Interpretable Data-Driven Learning With Fast Ultrasonic Detection for Battery Health Estimation

被引:0
|
作者
Kailong Liu [1 ]
Yuhang Liu [1 ]
Qiao Peng [2 ]
Naxin Cui [1 ]
Chenghui Zhang [1 ]
机构
[1] the School of Control Science and Engineering, Shandong University
[2] the Information Technology, Analytics & Operations Group,Queen's University
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中图分类号
TM912 [蓄电池]; TB553 [超声控制与检测];
学科分类号
摘要
<正>Dear Editor,Health management is essential to ensure battery performance and safety, while data-driven learning system is a promising solution to enable efficient state of health(SoH) estimation of lithium-ion(Liion) batteries. However, the time-consuming signal data acquisition and the lack of interpretability of model still hinder its efficient deployment. Motivated by this, this letter proposes a novel and interpretable data-driven learning strategy through combining the benefits of explainable AI and non-destructive ultrasonic detection for battery SoH estimation. Specifically, after equipping battery with advanced ultrasonic sensor to promise fast real-time ultrasonic signal measurement, an interpretable data-driven learning strategy named generalized additive neural decision ensemble(GANDE) is designed to rapidly estimate battery SoH and explain the effects of the involved ultrasonic features of interest.
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页码:267 / 269
页数:3
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