Multi-model ensemble learning for battery state-of-health estimation:Recent advances and perspectives

被引:0
|
作者
Chuanping Lin [1 ,2 ]
Jun Xu [1 ,2 ]
Delong Jiang [1 ,3 ]
Jiayang Hou [1 ,2 ]
Ying Liang [1 ,2 ]
Zhongyue Zou [1 ,4 ]
Xuesong Mei [1 ,2 ]
机构
[1] State Key Laboratory for Manufacturing Systems Engineering, Xi'an Jiaotong University
[2] Shaanxi Key Laboratory of Intelligent Robots, School of Mechanical Engineering, Xi'an Jiaotong University
[3] Department of Electrical Engineering and Automation, Luoyang Institute of Science and Technology
[4] School of Mechanical Engineering, Hangzhou Dianzi
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中图分类号
TP181 [自动推理、机器学习]; TM912 [蓄电池];
学科分类号
摘要
The burgeoning market for lithium-ion batteries has stimulated a growing need for more reliable battery performance monitoring. Accurate state-of-health(SOH) estimation is critical for ensuring battery operational performance. Despite numerous data-driven methods reported in existing research for battery SOH estimation, these methods often exhibit inconsistent performance across different application scenarios. To address this issue and overcome the performance limitations of individual data-driven models,integrating multiple models for SOH estimation has received considerable attention. Ensemble learning(EL) typically leverages the strengths of multiple base models to achieve more robust and accurate outputs. However, the lack of a clear review of current research hinders the further development of ensemble methods in SOH estimation. Therefore, this paper comprehensively reviews multi-model ensemble learning methods for battery SOH estimation. First, existing ensemble methods are systematically categorized into 6 classes based on their combination strategies. Different realizations and underlying connections are meticulously analyzed for each category of EL methods, highlighting distinctions, innovations, and typical applications. Subsequently, these ensemble methods are comprehensively compared in terms of base models, combination strategies, and publication trends. Evaluations across 6 dimensions underscore the outstanding performance of stacking-based ensemble methods. Following this, these ensemble methods are further inspected from the perspectives of weighted ensemble and diversity, aiming to inspire potential approaches for enhancing ensemble performance. Moreover, addressing challenges such as base model selection, measuring model robustness and uncertainty, and interpretability of ensemble models in practical applications is emphasized. Finally, future research prospects are outlined, specifically noting that deep learning ensemble is poised to advance ensemble methods for battery SOH estimation. The convergence of advanced machine learning with ensemble learning is anticipated to yield valuable avenues for research. Accelerated research in ensemble learning holds promising prospects for achieving more accurate and reliable battery SOH estimation under real-world conditions.
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页码:739 / 759
页数:21
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