Control system for hybrid vehicles with high degree of hybridization
IPC분류정보
국가/구분
United States(US) Patent
등록
국제특허분류(IPC7판)
B60W-020/00
B60W-050/06
B60W-010/10
B60W-040/02
B60W-050/00
B60W-010/06
B60W-010/26
B60W-020/15
B60W-020/12
B60W-050/14
출원번호
US-0255091
(2014-04-17)
등록번호
US-9751521
(2017-09-05)
발명자
/ 주소
Schwartz, David E.
Garner, Sean
Saha, Bhaskar
Barber, Simon
출원인 / 주소
PALO ALTO RESEARCH CENTER INCORPORATED
대리인 / 주소
Hollingsworth Davis, LLC
인용정보
피인용 횟수 :
2인용 특허 :
50
초록▼
Systems and methods for controlling and operating a hybrid vehicle having a high degree of hybridization are disclosed. A power flow control system predicts vehicle power demand to drive the hybrid vehicle based on changing conditions during operation of the hybrid vehicle. The power flow control sy
Systems and methods for controlling and operating a hybrid vehicle having a high degree of hybridization are disclosed. A power flow control system predicts vehicle power demand to drive the hybrid vehicle based on changing conditions during operation of the hybrid vehicle. The power flow control system controls the power flow so as to provide power to drive the hybrid vehicle based on the predicted vehicle power demand, wherein the predicted vehicle power demand is greater than a maximum.
대표청구항▼
1. A hybrid vehicle, comprising: a fuel consuming engine configured to supply power to drive the hybrid vehicle;an energy storage device disposed within the hybrid vehicle, the energy storage device configured to supply power to drive the hybrid vehicle;a prediction processor configured to predict p
1. A hybrid vehicle, comprising: a fuel consuming engine configured to supply power to drive the hybrid vehicle;an energy storage device disposed within the hybrid vehicle, the energy storage device configured to supply power to drive the hybrid vehicle;a prediction processor configured to predict power demand to drive the hybrid vehicle based on changing conditions during operation of the hybrid vehicle, the prediction processor configured to: use a degradation model to predict degradation of one or more hybrid vehicle components of the fuel consuming engine, drive train, movement system, and/or charging system of the hybrid vehicle; andrevise the degradation model based on sensed changes in a condition of the one or more hybrid vehicle components;a drive train coupled to cause movement of the hybrid vehicle;a controller configured to automatically control power flow between at least one of: the engine and the drive train,the energy storage device and the drive train, andthe engine and the energy storage device, so as to provide the power to drive the hybrid vehicle based at least in part on the predicted power demand and on the degradation model, wherein the power demand to drive the hybrid vehicle is greater than a maximum power available from the engine at a point in time during operation of the hybrid vehicle; anda driver interface configured to: enable a driver to enter destination or route information;determine two or more proposed alternate routes based on the destination or route information;display the two or more or more proposed alternate routes;receive drive parameter rank information from the driver for two or more of a time delay in reaching the destination, an increase in fuel consumption, an increase in vehicle emissions, and fuel dollars saved from the driver; andidentify one or more routes from the proposed alternate routes based on the driver parameter rank information received from the driver. 2. The hybrid vehicle of claim 1, wherein the energy storage device comprises at least one of: a flywheel;a battery; anda capacitor. 3. The hybrid vehicle of claim 1, wherein the changing conditions include one or more of: sensed conditions external to the hybrid vehicle;sensed conditions of the hybrid vehicle;predicted changes in one or more hybrid vehicle components;predicted conditions external to the hybrid vehicle;driver-specified conditions;energy usage from the energy storage device;energy usage by the fuel consuming enginehistorical data;predicted destination; andpredicted route. 4. The hybrid vehicle of claim 1, further comprising one or more sensors coupled to the prediction processor, wherein the one or more sensors are configured to sense one or more of the changing conditions and the prediction processor is configured to predict the power demand to drive the hybrid vehicle based on the sensed conditions. 5. The hybrid vehicle of claim 1, wherein the driver interface is configured to: enable a driver to enter destination or route information;display one or more proposed alternate routes based on real-time conditions;display at least one drive parameter associated with each of the one or more proposed alternate routes. 6. The hybrid vehicle of claim 1, wherein the driver interface is configured to: enable a driver to enter a selection between a first route that would cause a time delay in reaching the destination and a second route that would cause at least one of an increase in fuel consumption compared to the first route and an increase in vehicle emissions compared to the first route; andwherein the prediction processor is configured to use the selection to predict the power demand. 7. A hybrid vehicle control system, comprising: a prediction processor configured to predict power demand to drive a hybrid vehicle based on changing conditions during operation of the hybrid vehicle, the hybrid vehicle comprising a fuel consuming engine and an energy storage device coupled to a drive train of the hybrid vehicle, the prediction processor configured to: use a degradation model to predict degradation of one or more hybrid vehicle components of the fuel consuming engine, drive train, movement system, and/or charging system of the hybrid vehicle; andrevise the degradation model based on sensed changes in a condition of the one or more hybrid vehicle components; anda controller configured to automatically control power flow between at least one of: the engine and the drive train, the energy storage device and the drive train, andthe engine and the energy storage device, so as to provide the power to drive the hybrid vehicle based at least in part on the predicted power demand and on the degradation model, wherein the power demand to drive the hybrid vehicle is greater than a maximum power available from the engine at a point in time during operation of the hybrid vehicle; anda driver interface configured to: enable a driver to enter destination or route information; determine two or more proposed alternate routes based on the destination or route information; display the two or more or more proposed alternate routes;receive from the driver drive parameter rank information for two or more of a time delay in reaching the destination, an increase in fuel consumption, an increase in vehicle emissions, and fuel dollars saved from the driver; andidentify one or more routes from the proposed alternate routes based on the driver parameter rank information received from the driver. 