机械与能源工程 |
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基于多尺度分解和深度学习的锂电池寿命预测 |
胡天中(),余建波*() |
同济大学 机械与能源工程学院,上海 201804 |
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Life prediction of lithium-ion batteries based on multiscale decomposition and deep learning |
Tian-zhong HU(),Jian-bo YU*() |
School of Mechanical Engineering, Tongji University, Shanghai 201804, China |
1 |
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