数据库扫描
热失控
计算机科学
主成分分析
超参数
超参数优化
电池(电)
聚类分析
实时计算
人工智能
数据挖掘
支持向量机
量子力学
相关聚类
树冠聚类算法
物理
功率(物理)
作者
Da Li,Zhaosheng Zhang,Zhenpo Wang,Peng Liu,Zhicheng Liu,Ning Lin
出处
期刊:IEEE Journal of Emerging and Selected Topics in Power Electronics
[Institute of Electrical and Electronics Engineers]
日期:2023-02-01
卷期号:11 (1): 120-130
被引量:11
标识
DOI:10.1109/jestpe.2022.3153337
摘要
Hundreds of thermal-runaway-induced battery fire accidents have been occurring to real-world electric vehicles (EVs) in recent years, exposing life to danger and causing property losses. Timely and fast battery thermal runaway prognosis is essential but restricted by limited parameters and complex influencing factors during real-world operation of EVs, i.e., environment, driving behavior, and weather. To cope with the issue, several data-driven methods are combined, and the thermal runaway prognosis is realized by two steps, i.e., temperature prediction by the modified extreme gradient boosting (XGBoost) and then abnormality detection by the principal component analysis (PCA) and density-based spatial clustering of applications with noise (DBSCAN). The XGBoost is modified and trained by data of real-world EVs to couple the influencing factors during the real-world operation of EVs. For parameter optimization, the “pretraining and adjacent grid optimizing method” (P-AGOM) and the “adjacent grid optimizing method” (AGOM) are proposed to achieve locally optimal hyperparameters for XGBoost and DBSCAN. Verified results showcase that the XGBoost-PCA-DBSCAN achieves accurate 5-min-forward temperature prediction, and the mean square errors (mses) of four seasons are only 0.0729, 0.0594, 0.0747, and 0.0523, respectively. By modification of XGBoost, the mse of temperature prediction is reduced by 31.2%. In addition, the 35-min-forward thermal runaway prognosis by the XGBoost-PCA-DBSCAN will provide the driver sufficient response time to minimize the loss of life and property.
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