Probabilistic machine learning for battery health diagnostics and prognostics—review and perspectives

Adam Thelen, Xun Huan, Noah Paulson, Simona Onori, Zhen Hu, Chao Hu
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Abstract

Diagnosing lithium-ion battery health and predicting future degradation is essential for driving design improvements in the laboratory and ensuring safe and reliable operation over a product’s expected lifetime. However, accurate battery health diagnostics and prognostics is challenging due to the unavoidable influence of cell-to-cell manufacturing variability and time-varying operating circumstances experienced in the field. Machine learning approaches informed by simulation, experiment, and field data show enormous promise to predict the evolution of battery health with use; however, until recently, the research community has focused on deterministic modeling methods, largely ignoring the cell-to-cell performance and aging variability inherent to all batteries. To truly make informed decisions regarding battery design in the lab or control strategies for the field, it is critical to characterize the uncertainty in a model’s predictions. After providing an overview of lithium-ion battery degradation, this paper reviews the current state-of-the-art probabilistic machine learning models for health diagnostics and prognostics. Details of the various methods, their advantages, and limitations are discussed in detail with a primary focus on probabilistic machine learning and uncertainty quantification. Last, future trends and opportunities for research and development are discussed.

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用于电池健康诊断和预报的概率机器学习--回顾与展望
诊断锂离子电池的健康状况并预测未来的衰减,对于推动实验室的设计改进和确保产品在预期寿命内安全可靠地运行至关重要。然而,由于电池制造过程中不可避免的电池间差异和现场操作环境的时变影响,准确的电池健康诊断和预报具有挑战性。以仿真、实验和现场数据为基础的机器学习方法在预测电池使用过程中的健康状况变化方面大有可为;然而,直到最近,研究界仍将重点放在确定性建模方法上,在很大程度上忽略了所有电池固有的电池间性能和老化变异性。要真正就实验室的电池设计或现场的控制策略做出明智的决策,关键是要确定模型预测的不确定性。在概述了锂离子电池降解问题后,本文回顾了当前最先进的健康诊断和预后预测概率机器学习模型。本文详细讨论了各种方法的细节、优势和局限性,重点关注概率机器学习和不确定性量化。最后,还讨论了研究与开发的未来趋势和机遇。
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