HEV Energy Prediction Management Based on Future Road Condition 2023-01-0899
In order to further improve the vehicle economy of hybrid vehicles, this paper first discusses the existing hybrid energy management strategies, and analyzes the shortcomings of the existing strategies considering the actual road conditions, and points out the importance of future road condition information to energy management. Then, an energy prediction management strategy by acquiring future road condition information is proposed. The main work of this paper is centered on this strategy. This strategy is to use information about future working conditions provided by navigation and other sensing systems and predict energy consumption in future working conditions, so as to optimize the energy management strategy between engine and motor. The strategy is mainly composed of four parts: future information acquisition, future energy consumption prediction, energy management target calculation, and control target execution. Among them, future information acquisition is to obtain future road condition information through perception systems such as navigation and V2X; future energy consumption prediction is to estimate the energy demand in the future vehicle driving direction based on the future information; The energy management target calculation is to plan the energy distribution management method in advance with the goal of optimizing the economy; the control target execution is that each assembly component performs corresponding actions according to the energy distribution requirements. Finally, this paper takes the powertrain of a hybrid vehicle as the carrier, and conducts a powertrain bench test by simulating road conditions. The results show that the proposed HEV energy prediction management method based on future road condition information can realize the optimal allocation and management of energy by predicting the energy demand in the future driving direction on the basis of the existing control strategy. Ultimately, the vehicle economy can be further improved without changing driving habits.
Citation: Zhao, H., Zhang, Q., Yang, F., Jiaming, L. et al., "HEV Energy Prediction Management Based on Future Road Condition," SAE Technical Paper 2023-01-0899, 2023, https://doi.org/10.4271/2023-01-0899. Download Citation
Author(s):
Hui Chao Zhao, Qiang Zhang, Fang Yang, Liu Jiaming, Jinlong Cui, Yuanke Guo, Haitao Huo, Qi Zhang, Yangyang Song
Affiliated:
China FAW Group Corporation
Pages: 8
Event:
WCX SAE World Congress Experience
ISSN:
0148-7191
e-ISSN:
2688-3627
Related Topics:
Roads and highways
Hybrid electric vehicles
Energy consumption
Engines
SAE MOBILUS
Subscribers can view annotate, and download all of SAE's content.
Learn More »