Li-ion battery parameter identification with low pass filter for measurement noise rejection

Cong-Sheng Huang, T. Chow, M. Chow
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引用次数: 20

Abstract

The advent of Energy Management (EM) and Electric Vehicles (EV) have completely changed the use of batteries. Accurately estimating the remaining power in batteries has become increasingly important. In order to estimate precise battery state of charge (SOC)/state of health (SOH) value, accurate parameter identification is essential when constructing an accurate battery model. Even though we are able to exactly identify battery parameters offline, the precision of online parameter identification usually suffers from measurement noise, which is an unavoidable phenomenon. In this paper we investigate how battery parameter identification is influenced by measurement noise. The selection of a low pass filter is also discussed and a fourth order Butterworth filter is adopted to effectively reject high frequency measurement noise. This algorithm can help with the identification of battery parameter that rejects measurement noise and maintains the accuracy of online battery parameter identification for future online model-based battery SOC/SOH estimation.
锂离子电池参数识别与低通滤波器测量噪声抑制
能源管理(EM)和电动汽车(EV)的出现彻底改变了电池的使用方式。准确估计电池剩余电量变得越来越重要。为了准确估计电池的荷电状态(SOC)/健康状态(SOH)值,在构建准确的电池模型时需要准确的参数识别。尽管我们可以离线准确识别电池参数,但在线参数识别的精度通常会受到测量噪声的影响,这是不可避免的现象。本文研究了测量噪声对电池参数辨识的影响。讨论了低通滤波器的选择,采用四阶巴特沃斯滤波器有效抑制高频测量噪声。该算法既能有效地抑制测量噪声,又能保持在线电池参数识别的准确性,为未来基于模型的在线电池SOC/SOH估计提供参考。
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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