Lithium-Ion Battery State of Health Estimation with Multi-Feature Collaborative Analysis and Deep Learning Method
Xianbin Yang(Jilin University), Siyan Chen(Jilin University), Bin Ma(Jilin University), Fengwei Liang(University of Science and Technology Beijing), Xinhua Liu(Beihang University), Bosong Zou(Jilin University), Wentao Wang(Beihang University), Xiao Hua(Tsinghua University), Haicheng Xie(Jilin University)
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