首页|新能源汽车动力电池衰退机制与健康状态估计研究概述

新能源汽车动力电池衰退机制与健康状态估计研究概述

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锂离子电池作为新能源汽车的核心部件,准确、高效的衰退机制辨识与健康状态估计对于提升动力电池系统的运行可靠性、降低安全风险以及残值评估具有重要意义.随着新能源汽车智能网联化程度的不断提高及大数据分析手段的快速发展,基于数据驱动的动力电池健康状态估计得到了广泛关注.为系统梳理锂离子电池的衰退机制及健康状态估计研究最新进展,从以下两方面进行总结:在衰退机制方面,分别从电池的负极、正极等结构出发,阐述了不同内部副反应对电池老化的影响,并结合新能源汽车实际运行场景分析了强关联外部使用因素对电池衰退的主导作用;在健康状态估计方面,根据不同数据驱动算法的特点及侧重点对现有研究进行了分类概述,分析比较其优点、局限性与应用场景,并进一步讨论各类典型方法在现阶段实车应用的可行性.最后,面向新能源汽车的实际运行需求,对动力电池健康状态估计领域存在的挑战与发展方向进行了总结与展望.
Overview of Research on Degradation Mechanism and State of Health Estimation for Traction Battery in New Energy Vehicles
Lithium-ion batteries as the core component of new energy vehicles(NEVs),accurate and efficient degradation mechanism identification and state of health(SOH)estimation are of great significance for improving the operational reliability of traction battery systems,reducing safety risks and evaluating residual values.With the increasing degree of intelligent network connections for NEVs and the rapid development of big data analysis technology,data-driven based SOH estimation has gained widespread attention.In order to systematically sort out the latest progress in research on the decline mechanism and health state estimation of lithium-ion batteries,the following two aspects are summarized.Regarding the ageing mechanism,the effects of different internal side reactions on lithium-ion battery degradation are discussed based on the anode,cathode and other battery structures,and combined with the actual operation scenario of NEVs to analyze the dominant role of strongly associated external factors on battery degradation.As for the SOH diagnosis,an overview of existing research is categorized according to the characteristics and focus of different data-driven algorithms,their advantages,limitations and application scenarios are analyzed and compared,and further discussed the feasibility of typical methods in the current stage of real vehicle application.Finally,the challenges and development directions in the field of SOH estimation research are summarized and prospected for the actual operation requirements of NEVs.

new energy vehicletraction batterydegradation mechanismstate of healthdata-driven

张大禹、王震坡、刘鹏、林倪、张照生

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北京理工大学电动车辆国家工程研究中心 北京 100081

北京电动车辆协同创新中心 北京 100081

新能源汽车北京实验室 北京 100081

北京理工大学重庆创新中心 重庆 401120

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新能源汽车 动力电池 衰退机制 健康状态 数据驱动

2024

机械工程学报
中国机械工程学会

机械工程学报

CSTPCD北大核心
影响因子:1.362
ISSN:0577-6686
年,卷(期):2024.60(22)