锂离子电池的概率健康状态及剩余使用寿命预测

A. Bracale, P. De Falco, L. P. D. Noia, R. Rizzo
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引用次数: 6

摘要

锂离子电池通常是为了达到卓越的技术和经济性能而运行的,但由于充电/放电特性的影响,它们会迅速退化。保持对电池实际容量的了解是实现目标而不引起意外约束的必要条件。本文从电池健康状态(SoH)和剩余使用寿命(RUL)的概率预测的角度出发,探讨了电池的预测问题。基于时间序列和分位数回归的两个概率模型,在不同的框架中开发,为此目的开发和比较。它们特别适合利用来自加速退化测试(ADTs)的数据。此外,提出了一个从概率预测中提取单个点值的专用程序,以使模型也适用于确定性场景。在实际公开数据上进行的数值实验证实了该建议的有效性,并与有关主题的文献中的相关基准进行了严格的比较。
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Probabilistic State of Health and Remaining Useful Life Prediction for Li-ion Batteries
Lithium-ion batteries are often operated to reach excellence in technical and economical performance, but they rapidly degrade as a consequence of charge/discharge profiles. Maintaining the knowledge of the actual capacity of the battery is mandatory to pursue the objectives without incurring into unexpected constraints. This paper addresses battery prognostic from the viewpoint of probabilistic prediction of the State of Health (SoH) and of the Remaining Useful Life (RUL) of the batteries. Two probabilistic models based on time series and quantile regression, each developed in a different framework, are developed and compared for this purpose. They are specifically suited up to exploit data coming from Accelerated Degradation Tests (ADTs). Moreover, a dedicated procedure to extract a single, point value from the probabilistic predictions is presented to let the models work also in deterministic scenarios. Numerical experiments conducted on actual public data confirm the validity of the proposal, within a rigorous comparison with relevant benchmarks taken from the literature on the topic.
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