TIRE LIFT-OFF PROPENSITY PREDICTIVE SYSTEM AND METHOD
20170320494 · 2017-11-09
Inventors
- Kanwar Bharat Singh (Lorenztweiler, LU)
- Anthony William PARSONS (Domeldange, LU)
- Marc Engel (Bissen, LU)
Cpc classification
B60C23/06
PERFORMING OPERATIONS; TRANSPORTING
B60C2019/004
PERFORMING OPERATIONS; TRANSPORTING
B60C19/00
PERFORMING OPERATIONS; TRANSPORTING
B60C23/0408
PERFORMING OPERATIONS; TRANSPORTING
B60C11/243
PERFORMING OPERATIONS; TRANSPORTING
B60W30/04
PERFORMING OPERATIONS; TRANSPORTING
International classification
Abstract
A system for predicting tire lift-off propensity of a vehicle tire includes a vehicle tire-affixed tire-identification device for providing a tire-specific identification, multiple tire-affixed sensors mounted to the tire measuring tire-specific parameters and generating tire-specific parameter information, one or more vehicle-affixed sensor(s) mounted to the vehicle to measure vehicle speed and a lift-off propensity estimator generating a lift-off propensity for the vehicle tire from a database containing experimentally-derived, tire-ID specific, lift-off propensities correlated with measured tire-specific parameter information and vehicle speeds.
Claims
1. A lift-off propensity predictive system comprising: a vehicle supported by at least one vehicle tire mounted to a hub, the vehicle tire including a tire cavity and a ground-engaging tread, and the tire including a plurality of tire-specific measurable parameters; a plurality of tire-affixed sensors mounted to the tire operably measuring the tire-specific parameters and generating tire-specific parameter information; a tire-affixed tire-identification device for providing a tire-specific identification; at least one vehicle-affixed sensor mounted to the vehicle operably measuring vehicle speed; a lift-off propensity estimator operable to generate a lift-off propensity for the one vehicle tire, the lift-off propensity being correlated to a predicted tire contact patch area, wherein the predicted tire contact patch area is calculated from the tire-specific parameter information, the tire-specific identification and the vehicle speed.
2. The lift-off propensity predictive system for a tire according to claim 1, wherein the tire-specific parameter information is from the group: a load estimation for the one vehicle tire; air pressure within a cavity of the one vehicle tire; and a wear estimation for a tread region of the one vehicle tire.
3. The lift-off propensity predictive system according to claim 2, wherein the load estimation operably calculates a load estimation based upon a vehicle-based hub accelerometer signal.
4. The lift-off propensity predictive system of claim 1, wherein the lift-off propensity substantially continuously updated during an movement of the vehicle.
5. The lift-off propensity predictive system of claim 4, wherein the updated lift-off propensity is operably utilized in at least one control system of the vehicle.
6. The lift-off propensity predictive system of claim 5, wherein the at least one control system of the vehicle comprises vehicle speed control.
7. The lift-off propensity predictive system of claim 1, wherein the lift-off propensity is correlated to the predicted tire contact patch area through a linear relationship between the lift-off propensity and the predicted tire contact patch.
8. The lift-off propensity predictive system of claim 1, wherein the predicted tire contact patch area and the lift-off propensity are stored in a database.
9. The lift-off propensity predictive system of claim 1, wherein the predicted tire contact patch area is calculated using a regression model.
10. The lift-off propensity predictive system of claim 9, wherein the predicted tire contact patch area is calculated using a non-linear regression model.
11. The lift-off propensity predictive system of claim 10, wherein the predicted tire contact patch area is calculated using a random forest regression algorithm.
12. The lift-off propensity predictive system of claim 1, further comprising means for measuring a water depth on a road traveled by the vehicle, wherein the calculation of the predicted tire contact patch area includes the measured water depth.
13. The lift-off propensity predictive system of claim 1, further comprising means to generate a lift off propensity warning to multiple vehicles.
14. A method of making a lift-off propensity estimation comprising: mounting at least one vehicle tire to a vehicle, the vehicle tire having a tire cavity and a ground-engaging tread, and the tire having a plurality of tire-specific measurable parameters; affixing to the one vehicle tire a tire identification device providing a tire-specific identification; affixing at least one vehicle-affixed sensor to the vehicle operably measuring vehicle speed; mounting a plurality of tire-affixed sensors to the tire operably measuring the tire-specific parameters to generate tire-specific parameter information; inputting the tire-specific parameter information and the tire-specific identification and the vehicle speed into a lift-off propensity estimator; calculating a predicted tire contact patch area from the tire-specific parameter information, the tire-specific identification and the vehicle speed with the lift-off propensity estimator; and correlating the predicted tire contact patch area to a lift-off propensity for the one vehicle tire.
15. The method according to claim 14, wherein the tire-specific parameter information includes a load estimation for the one vehicle tire, air pressure within a cavity of the one vehicle tire and a wear estimation for a tread region of the one vehicle tire.
16. The method according to claim 14, further comprising utilizing a vehicle-based accelerometer signal to generate the load estimation for the one vehicle tire.
17. The method according to claim 14, wherein the lift-off propensity is correlated to the predicted tire contact patch area through a linear relationship between the lift-off propensity and the predicted tire contact patch.
