考虑电池芯不一致性的锂离子电池组微短路故障检测与定量诊断

Dongxu Shen , Dazhi Yang , Chao Lyu , Gareth Hinds , Lixin Wang , Miao Bai
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引用次数: 1

摘要

微短路(MSC)故障诊断被认为是防止锂离子电池组热失控的功能。在电池组的电池之间不可避免地存在初始充电状态和老化状态的不一致。现有的MSC诊断方法忽略了源自细胞间不一致的症状,这可能导致将不一致的细胞误诊为MSC细胞,反之亦然。本文提出了一种在考虑电池不一致性的情况下检测和定量诊断锂离子电池组MSC故障的方法。最初,基于对电池单元的端子电压进行排序而导出的中值增量容量(IC)被用作表示正常电池单元状态的基准。随后,在时域和频域中计算单个细胞的IC与其中值IC之间的相关系数,以区分正常、不一致和MSC细胞。在检测到MSC单元后,设计了一种基于带遗忘因子的递归最小二乘算法和自适应H∞卡尔曼滤波的短路电阻在线计算算法。实验结果表明,该算法估计的短路电阻与实际值具有快速收敛性,从而证实了该算法在实际环境中的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection and quantitative diagnosis of micro-short-circuit faults in lithium-ion battery packs considering cell inconsistency

Micro short circuit (MSC) fault diagnosis is thought functional in preventing thermal runaway of lithium-ion battery packs. Inconsistencies in the initial state-of-charge and aging state inevitably exist among cells of a battery pack. The existing method for MSC diagnosis disregards the symptoms originating from cell-to-cell inconsistency, which may lead to misdiagnosing inconsistent cells as MSC cells and vice versa. This work presents a method for detecting and quantitatively diagnosing MSC faults in lithium-ion battery packs, while taking cell inconsistency into consideration. Initially, the median incremental capacity (IC), derived based on ranking the terminal voltages of cells, is used as a benchmark representing the state of normal cells. Subsequently, the correlation coefficients between the ICs of individual cells and their median IC are calculated in both the time and frequency domains, as to distinguish the normal, inconsistent, and MSC cells. After detecting the MSC cell, an algorithm, which is based on a recursive least squares algorithm with forgetting factor and an adaptive H Kalman filtering, is designed to calculate the short-circuit resistance online. The experimental results demonstrate that the short-circuit resistance estimated by the proposed algorithm exhibits rapid convergence to the actual values, thereby confirming the utility of the proposed algorithm in real-life contexts.

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