High Performance Battery SoC Estimation Method based on an Adaptive Square-Root Unscented Kalman Filter

David A. Fusco, Francesco Porpora, M. Di Monaco, V. Nardi, G. Tomasso
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Abstract

Nowadays, high performances and reliability are being required from the energy storage system in different fields of application, including hybrid and electric vehicles as well as grid-tied power converters for the integration of renewable energy sources. Therefore, with the increasing of lithium-ion batteries (LIBs) application, the estimation of the State of Charge (SoC) at both cell and pack levels represents a fundamental task to be performed by the Battery Management System (BMS) in order to optimally manage the operating conditions, maximize the overall performances while extending the useful life. However, the nonlinear characteristics of the LIB parameters and the measurement noise due to the accuracy of current and voltage sensors in real applications strongly affect the performances of traditional SoC estimation methods, such as Coulomb counting and Open Circuit Voltage observation, leading to significant errors. To overcome these issues, different model-based methods have been proposed in literature. In this paper, Kalman filter methods are investigated with aim of evaluating the variability of their performances with respect to the initial calibration of the covariance matrices and the specific operating condition. In addition, the benefits of a proposed adaptive algorithm combined with a state estimator are highlighted.
基于自适应平方根无气味卡尔曼滤波的高性能电池SoC估计方法
目前,包括混合动力和电动汽车以及可再生能源并网变流器在内的不同应用领域对储能系统的高性能和可靠性提出了更高的要求。因此,随着锂离子电池(lib)应用的不断增加,电池管理系统(BMS)必须对电池和电池组的荷电状态(SoC)进行评估,以优化管理电池的运行条件,最大限度地提高电池的整体性能,同时延长电池的使用寿命。然而,在实际应用中,由于LIB参数的非线性特性以及由于电流和电压传感器精度而产生的测量噪声严重影响了库仑计数和开路电压观测等传统SoC估计方法的性能,导致误差显著。为了克服这些问题,文献中提出了不同的基于模型的方法。本文对卡尔曼滤波方法进行了研究,目的是评估其性能在协方差矩阵初始定标和特定操作条件下的可变性。此外,本文还强调了结合状态估计器的自适应算法的优点。
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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