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Towards interactional management for power batteries of electric vehicles.

Rong HeWenlong XieBilly WuNigel P BrandonXinhua LiuXinghu LiShichun Yang
Published in: RSC advances (2023)
With the ever-growing digitalization and mobility of electric transportation, lithium-ion batteries are facing performance and safety issues with the appearance of new materials and the advance of manufacturing techniques. This paper presents a systematic review of burgeoning multi-scale modelling and design for battery efficiency and safety management. The rise of cloud computing provides a tactical solution on how to efficiently achieve the interactional management and control of power batteries based on the battery system and traffic big data. The potential of selecting adaptive strategies in emerging digital management is covered systematically from principles and modelling, to machine learning. Specifically, multi-scale optimization is expounded in terms of materials, structures, manufacturing and grouping. The progress on modelling, state estimation and management methods is summarized and discussed in detail. Moreover, this review demonstrates the innovative progress of machine learning based data analysis in battery research so far, laying the foundation for future cloud and digital battery management to develop reliable onboard applications.
Keyphrases
  • machine learning
  • big data
  • artificial intelligence
  • data analysis
  • solid state
  • high resolution
  • risk assessment
  • deep learning
  • current status