18. The method according to claim 14, wherein the predicted tire contact patch area is calculated using a regression model.
19. The method according to claim 14, further comprising measuring a water depth on a road traveled by the vehicle, wherein the calculation of the predicted tire contact patch area includes the measured water depth.
20. The method according to claim 14, further comprising generating a lift off propensity warning to multiple vehicles.
Description
BRIEF DESCRIPTION OF THE DRAWINGS
[0030] The invention will be described by way of example and with reference to the accompanying drawings in which:
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[0041] Similar numerals refer to similar parts throughout the drawings.
DETAILED DESCRIPTION OF THE INVENTION
[0042] Referring to
[0043] With reference to
[0044] The contact area of the tire is inversely proportional to the lift-off tendency of the tire. That is, the greater the contact area of the tire is against the road surface, the lower the lift-off tendency of the tire from the road surface. “Lift-off tendency” is most commonly experienced and exacerbated when a material or liquid (hydroplaning) is present between the tire and the road surface resulting in a reduction of contact area between the tire the road surface. From the test result graphs of
[0045] In
[0046] Tread depth or wear state may be determined directly from tire tread-mounted sensors or from an adaptive indirect tread wear such as the wear estimation method found in U.S. Pat. No. 9,050,864, entitled TIRE WEAR STATE ESTIMATION SYSTEM AND METHOD, owned by the same Assignee as the present application and hereby incorporated by reference in its entirety herein. The wear estimation method of the co-pending application does so “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 the hub acceleration signal 30 which is accessible via the vehicle CAN bus 28 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.
[0047] From tire-based sensors packaged within the TPMS module 24, tire ID 38, tire cavity inflation pressure 36, and tire load measurement 32 are derived and transmitted for processing to the tire lift-off propensity estimator 42. The load 32 is estimated from a load estimation method 34 incorporating a dynamic tire load estimator configured as presented in U.S. Pat. No. 9,222,854, entitled VEHICLE DYNAMIC LOAD ESTIMATION SYSTEM AND METHOD, owned by the same Assignee as the present application and hereby incorporated herein in its entirety. The tire-based inputs of tire ID, pressure and load constitute tire-based information inputs into the estimator 42, which employs a tire lift-off propensity prediction algorithm.
[0048] The estimator 42 includes a tire-specific database experimentally derived and based upon a tire ID. From the tire ID, the type of tire construction is known. The tire ID obtained from the TPMS module 24 allows the estimator to identify the tire and recognize the specific type of construction. The reference database utilizes the pressure 36, load estimation 32, vehicle speed 31 and indirect wear estimation 40 to determine the contact patch for the tire. From the contact patch area tire lift-off propensity is concluded by the estimator 42. Should the tire lift-off propensity exceed a preset threshold limit, a warning 44 is generated to the driver of the vehicle and/or the vehicle controller. The driver, being warned of a high lift-off propensity, may take remedial action by reducing the vehicle speed. The controller can redistribute the force to a tire with a larger contact patch area (higher road holding capacity) and thereby mitigate the propensity for tire lift-off. By calculating lift-off propensity for each tire, the controller can manage the distribution of force between tires and thereby reduce the potential for lift-off.
[0049] Turning to
[0050] A preferred non-linear regression model 46A is shown in
[0051] Once the regression model 46 generates the predicted contact patch area 50, the estimator 42 correlates the predicted contact patch area to the lift off propensity 66. Turning to
[0052] Information regarding lift-off propensity or hydroplaning may be sensed in the vehicle 10 as a reference vehicle, with the lift off propensity warning 44 being transmitted to the drivers of other vehicles. For example, the reference vehicle 10 is equipped with an electronic stability program (ESP), which is in electronic communication with the vehicle CAN bus 28 as known to those skilled in the art. As shown in
[0053] Referring now to
[0054] From the foregoing, it will be appreciated that the subject system and method achieves a tire lift-off propensity prediction which is both accurate and tire-specific. A vehicle tire-affixed tire-identification device within the module 24 provides a tire-specific identification. Multiple tire-affixed sensors within the module 24 are mounted to the tire to measure and provide certain tire-specific parameters (pressure, load, wear state). Tire-specific parameter information (wear state, pressure, load) are inputs with vehicle-based sensor derived vehicle speed into the estimator 42. The tire lift-off propensity estimator 42 fits the inputs into a database that is based upon tire ID recognition. The estimator 42 generates a lift-off propensity for the vehicle tire based on the recognized tire ID. Lift-off propensities are thereby concluded from a correlation of the specific tire-based parameter information and measured vehicle speeds with the recognized Tire ID.
[0055] The tire-specific parameter information combines a load estimation for the vehicle tire, air pressure within a cavity of the vehicle tire and a wear estimation for a tread region of the vehicle tire as inputs into the estimator 42. The lift-off propensity predictive system continuously updates the lift-off propensities of the vehicle tires during movement of the vehicle and uses the updated lift-off propensities in one or more control system(s) of the vehicle such as driver initiated vehicle speed control and/or vehicle controller-driven force distribution between vehicle tires.
[0056] 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.