8. The hybrid vehicle control system of claim 7, wherein the controller is further configured to control regenerative power flow to the energy storage device. 9. The hybrid vehicle control system of claim 7, wherein: the prediction processor is configured to predict one or more conditions external to the hybrid vehicle, the one or more external conditions including traffic, weather, road conditions and traffic accidents; andthe controller is configured to control power flow from the engine and the energy storage device based on predictions of the one or more external conditions. 10. The hybrid vehicle control system of claim 7, wherein the prediction processor is configured to: collect at least one of hybrid vehicle-specific and driver-specific historical data;predict a route based on the historical data; anddetermine a drive parameter based on the predicted route, wherein the at least one drive parameter is predicted based on the predicted power demand and predicted available power associated with the predicted route, and the drive parameter includes at least one of time to destination, emissions to destination, and fuel consumption to destination associated with the predicted route. 11. The hybrid vehicle control system of claim 7, wherein the prediction processor is configured to predict a route-specific hybrid vehicle power demand associated with each of multiple potential routes, wherein the route-specific hybrid vehicle power demand is based on one or more of weather, component degradation, predicted traffic conditions, driver-specified constraints on vehicle emissions, driver-specified hybrid vehicle behavior, driver-specified constraints on arrival time at the destination, driver-specified constraints on fuel consumption. 12. The hybrid vehicle control system of claim 7, wherein the prediction processor is configured to predict the hybrid vehicle power demand using one or more of: a Monte Carlo algorithm in a model-predictive control framework;stochastic programming;an adaptive optimization control algorithm, one or more parameters of the adaptive optimization control algorithm revised based on real-time data; andan autoregressive model configured to account for differences in predicted and actual time evolution of traffic. 13. The hybrid vehicle control system of claim 7, further comprising one or more sensors coupled to the prediction processor, wherein the one or more sensors are configured to sense at least one of a condition of the hybrid vehicle and a condition external to the hybrid vehicle. 14. A computer implemented method, comprising: predicting, in a prediction processor, hybrid vehicle power demand to drive a hybrid vehicle by a fuel consuming engine and an energy storage device based on changing conditions during operation of the hybrid vehicle, the predicting comprising: predicting degradation of one or more hybrid vehicle components of the fuel consuming engine, drive train, movement system, and/or charging system of the hybrid vehicle using a degradation model; andrevising the degradation model based on sensed changes in a condition of the one or more hybrid vehicle components;controlling, in a control processor, the power flow so as to provide power to drive the hybrid vehicle based on the predicted hybrid vehicle power demand and on an output of the degradation model, wherein the predicted hybrid vehicle power demand is greater than a maximum power available from the engine at a point in time during operation of the hybrid vehicle;enabling a driver to enter destination or route information on a driver interface;determining two or more proposed alternate routes based on the destination or route information;displaying the two or more or more proposed alternate routes on the driver interface;receiving drive parameter rank information from the driver for two or more of a time delay in reaching the destination, an increase in fuel consumption, an increase in vehicle emissions, and fuel dollars saved from the driver; andidentifying one or more routes from the proposed alternate routes based on the driver parameter rank information received from the driver. 15. The method of claim 14, wherein predicting the hybrid vehicle power demand based on changing conditions comprises predicting based on one or more of: sensed conditions of the hybrid vehicle;sensed conditions external to the hybrid vehicle;a degradation model for hybrid vehicle conditions;driver-specified conditions; andinformation stored in a historical database. 16. The method of claim 14, comprising: identifying one or more alternate routes to a destination;predicting a route-specific hybrid vehicle power demand associated with each of the one or more alternate routes;determining at least one drive parameter associated with each of the alternate routes, the at least one drive parameter comprising one or more of time to destination, emissions to destination, and fuel consumption to destination. 17. The method of claim 14, wherein predicting the hybrid vehicle power demand comprises predicting based on the one or more sensed conditions of the hybrid vehicle and one or more sensed conditions external to the hybrid vehicle. 18. The method of claim 14, wherein predicting the hybrid vehicle power demand comprises predicting based on the one or more external conditions transmitted from a location physically separate and remote from the hybrid vehicle. 19. The method of claim 18, wherein the one or more external conditions include at least one crowd-sourced external condition.
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