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Detection and Isolation of Small Faults in Lithium-Ion Batteries via the Asymptotic Local Approach

机译:通过渐近局部方法检测锂离子电池小故障的检测与分离

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This contribution presents a diagnosis scheme for batteries to detect and isolate internal faults in the form of small parameter changes. This scheme is based on an electrochemical reduced-order model of the battery, which allows the inclusion of physically meaningful faults that might affect the battery performance. The sensitivity properties of the model are analyzed. The model is then used to compute residuals based on an unscented Kalman filter. Primary residuals and a limiting covariance matrix are obtained thanks to the local approach, allowing for fault detection and isolation by $chi^{2}$ statistical tests. Results show that faults resulting in limited 0.15% capacity and 0.004% power fade can be effectively detected by the local approach. The algorithm is also able to correctly isolate faults related with sensitive parameters, whereas parameters with low sensitivity or linearly correlated are more difficult to precise.
机译:此贡献为电池提供了诊断方案,用于以小参数变化的形式检测和隔离内部故障。该方案基于电池的电化学减少阶模型,允许包含可能影响电池性能的物理上有意义的故障。分析了模型的敏感性。然后使用该模型基于未入的卡尔曼滤波器计算残差。由于本地方法,获得了主要残差和限制协方差矩阵,允许故障检测和隔离 $ chi ^ {2} $ 统计测试。结果表明,通过本地方法可以有效地检测导致0.15%容量和0.004%功率衰落的故障。该算法还能够正确地隔离与敏感参数相关的故障,而具有低灵敏度或线性相关的参数更难以精确。

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