利用深度学习推进锂离子电池健康诊断:回顾与案例研究

IF 7.9 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Open Journal of Industry Applications Pub Date : 2024-01-16 DOI:10.1109/OJIA.2024.3354899
Mohamed Massaoudi;Haitham Abu-Rub;Ali Ghrayeb
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引用次数: 0

摘要

锂离子电池预报和健康管理(BPHM)系统对电动汽车和储能系统的寿命、经济性和环保性至关重要。深度学习(DL)技术的最新进展在应对电池研究和创新界面临的挑战方面取得了可喜的成果。这篇综述文章分析了使用深度学习技术的 BPHM 的主流发展。文章讨论了 BPHM 的基本概念,随后详细分析了新兴的 DL 技术。文章介绍了一个使用数据驱动的 DL 线性模型进行健康状况估计的案例研究,该模型以最少的数据和较高的计算效率实现了准确的预测。最后,探讨了未来研究和开发 BPHM 的潜在途径。这篇综述提供了对 BPHM 中新兴 DL 技术的整体理解,并为未来的研究工作提供了宝贵的见解和指导。
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Advancing Lithium-Ion Battery Health Prognostics With Deep Learning: A Review and Case Study
Lithium-ion battery prognostics and health management (BPHM) systems are vital to the longevity, economy, and environmental friendliness of electric vehicles and energy storage systems. Recent advancements in deep learning (DL) techniques have shown promising results in addressing the challenges faced by the battery research and innovation community. This review article analyzes the mainstream developments in BPHM using DL techniques. The fundamental concepts of BPHM are discussed, followed by a detailed examination of the emerging DL techniques. A case study using a data-driven DLinear model for state of health estimation is introduced, achieving accurate forecasts with minimal data and high computational efficiency. Finally, the potential future pathways for research and development in BPHM are explored. This review offers a holistic understanding of emerging DL techniques in BPHM and provides valuable insights and guidance for future research endeavors.
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