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基于改进蜣螂算法优化的甲醇混合动力商用车能量管理策略

Energy management strategy for methanol hybrid commercial vehicles based on improved dung beetle algorithm optimization.

作者信息

Li Zhihao, Xiao Ping, Pan Jiabao, Pei Wenjun, Lv Aoning

机构信息

Anhui Province Key Laboratory of Intelligent Car Wire-Controlled Chassis System, Anhui Polytechnic University, Wuhu, China.

School of Mechanical and Automotive Engineering, Anhui Polytechnic University, Wuhu, China.

出版信息

PLoS One. 2025 Jan 2;20(1):e0313303. doi: 10.1371/journal.pone.0313303. eCollection 2025.

DOI:10.1371/journal.pone.0313303
PMID:39746017
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11695043/
Abstract

In order to solve the problem of poor adaptability and robustness of the rule-based energy management strategy (EMS) in hybrid commercial vehicles, leading to suboptimal vehicle economy, this paper proposes an improved dung beetle algorithm (DBO) optimized multi-fuzzy control EMS. First, the rule-based EMS is established by dividing the efficient working areas of the methanol engine and power battery. The Tent chaotic mapping is then used to integrate strategies of cosine, Lévy flight, and Cauchy Gaussian mutation, improving the DBO. This integration compensates for the traditional dung beetle algorithm's tendency to fall into local optima and enhances its global search capability. Subsequently, fuzzy controllers for the driving charging mode and hybrid driving mode are designed under this rule-based EMS. Finally, the improved DBO is used to obtain the optimal control of the fuzzy controller by taking the fuel consumption of the whole vehicle and the fluctuation change of the battery state of charge (SOC) as the optimization objectives. Compared to traditional rule-based energy management strategies, the optimized fuzzy control using the enhanced DBO continuously adjusts the torque distribution between the engine and motor based on the vehicle's real-time state, resulting in a 9.07% reduction in fuel consumption and a 3.43% decrease in battery SOC fluctuations.

摘要

为了解决混合动力商用车中基于规则的能量管理策略(EMS)适应性和鲁棒性差,导致车辆经济性欠佳的问题,本文提出一种改进的蜣螂算法(DBO)优化的多模糊控制EMS。首先,通过划分甲醇发动机和动力电池的高效工作区域来建立基于规则的EMS。然后利用帐篷混沌映射对余弦、莱维飞行和柯西高斯变异策略进行融合,对DBO进行改进。这种融合弥补了传统蜣螂算法易陷入局部最优的倾向,增强了其全局搜索能力。随后,在这种基于规则的EMS下设计驱动充电模式和混合动力模式的模糊控制器。最后,以整车油耗和电池荷电状态(SOC)的波动变化为优化目标,利用改进的DBO对模糊控制器进行优化控制。与传统基于规则的能量管理策略相比,采用增强型DBO优化的模糊控制根据车辆实时状态不断调整发动机和电机之间的转矩分配,使油耗降低了9.07%,电池SOC波动降低了3.43%。

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PLoS One. 2023 Jan 6;18(1):e0279572. doi: 10.1371/journal.pone.0279572. eCollection 2023.