2023
DOI: 10.1109/access.2023.3293726
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Joint Prediction of Li-ion Battery State of Charge and State of Health Based on the DRSN-CW-LSTM Model

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Cited by 8 publications
(1 citation statement)
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“…The recurrent structure of LSTMs gives them a natural adaptability to temporal sequences. This peculiarity makes them particularly suitable for dealing with data from battery systems, for which changes to SOC over time must be modeled accurately [165,166]. However, it is also essential to consider the limitations associated with the use of LSTMs for SOC estimation.…”
Section: Long Short-term Memorymentioning
confidence: 99%
“…The recurrent structure of LSTMs gives them a natural adaptability to temporal sequences. This peculiarity makes them particularly suitable for dealing with data from battery systems, for which changes to SOC over time must be modeled accurately [165,166]. However, it is also essential to consider the limitations associated with the use of LSTMs for SOC estimation.…”
Section: Long Short-term Memorymentioning
confidence: 99%