Research on Energy Management Strategy of a Hybrid Commercial Vehicle Based on Deep Reinforcement Learning

IF 2.6 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC World Electric Vehicle Journal Pub Date : 2023-10-15 DOI:10.3390/wevj14100294
Jianguo Xi, Jingwei Ma, Tianyou Wang, Jianping Gao
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Abstract

Given the influence of the randomness of driving conditions on the energy management strategy of vehicles, deep reinforcement learning considering driving conditions prediction was proposed. A working condition prediction model based on the BP neural network was established, and the correction coefficient of vehicle demand torque was determined according to the working condition prediction results. An energy management strategy and deep reinforcement learning were integrated to build an energy management strategy with deep reinforcement learning based on driving condition prediction. Simulation experiments were conducted according to the actual collected working condition data. The experimental results show that the energy management strategy, i.e., deep reinforcement learning considering working condition prediction, has faster convergence speed and more vital self-learning ability, and the equivalent fuel consumption per 100 km under different driving conditions is 6.411 L/100 km, 6.327 L/100 km, and 6.388 L/100 km, respectively. Compared with the unimproved strategy, the fuel economy can be improved by 3.18%, 3.08%, and 2.83%. The research shows that the energy management strategy, the deep reinforcement learning based on driving condition prediction, is effective and adaptive.
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基于深度强化学习的混合动力商用车能量管理策略研究
针对驾驶条件随机性对车辆能量管理策略的影响,提出了考虑驾驶条件预测的深度强化学习方法。建立了基于BP神经网络的工况预测模型,根据工况预测结果确定了车辆需求转矩的修正系数。将能量管理策略与深度强化学习相结合,构建了基于驾驶状态预测的深度强化学习能量管理策略。根据实际采集的工况数据进行了仿真实验。实验结果表明,考虑工况预测的深度强化学习能量管理策略具有更快的收敛速度和更重要的自学习能力,不同工况下的百公里当量油耗分别为6.411 L/100 km、6.327 L/100 km和6.388 L/100 km。与未改进策略相比,燃油经济性可分别提高3.18%、3.08%和2.83%。研究表明,基于驾驶状态预测的深度强化学习能量管理策略是有效的、自适应的。
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来源期刊
World Electric Vehicle Journal
World Electric Vehicle Journal Engineering-Automotive Engineering
CiteScore
4.50
自引率
8.70%
发文量
196
审稿时长
8 weeks
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