A comprehensive review of battery modeling and state estimation approaches for advanced battery management systems
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Zonghai Chen | Yujie Wang | Li Wang | Mince Li | Jiaqiang Tian | Zonghai Chen | Yujie Wang | Jiaqiang Tian | Zhendong Sun | Li Wang | Ruilong Xu | Mince Li | Zhendong Sun | Ruilong Xu
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