2023
DOI: 10.54097/fcis.v4i3.11146
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SOC Prediction for Lithium Battery Via LSTM-Attention-R Algorithm

Xueguang Li,
Menchita F. Dumlao

Abstract: New energy vehicles are developing rapidly in the world, China and Europe are vigorously promoting new energy vehicles. The State of Charge (SOC) is circumscribed as the remaining charge of the lithium battery (Li-ion), that indicates the driving range of a pure electric vehicle. Additionally, it is the basis for SOH and fault state prediction. Nevertheless, the SOC is incapable of measuring directly. In this paper, an LSTM-Attention-R network framework is proposed. The LSTM algorithm is accustomed to present … Show more

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