire cornering stiffness estimator operably conducts a frequency domain spectral analysis of the vehicle CAN-bus hub accelerometer signal.
6. A method of estimating tire cornering stiffness comprising: equipping a vehicle with at least one vehicle tire mounted to a hub, the vehicle tire having a tire cavity and a ground-engaging tread, and the tire having a plurality of tire-specific measureable parameters, the tire-specific measureable parameters including a load estimation for the one vehicle tire, a temperature of the one vehicle tire, an air pressure within a cavity of the one vehicle tire, and a tire identification identifying the one vehicle tire; affixing a plurality of tire-based sensors to the tire to operably measure the tire-specific measureable parameters and thereby generate tire-specific information; mounting at least one accelerometer to the hub to operably generate a hub accelerometer signal to provide a wear estimation for the ground-engaging tread of the one vehicle tire; generating from a tire cornering stiffness estimator employing a model a tire cornering stiffness estimation based upon the hub accelerometer signal and adapted by the tire-specific information.
7. The method of claim 6, further comprising conducting a frequency domain spectral analysis of the hub accelerometer signal by the tire cornering stiffness estimator.
8. The method of claim 7, wherein further comprising obtaining the hub accelerometer signal from a vehicle CAN-bus.
Description
BRIEF DESCRIPTION OF THE DRAWINGS
(1) The invention will be described by way of example and with reference to the accompanying drawings in which:
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DETAILED DESCRIPTION OF THE INVENTION
(23) Referring to
(24) By way of background, the subject invention is directed to a tire force model adaptation to tire-based information obtained from tire-attached sensors in order to make a tire cornering stiffness estimation. As seen in the
(25) The cornering stiffness estimation system 10 develops an estimate of the loading on the tire 14 by means of a load estimation method 23. The load estimation 23 is based upon a dynamic tire load estimator configured as presented in co-pending U.S. Patent Application Publication No. 2014/0278040, filed Mar. 12, 2013 and published Sep. 18, 2014, entitled VEHICLE DYNAMIC LOAD ESTIMATION SYSTEM AND METHOD hereby incorporated herein in its entirety. In addition, the system 10 uses as an adaptive input a wear estimation method 24 based upon vehicle-based sensors provided from the CAN bus 25 of the vehicle 12. The CAN bus 25 input of vehicle-based information into the wear estimation method 24 results in an estimation of tire wear state of the tire tread 16. A suitable wear estimation method, referred herein as an “indirect” wear state estimation method, is found in co-pending U.S. application Ser. No. 13/917,691, filed Jun. 14, 2013, entitled TIRE WEAR STATE ESTIMATION SYSTEM AND METHOD hereby incorporated by reference in its entirety herein. The “indirect” tire wear state estimation algorithm is used to generate tread depth estimation indirectly; that is, without the use of tire mounted tread depth measuring sensors. As such the difficulty of implementing and maintaining accurate tire-based sensor tread depth measurement is avoided. The indirect tire wear state estimation algorithm utilizes a hub acceleration signal which is accessible via the vehicle CAN bus 25 from vehicle based sensors. The hub acceleration signal is analyzed and an estimation is made as to tread depth or wear. The tread depth used may be the percentage tread wear left or a quantitative value of tread wear depth left on the tire.
(26) The collective information provided by the tire-based sensors and transponders, referred to as tire-based information, constitute adaptation inputs 26 into a tire cornering stiffness adaptation model 28 that outputs the object cornering stiffness estimation 30. Operation of the model 28 and adaptation are based upon cornering stiffness dependency on the inputs 26 as will be explained below.
(27) With reference to
(28) The subject system uses information from tire-attached sensors and transducers 20 and utilizes different tire-affixed sensor within a sensor fusion framework. A model 32 describing the motion of the vehicle is selected, such as that shown in
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(30) The dependency of cornering stiffness in a tire to tire wear state and tire load is demonstrated graphically by test results in
(31) In
(32) The test results and sensitivities are summarized in
(33) The subject model capturing the dependencies between the tire cornering stiffness, tire wear state and tire load is shown below. A Polynomial model (third order in load and second order in tread depth) results in a good fit as shown in
(34) Model Fit:
fit result(x,y)=p00+p10*x+p01*y+p20*x^2+p11*x*y+p02*y^2+p21*x^2*y+p12*x*y^2+p03*y^3
Coeff=[p00 p10 p01 p20 p11 p02 p21 p12 p03];
Coeff_33=[—23.23 −179.5 0.9513 13.93 0.01817 −0.0001009 −0.00324 1.946e-06 2.744e-09];
Coeff_37=[126.6 −178.9 0.7611 15.81 0.001912 −5.894e-05 −0.00316 3.107e-06 5.617e-10];
Coeff_41=[98.89 −128.8 0.6958 12.82 −0.01452 −4.279e-05 −0.002379 3.565e-06 −1.006e-10];
Coeff_45=[−107.9 −98.23 0.7392 11.84 −0.02464 −4.481e-05 −0.001773 3.464e-06 1.883e-10];
The model thus is seen to give a good fit for all pressure conditions.
