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Voltage and current signals de-noising with wavelet transform matrix for improved SOC estimation of lithium-ion battery

机译:利用小波变换矩阵对电压和电流信号进行去噪,以改善锂离子电池的SOC估计

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The electromagnetic environment of the lithium-ion battery in the Electric Vehicles (EVs) is severe. Moreover, the load current of the battery in the EVs changes drastically and randomly depending on the EV driving condition. As a result, the voltage and current signals measured by the Battery Management System (BMS) normally contain the noise such as the white noise. This results in the estimation error of the State of Charge (SOC). A new voltage and current de-noising approach based on Wavelet Transform Matrix (WTM) is proposed in this paper to improve the accuracy of the SOC estimation using Extended Kalman Filter (EKF) algorithm. This approach reduces the computation complexity and the measuring noise is de-noised effectively. It was validated by the experimental results on a 1665132 model laminated Li(NiCoMn)O2 battery with the rated capacity of 200 Ah and rated voltage of 3.6 V. The voltage of the battery ranges from 3.2 V to 4.2 V. The accuracy of the SOC estimation is improved significantly and the error is limited within 1.5% less than the error of 6% by EKF without de-noising.
机译:电动汽车(EV)中锂离子电池的电磁环境很恶劣。此外,电动汽车中的电池的负载电流根据电动汽车的行驶条件而急剧且随机地变化。结果,电池管理系统(BMS)测得的电压和电流信号通常包含诸如白噪声之类的噪声。这导致充电状态(SOC)的估计误差。提出了一种基于小波变换矩阵(WTM)的电压和电流去噪新方法,以提高扩展卡尔曼滤波(EKF)算法估计SOC的准确性。这种方法降低了计算复杂度,并且有效地降低了测量噪声。通过在1665132型层压Li(NiCoMn)O2电池上的实验结果进行了验证,该电池的额定容量为200 Ah,额定电压为3.6V。该电池的电压范围为3.2 V至4.2V。SOC的精度估计得到了显着改善,并且在不进行消噪的情况下,误差被EKF限制在6%误差的1.5%以内。

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