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Towards Long Lifetime Battery: AI-Based Manufacturing and Management

Journal

IEEE-CAA JOURNAL OF AUTOMATICA SINICA
Volume 9, Issue 7, Pages 1139-1165

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JAS.2022.105599

Keywords

Artificial intelligence; battery health management; battery life diagnostic; battery manufacturing; smart battery

Funding

  1. UK HVM Catapult project [8248 CORE]
  2. National Natural Science Foundation of China [52072038, 62122041]

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This paper critically reviews the state-of-the-art AI-based manufacturing and management strategies for achieving long battery lifetime. It showcases the advantages of AI-based battery manufacturing and smart batteries in improving battery health. The most commonly adopted AI solutions for battery life diagnostic, including state-of-health estimation and ageing prediction, are reviewed and their advantages and drawbacks are discussed. Efforts to design suitable AI solutions for enhancing battery longevity are also presented. The challenges and potential strategies in this field are suggested.
Technologies that accelerate the delivery of reliable battery-based energy storage will not only contribute to decarbonization such as transportation electrification, smart grid, but also strengthen the battery supply chain. As battery inevitably ages with time, losing its capacity to store charge and deliver it efficiently. This directly affects battery safety and efficiency, making related health management necessary. Recent advancements in automation science and engineering raised interest in AI-based solutions to prolong battery lifetime from both manufacturing and management perspectives. This paper aims at presenting a critical review of the state-of-the-art AI-based manufacturing and management strategies towards long lifetime battery. First, AI-based battery manufacturing and smart battery to benefit battery health are showcased. Then the most adopted AI solutions for battery life diagnostic including state-of-health estimation and ageing prediction are reviewed with a discussion of their advantages and drawbacks. Efforts through designing suitable AI solutions to enhance battery longevity are also presented. Finally, the main challenges involved and potential strategies in this field are suggested. This work will inform insights into the feasible, advanced AI for the health-conscious manufacturing, control and optimization of battery on different technology readiness levels.

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