(35) The expression used in the model for cornering stiffness Cy is as follows:
Cy=(p20+p21*load)*tread depth^2+(p10+p11*load+p12*load^2)*tread depth+(p00+p01*load+p02*load^2+p03*load^3)
(36) The table shown in
(37) Model fitting through the adaptation of coefficients to inflation pressure changes is further demonstrated by the coefficient-against-pressure graphs of
Cy=(p20+p21*load)*tread depth^2+(p10+p11*load+p12*load^2)*tread depth+(p00+p01*load+p02*load^2+p03*load^3)
where x is normalized by mean 39 and standard deviation 5.164.
(38) As seen, coefficients defined are: p1, p2, p3, and p4.
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(40) % p00
(41) p1=−0.5523
(42) p2=−148.6
(43) p3=−35.69
(44) p4=135
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(46) % p10
(47) p1=−24.75
(48) p2=12.49
(49) p3=68.39
(50) p4=−155.7
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(52) % p01
(53) p1=−0.005809
(54) p2=0.09733
(55) p3=−0.08343
(56) p4=0.7138
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(58) % p20
(59) p1=2.467
(60) p2=−1.192
(61) p3=−4.23
(62) p4=14.49
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(64) % p11
(65) p1=0.0002326
(66) p2=0.0002558
(67) p3=−0.02156
(68) p4=−0.006688
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(70) % p02
(71) p1=2.74e-06
(72) p2=−1.833e-05
(73) p3=2.044e-05
(74) p4=−4.812e-05
(75)
(76) % p21
(77) p1=−0.0003141
(78) p2=0.0002192
(79) p3=0.001055
(80) p4=0.002802
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(82) % p12
(83) p1=5.164e-08
(84) p2=−5.258e-07
(85) p3=5.835e-07
(86) p4=3.145e-06
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(88) % p03
(89) p1=−2.04e-10
(90) p2=1.03e-09
(91) p3=−8.244e-10
(92) p4=7.61e-11
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Cy=(p20+p21*load)*tread depth^2+(p10+p11*load+p12*load^2)*tread depth+(p00+p01*load+p02*load^2+p03*load^3)
where the coefficients [p00, p10, p01, p20, p11, p02, p21, p12, p03] are pressure dependent and given by the following expression:
[p00 p10 p01 p20 p11 p02 p21 p12 p03]=p1*x^3+p2*x^2+p3*x+p4
Here x is normalized by mean 39 and standard deviation 5.164.
(94) Model fitting results with pressure adapted coefficients are shown graphically in
(95) In
(96) The dependence of cornering stiffness on the tire temperature can be captured by introducing a polynomial scaling factor as follows.
(97) Model Fit:
f(x)=p1*x.sup.2+p2*x+p3
Coefficients (with 95 percent confidence bounds):
(98) p1=1.761 (0.04273, 3.48)
(99) p2=−356.5 (−629.8, −83.09)
(100) p3=1.983e+04 (8978, 3.067e+04)
(101) Cornering stiffness adaptation model thus becomes as follows:
Cy=(p20+p21*load)*tread depth^2+(p10+p11*load+p12*load^2)*tread depth+(p00+p01*load+p02*load^2+p03*load^3)*Temperature Scaling Factor
(102) From the foregoing and in reference to
(103) The system employs a multiple tire-affixed sensors 20 mounted to the tire for operably measuring the tire-specific parameters and generating tire-specific information. The tire inflation pressure, load, temperature and tire ID information is available from a tire attached TPMS sensor 20 equipped with tire ID information. One or more accelerometer(s) are mounted to the hub supporting the tire to generate a hub accelerometer signal. The model-based tire cornering stiffness estimator generates a model-derived tire cornering stiffness estimation based upon the hub accelerometer signal (used to estimate loading) and adapted by the tire-specific information (tire ID, pressure, temperature, and wear state).
(104) Tire wear state is derived by doing a frequency domain/spectral analysis of the suspension hub-mounted accelerometer signal as taught in co-pending U.S. application Ser. No. 13/917,691, filed Jun. 14, 2013.
(105) The tire cornering stiffness estimator for Cy employs as estimator inputs 26: a load estimation for the object vehicle tire, temperature of the vehicle tire, air pressure within a cavity of the vehicle tire and the tire ID used to generate model coefficients by recognition of tire-type, and a wear estimation on a tread of the vehicle tire. The hub accelerometer signal is obtained from the vehicle CAN-bus.
(106) Variations in the present invention are possible in light of the description of it provided herein. While certain representative embodiments and details have been shown for the purpose of illustrating the subject invention, it will be apparent to those skilled in this art that various changes and modifications can be made therein without departing from the scope of the subject invention. It is, therefore, to be understood that changes can be made in the particular embodiments described which will be within the full intended scope of the invention as defined by the following appended claims.