An end-cloud collaboration approach for online state-of-health estimation of lithium-ion batteries based on multi-feature and transformer
Wentao Wang(Beihang University), Rui Tan(Imperial College London), Shichun Yang(Beihang University), Yu Lu(Beihang University), Bingtao Ren(Beihang University), Bin Ma(Jilin University), Tao Zhu(University of Warwick), Xinhua Liu(Beihang University), Lisheng Zhang(Beihang University), Kaiyi Yang(Beihang University), Sida Zhou(Beihang University)
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