Combination between adaptive SMO and DWT-based an adjusted EDCV signal for robust SOC estimation in battery pack applications

Jonghoon Kim, C. Chun, B. Cho
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引用次数: 1

Abstract

This research elaborately investigates an innovative work for high-accuracy SOC estimation using an adjusted experimental discharging/charging voltage (EDCV) signal of series/parallel-cell configured battery pack through combination between adaptive sliding-mode observer (SMO) and discrete wavelet transform (DWT). The steps for robust SOC estimation in the proposed approach as follows. First, after discharging/charging of the battery pack, an obtained EDCV signal is decomposed into different frequency sub-bands (low-and high-frequency components, An and Dn) using the DWT-based multi-resolution analysis (MRA) method. Second, a low frequency component An is specifically served as a terminal voltage and sent to the equivalent circuit model (ECM)-based SMO for obtaining SOC information. The ECM of the battery pack previously constructed by discrimination process that selects unit cells with similar electrochemical characteristics is well considered. Finally, the SOC performance is compared with that of Ampere-hour counting for validation of this proposed work. Experimental results clearly show that this approach sufficiently enables us to provide a reliable SOC estimation whole discharging/charging period using only fundamental ECM without additional consideration such as internal state variation and noise model for compensating the ECM errors. This approach used two experimental packs of 6S1P and 8S2P that respectively connected in series and in series/parallel using 2.2Ah unit cells discriminated in advance.
结合自适应SMO和基于dwt的调整EDCV信号,用于电池组应用的鲁棒SOC估计
本研究将自适应滑模观测器(SMO)与离散小波变换(DWT)相结合,对串联/并联电池组的调整实验放电/充电电压(EDCV)信号进行高精度SOC估计。所提出的方法中稳健SOC估计的步骤如下。首先,在电池组放电/充电后,使用基于dwt的多分辨率分析(MRA)方法将得到的EDCV信号分解为不同的频率子带(低频和高频分量,an和Dn)。其次,将低频分量An作为终端电压,发送到基于等效电路模型(ECM)的SMO中获取SOC信息。以前通过选择具有相似电化学特性的单元电池的判别过程构建的电池组ECM得到了很好的考虑。最后,将SOC性能与安培小时计数的性能进行了比较,以验证所提出的工作。实验结果清楚地表明,该方法足以使我们仅使用基本ECM就能提供可靠的整个放电/充电周期SOC估计,而无需额外考虑内部状态变化和噪声模型来补偿ECM误差。该方法采用6S1P和8S2P两个实验包,分别串联和串并联,采用预先判别的2.2Ah单元电池。
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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