Learning-based hierarchical cooperative eco-driving with traffic flow prediction for hybrid electric vehicles

IF 9.9 1区 工程技术 Q1 ENERGY & FUELS
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Abstract

The integration of autonomous driving and hybrid electric vehicle technologies presents a promising solution for achieving environmental sustainability. This paper introduces an innovative energy-efficient driving strategy for hybrid electric vehicles that incorporates real-time traffic flow prediction. The study delves into the impact of both lateral and longitudinal vehicle maneuvers on energy consumption within dynamic traffic environments, offering novel insights into optimizing energy utilization. Firstly, a multi-lane traffic flow state rolling predictor is constructed based on the Hankel dynamic mode decomposition algorithm. Subsequently, a vehicle longitudinal and lateral coordinated control strategy is established by integrating the prioritized experience replay double deep Q-network algorithm. Finally, a novel energy management strategy is proposed that leverages Simulink dynamic model and the deep deterministic policy gradient algorithm to address the vehicle dynamic decision-making planning results. Within a hierarchical cooperative optimization framework, this research comprehensively considers safety, comfort, traffic efficiency, and fuel economy. By introducing a novel hierarchical collaborative ecological driving framework, we have achieved a substantial improvement in environmental sustainability, with traffic efficiency increasing by 10.27%-14.41% and fuel economy rising by 9.44%-10.47%. Hardware-in-the-loop validation has confirmed the proposed approach’s real-time capabilities and promising practical applications.

混合动力电动汽车基于学习的分层协同生态驾驶与交通流预测
自动驾驶与混合动力电动汽车技术的融合为实现环境可持续性提供了一种前景广阔的解决方案。本文介绍了一种结合实时交通流预测的混合动力电动汽车创新节能驾驶策略。研究深入探讨了动态交通环境中车辆横向和纵向机动对能耗的影响,为优化能源利用提供了新的见解。首先,基于汉克尔动态模式分解算法构建了多车道交通流状态滚动预测器。随后,通过整合优先级经验重放双深度 Q 网络算法,建立了车辆纵向和横向协调控制策略。最后,利用 Simulink 动态模型和深度确定性策略梯度算法,提出了一种新型能源管理策略,以解决车辆动态决策规划结果问题。在分层协同优化框架内,本研究综合考虑了安全性、舒适性、交通效率和燃油经济性。通过引入新颖的分层协同生态驾驶框架,我们实现了环境可持续性的大幅改善,交通效率提高了 10.27%-14.41%,燃油经济性提高了 9.44%-10.47%。硬件在环验证证实了所提出方法的实时能力和良好的实际应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Energy Conversion and Management
Energy Conversion and Management 工程技术-力学
CiteScore
19.00
自引率
11.50%
发文量
1304
审稿时长
17 days
期刊介绍: The journal Energy Conversion and Management provides a forum for publishing original contributions and comprehensive technical review articles of interdisciplinary and original research on all important energy topics. The topics considered include energy generation, utilization, conversion, storage, transmission, conservation, management and sustainability. These topics typically involve various types of energy such as mechanical, thermal, nuclear, chemical, electromagnetic, magnetic and electric. These energy types cover all known energy resources, including renewable resources (e.g., solar, bio, hydro, wind, geothermal and ocean energy), fossil fuels and nuclear resources.
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