Accurate Model Parameter Identification to Boost Precise Aging Prediction of Lithium-Ion Batteries: A Review

IF 24.4 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Advanced Energy Materials Pub Date : 2023-08-18 DOI:10.1002/aenm.202301452
Shicong Ding, Yiding Li, Haifeng Dai, Li Wang, Xiangming He
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引用次数: 2

Abstract

Precise prediction of lithium-ion cell level aging under various operating conditions is an imperative but challenging part of ensuring the quality performance of emerging applications such as electric vehicles and stationary energy storage systems. Accurate and real-time battery-aging prediction models, which require an exact understanding of the degradation mechanisms of battery components and materials, could in turn provide new insights for materials and battery basic research. Furthermore, the primary barrier to meaningful artificial intelligence/machine learning for accelerating the prediction period is the exploitation of accurate aging mechanistic descriptors. This review comprehensively summarizes the evolution of deterioration mechanisms at the material and cell level in different environments and usage scenarios, including the intricate relationships between aging mechanisms, degradation modes, and external influences, which are the cornerstones of modeling simulation and machine learning techniques. Recent advances in electrochemical models coupled with internal battery degradation mechanisms as well as identification and tracking of aging parameters are shown, with particular emphasis on electrode balance and the anticipated trend of machine learning-assisted reliable remaining useful life prediction. Precise simulation prediction of cell level aging will continue to play an essential role in advanced smart battery research and management, enhancing its performance while shortening experimental sequences.

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精确的模型参数识别促进锂离子电池精确老化预测:综述
准确预测锂离子电池在各种操作条件下的老化是确保电动汽车和固定储能系统等新兴应用的质量性能的一个必要但具有挑战性的部分。准确实时的电池老化预测模型需要准确了解电池组件和材料的退化机制,从而为材料和电池基础研究提供新的见解。此外,有意义的人工智能/机器学习加速预测期的主要障碍是利用准确的老化机制描述符。这篇综述全面总结了不同环境和使用场景下材料和细胞水平退化机制的演变,包括老化机制、退化模式和外部影响之间的复杂关系,这是建模模拟和机器学习技术的基石。显示了电化学模型与电池内部退化机制以及老化参数的识别和跟踪的最新进展,特别强调了电极平衡和机器学习辅助的可靠剩余使用寿命预测的预期趋势。电池级老化的精确模拟预测将继续在先进的智能电池研究和管理中发挥重要作用,在缩短实验序列的同时提高其性能。
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来源期刊
Advanced Energy Materials
Advanced Energy Materials CHEMISTRY, PHYSICAL-ENERGY & FUELS
CiteScore
41.90
自引率
4.00%
发文量
889
审稿时长
1.4 months
期刊介绍: Established in 2011, Advanced Energy Materials is an international, interdisciplinary, English-language journal that focuses on materials used in energy harvesting, conversion, and storage. It is regarded as a top-quality journal alongside Advanced Materials, Advanced Functional Materials, and Small. With a 2022 Impact Factor of 27.8, Advanced Energy Materials is considered a prime source for the best energy-related research. The journal covers a wide range of topics in energy-related research, including organic and inorganic photovoltaics, batteries and supercapacitors, fuel cells, hydrogen generation and storage, thermoelectrics, water splitting and photocatalysis, solar fuels and thermosolar power, magnetocalorics, and piezoelectronics. The readership of Advanced Energy Materials includes materials scientists, chemists, physicists, and engineers in both academia and industry. The journal is indexed in various databases and collections, such as Advanced Technologies & Aerospace Database, FIZ Karlsruhe, INSPEC (IET), Science Citation Index Expanded, Technology Collection, and Web of Science, among others.
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