基于交叉验证和观测器的原位自适应电池参数估计算法

David M. Rosewater, Oindrilla Dutta, V. Angelis
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引用次数: 0

摘要

在这项工作中,开发了一种基于强化学习的算法,用于在线估计电池的健康状态。该算法利用电池芯的二阶等效电路模型,采用电荷库模型和四阶多项式近似,利用电池流数据。该模型的参数是基于最小化电池的估计状态和测量状态之间的误差。原位参数估计大大减少了准确确定状态所需的信息量,因为该算法定期对累积的单元数据进行训练、测试和验证。此外,还考虑了模型的复杂性,并进行了在线交叉验证,以提高模型的准确性。这种状态估计算法已经在锂离子(Li-ion)电池上进行了测试,在放电率为0.5C, 1C和2C,温度为15◦C, 25◦C和35◦C。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
In Situ Adaptive Battery Parameter Estimation Algorithm with Cross-Validation and Observer
In this work, a reinforcement learning based algorithm has been developed for online estimation of battery state-of-health. This algorithm utilizes streaming battery data on a second-order equivalent circuit model of a battery cell, with charge reservoir model and fourth order polynomial approximation. The parameters of this model are adapted based on minimization of error between the estimated and measured states of a battery cell. In-situ parameter estimation considerably reduces the amount of information required for accurate state determination, since the algorithm periodically performs training, testing, and validation on the accumulated cell data. Besides, model complexity has been incorporated and online cross-validation has been performed to improve model accuracy. This state-estimation algorithm has been tested on Lithium-ion (Li-ion) cells under the discharge rates of 0.5C, 1C and 2C, at temperatures of 15◦C, 25◦C, and 35◦C.
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