Optimized energy management for plug-in hybrid vehicles with predicted driving cycles1

Author:

Gao Jun12,Peng Zhiyuan3,Cao Qiang1,Zhang Jie1

Affiliation:

1. The School of Intelligent Manufacturing and Automobile, Chongqing College of Electronic Engineering, Chongqing, China

2. School of Computer Science and Technology, Chongqing University of Posts and Telecommunications, Chongqing, China

3. The Department of Chongqing Changan New Energy Vehicle Technology Ltd., Chongqing, China

Abstract

The traditional rule-based energy management strategy for plug-in hybrid vehicles has issues, such as difficulty in online correction and limited online optimization capabilities. In addition, the global optimization energy management strategy cannot be applied online or in real-time. Considering the above difficulties, this study proposes a real-time optimization energy management strategy based on the Markov chain for driving condition prediction and online optimization with the minimum principle. To verify the proposed control strategy, the plug-in hybrid vehicle dynamics model, driving condition prediction model, and online optimization control model were first established. The initial value of the battery state of charge was set to 0.4 under the UDDS (Urban Dynamometer Driving Schedule) standard cycle. The simulation results showed that the comprehensive fuel consumption cost was 1.66 yuan, which was 8.28% better than the energy economy of the traditional rule-based energy management strategy. At the same time, a complete vehicle test was also conducted based on a sample vehicle test platform. The experimental results indicated that the energy management strategy proposed herein exhibits better fuel economy compared to that exhibited by the traditional rule-based energy management strategy. Simulations and experiments have verified the effectiveness of the proposed control strategy in this study.

Publisher

IOS Press

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