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State-of-Charge Observer Design for Batteries With Online Model Parameter Identification: A Robust Approach

机译:具有在线模型参数识别的电池的充电状态观测器设计:一种强大的方法

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摘要

The state-of-charge (SOC) indicates a lithium-ion battery's remaining capacity, and an accurate SOC estimation plays a crucial role in the battery's operation optimization and lifetime extension. This article studies a robust model-based SOC estimation strategy for batteries. Based on a battery equivalent circuit model, a robust recursive-least-squares algorithm is utilized for the model parameters online extraction, which avoids unnecessary experiments prior to SOC estimation for parameter identification. Compared with the conventional recursive least squares, it can effectively guarantee the parameter identification performance in spite of outliers in battery measurement signals. Then, a robust observer with the estimated model parameters is designed for the battery's SOC estimation, which can suppress the disturbance caused by unknown model errors. Theoretical analysis and extensive experimental results demonstrate the effectiveness of the designed SOC observer combined with robust recursive least-squares-based model identification.
机译:充电状态(SOC)表示锂离子电池的剩余容量,精确的SOC估计在电池的操作优化和寿命延伸中起着至关重要的作用。本文研究了一种基于模型的电池的SOC估计策略。基于电池等效电路模型,用于在线提取模型参数的鲁棒递归 - 最小二乘算法,这避免了在SOC估计之前进行参数识别之前的不必要的实验。与传统的递归最小二乘相比,尽管电池测量信号中的异常值,它可以有效地保证参数识别性能。然后,设计具有估计模型参数的强大观察者,用于电池的SOC估计,这可以抑制由未知模型误差引起的干扰。理论分析和广泛的实验结果表明,设计的SoC观察者的有效性与基于鲁棒递归最小二乘的模型识别相结合。

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