基于机器学习的锂离子电池健康状态评估综述:数据、特征、算法和未来挑战

IF 16.3 1区 工程技术 Q1 ENERGY & FUELS
Yaxuan Wang , Shilong Guo , Yue Cui , Liang Deng , Lei Zhao , Junfu Li , Zhenbo Wang
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引用次数: 0

摘要

锂离子电池广泛应用于电动汽车和储能系统,可靠的健康状态(SOH)评估对于确保运行安全和生命周期管理至关重要。近年来,由于机器学习能够从数据中学习复杂的退化模式,机器学习(ML)已成为电池SOH估计的强大数据驱动工具。本文系统地研究了完整的基于ml的SOH估计工作流程,首先概述了测量的、公共的和合成的数据集以及常用的预处理技术。然后重点介绍了特征工程,分析了从电压、电流、温度、增量容量(IC)曲线和高级传感器数据中提取健康指标的方法,以及提高模型效率和鲁棒性的特征选择方法。在此基础上,评估各种ML算法的准确性、泛化、实际部署和其他关键属性。最后,本文讨论了当前面临的挑战,如数据稀缺性、领域可转移性和物理一致性,并强调了未来的发展方向,包括基于物理的学习和混合数据模型融合。这项工作为开发智能、可靠和可解释的电池健康估计系统提供了全面的参考和前瞻性的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comprehensive review of machine learning-based state of health estimation for lithium-ion batteries: data, features, algorithms, and future challenges
Lithium-ion batteries are widely used in electric vehicles and energy storage systems, where reliable state of health (SOH) estimation is critical to ensure operational safety and lifecycle management. In recent years, machine learning (ML) has emerged as a powerful data-driven tool for battery SOH estimation due to its capability in learning complex degradation patterns from data. This review systematically examines the full ML-based SOH estimation workflow, beginning with an overview of measured, public, and synthetic datasets and common preprocessing techniques. The review then emphasizes feature engineering, analyzing the extraction of health indicators from voltage, current, temperature, incremental capacity (IC) curves, and advanced sensor data, as well as feature selection methods that improve model efficiency and robustness. On this basis, various ML algorithms are evaluated in terms of accuracy, generalization, practical deployment, and other key attributes. Finally, the review discusses ongoing challenges such as data scarcity, domain transferability, and physical consistency, and highlights future directions including physics-informed learning and hybrid data–model fusion. This work offers a comprehensive reference and forward-looking insight into the development of intelligent, reliable, and interpretable battery health estimation systems.
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来源期刊
Renewable and Sustainable Energy Reviews
Renewable and Sustainable Energy Reviews 工程技术-能源与燃料
CiteScore
31.20
自引率
5.70%
发文量
1055
审稿时长
62 days
期刊介绍: The mission of Renewable and Sustainable Energy Reviews is to disseminate the most compelling and pertinent critical insights in renewable and sustainable energy, fostering collaboration among the research community, private sector, and policy and decision makers. The journal aims to exchange challenges, solutions, innovative concepts, and technologies, contributing to sustainable development, the transition to a low-carbon future, and the attainment of emissions targets outlined by the United Nations Framework Convention on Climate Change. Renewable and Sustainable Energy Reviews publishes a diverse range of content, including review papers, original research, case studies, and analyses of new technologies, all featuring a substantial review component such as critique, comparison, or analysis. Introducing a distinctive paper type, Expert Insights, the journal presents commissioned mini-reviews authored by field leaders, addressing topics of significant interest. Case studies undergo consideration only if they showcase the work's applicability to other regions or contribute valuable insights to the broader field of renewable and sustainable energy. Notably, a bibliographic or literature review lacking critical analysis is deemed unsuitable for publication.
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