Data-driven methods for early warning of battery thermal runaway: A review of multi-signal fusion and machine learning approaches
Jiedong Ye(Wuhan University of Technology), Gangfeng Tan(Wuhan University of Technology), Jianjie Kuang(Wuhan University of Technology), Chongjian Liu(Suizhou Central Hospital), Jingning Tang(Shandong Institute for Product Quality Inspection), Ri Li(University of British Columbia), Jianxun Huang(University of British Columbia)
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