Digital twin of electric vehicle battery systems: Comprehensive review of the use cases, requirements, and platforms
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DOI: 10.1016/j.rser.2023.113280
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Keywords
Artificial intelligence (AI); Battery management system (BMS); Battery passport; Battery recycling; Digital twin (DT); Electric vehicle (EV); Fault diagnosis; Internet-of-things (IoT); Machine learning (ML); Predictive maintenance; Remaining useful life (RUL); Second-life; Software architecture;All these keywords.
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