Incorporating state of charge estimation methods towards more accurate monitoring of second-life lithium-ion batteries

Mussab Najeeb, U. Schwalbe
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Abstract

Although several methods are developed for estimating the state of charge of lithium-ion batteries, there is still a challenge regarding monitoring the second life of these batteries due to the expected difference in the behavior and operating conditions in their second life. Considering that each method has its advantages and disadvantages according to the application and operating conditions, and monitoring the batteries in their second life is of special importance because it is required to integrate with the battery management system to balance cells, diagnose faults and prevent overheating. Therefore, the estimation method developed in this study, by incorporating artificial neural network method and Kalman filter method with fine-tuning of the filtering process using Coulomb counting, provides a solution for more accurate online monitoring of these batteries. Aiming to get the best possible performance, considering the specificity of the second life of the batteries in terms of operating voltage, low values of expected capacity, discharge ratio and other operational parameters.
结合充电状态估计方法,对二次寿命锂离子电池进行更精确的监测
虽然已经开发了几种方法来估计锂离子电池的充电状态,但由于锂离子电池在第二次寿命中的行为和操作条件的预期差异,在监测锂离子电池的第二次寿命方面仍然存在挑战。考虑到每种方法根据应用和操作条件各有优缺点,并且需要与电池管理系统集成,以平衡电池,诊断故障和防止过热,因此对电池的二次寿命进行监测具有特别重要的意义。因此,本研究开发的估计方法结合人工神经网络方法和卡尔曼滤波方法,并利用库仑计数对滤波过程进行微调,为更准确地在线监测这些电池提供了解决方案。考虑电池二次寿命在工作电压、期望容量低值、放电比等运行参数方面的特殊性,以获得最佳性能为目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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