Nonlinear state observers and extended Kalman filters for battery systems

A. Rauh, S. Butt, H. Aschemann
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引用次数: 26

Abstract

Abstract The focus of this paper is to develop reliable observer and filtering techniques for finite-dimensional battery models that adequately describe the charging and discharging behaviors. For this purpose, an experimentally validated battery model taken from the literature is extended by a mathematical description that represents parameter variations caused by aging. The corresponding disturbance models account for the fact that neither the state of charge, nor the above-mentioned parameter variations are directly accessible by measurements. Moreover, this work provides a comparison of the performance of different observer and filtering techniques as well as a development of estimation procedures that guarantee a reliable detection of large parameter variations. For that reason, different charging and discharging current profiles of batteries are investigated by numerical simulations. The estimation procedures considered in this paper are, firstly, a nonlinear Luenberger-type state observer with an offline calculated gain scheduling approach, secondly, a continuous-time extended Kalman filter and, thirdly, a hybrid extended Kalman filter, where the corresponding filter gains are computed online.
电池系统的非线性状态观测器和扩展卡尔曼滤波
摘要本文的重点是为有限维电池模型开发可靠的观测器和滤波技术,以充分描述充放电行为。为此,从文献中获得的实验验证的电池模型通过数学描述进行扩展,该描述表示由老化引起的参数变化。相应的扰动模型解释了电荷状态和上述参数变化都不能通过测量直接获得的事实。此外,这项工作还提供了不同观测器和滤波技术的性能比较,以及保证可靠检测大参数变化的估计程序的发展。为此,采用数值模拟方法研究了电池不同的充放电电流分布。本文考虑的估计方法是:首先是具有离线计算增益调度方法的非线性luenberger型状态观测器;其次是连续时间扩展卡尔曼滤波器;第三是混合扩展卡尔曼滤波器,其中相应的滤波器增益是在线计算的。
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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