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Battery Thermal- and Health-Constrained Energy Management for Hybrid Electric Bus Based on Soft Actor-Critic DRL Algorithm

机译:基于软演员 - 评论家DRL算法的混合动力电动总线电池热 - 和健康受限管理

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摘要

Energy management is critical to reducing the size and operating cost of hybrid energy systems, so as to expedite on-the-move electric energy technologies. This article proposes a novel knowledge-based, multiphysics-constrained energy management strategy for hybrid electric buses, with an emphasized consciousness of both thermal safety and degradation of onboard lithium-ion battery (LIB) system. Particularly, a multiconstrained least costly formulation is proposed by augmenting the overtemperature penalty and multistress-driven degradation cost of LIB into the existing indicators. Further, a soft actor-critic deep reinforcement learning strategy is innovatively exploited to make an intelligent balance over conflicting objectives and virtually optimize the power allocation with accelerated iterative convergence. The proposed strategy is tested under different road missions to validate its superiority over existing methods in terms of the converging effort, as well as the enforcement of LIB thermal safety and the reduction of overall driving cost.
机译:能源管理对于降低混合能源系统的尺寸和运营成本至关重要,以加快移动电能技术。本文提出了一种基于新颖的知识的多体学 - 受限的混合动力电动公共汽车的能量管理策略,具有强调锂离子电池(Lib)系统的热安全和降解的意识。特别地,通过增强LIB的过度惩罚和多级别驱动的降解成本来提出多元率最低昂贵的制剂。此外,柔软的演员 - 评论家的深度加强学习策略是创新的利用,在相互矛盾的目标上进行智能平衡,并且实际上优化了加速迭代收敛的功率分配。拟议的战略在不同的道路任务下进行了测试,以验证其在融合努力方面对现有方法的优势,以及利用LIB热安全和减少总驾驶费用。

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