Remaining useful life prediction of lithium-ion batteries based on false nearest neighbors and a hybrid neural network
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Beitong Zhou | Yong Zhang | Cheng Cheng | Guijun Ma | Ye Yuan | Pengchao Hu | Cheng Cheng | Beitong Zhou | Ye Yuan | Yong Zhang | Guijun Ma | Pengchao Hu
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