Online capacity estimation of lithium-ion batteries with deep long short-term memory networks
There is an increasing demand for modern diagnostic systems for batteries under real-world operation, specifically for the estimation of their state of health, for example, via their remaining capacity. The online estimation of the capacity of a cell is challenging due to the dynamic nature of cell...
Main Authors: | Li, W, Sengupta, N, Dechent, P, Howey, D, Annaswamy, A, Sauer, DU |
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Format: | Journal article |
Language: | English |
Published: |
Elsevier
2020
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