锂离子电池是应用最广泛的储能装置,准确预测剩余使用寿命(RUL)对其可靠运行和事故预防至关重要。本文通过对近十年相关论文的客观筛选和统计,深入研究机器学习算法预测RUL的发展趋势,分析研究核心,寻找未来的改进方向。本文还探讨了使用 RUL 预测结果延长锂离子电池寿命的可能性。在 380 篇相关论文中首次确定了用于 RUL 预测的十种最常用的 ML 算法。然后介绍了 RUL 预测的一般流程,并深入介绍了 RUL 预测中四种最常用的信号预处理技术。以统一的格式,按时间顺序首次给出了常用ML算法的研究核心。还从精度和特性等方面对算法进行了综合比较,进一步展望了改进早期预测、局部再生建模、物理信息融合、广义迁移学习和硬件实现等新颖和通用的改进方向或机会。最后总结了延长电池寿命的方法,展望了以RUL作为延长电池寿命指标的可行性。未来可以根据在线准确的RUL预测结果优化充电配置文件服务次数,从而延长电池寿命。

Lithium-ion batteries are the most widely used energy storage devices, for which the accurate prediction of the remaining useful life (RUL) is crucial to their reliable operation and accident prevention. This work thoroughly investigates the developmental trend of RUL prediction with machine learning (ML) algorithms based on the objective screening and statistics of related papers over the past decade to analyze the research core and find future improvement directions. The possibility of extending lithium-ion battery lifetime using RUL prediction results is also explored in this paper. The ten most used ML algorithms for RUL prediction are first identified in 380 relevant papers. Then the general flow of RUL prediction and an in-depth introduction to the four most used signal pre-processing techniques in RUL prediction are presented. The research core of common ML algorithms is given first time in a uniform format in chronological order. The algorithms are also compared from aspects of accuracy and characteristics comprehensively, and the novel and general improvement directions or opportunities including improvement in early prediction, local regeneration modeling, physical information fusion, generalized transfer learning, and hardware implementation are further outlooked. Finally, the methods of battery lifetime extension are summarized, and the feasibility of using RUL as an indicator for extending battery lifetime is outlooked. Battery lifetime can be extended by optimizing the charging profile serval times according to the accurate RUL prediction results online in the future. This paper aims to give inspiration to the future improvement of ML algorithms in battery RUL prediction and lifetime extension strategy.