The Application of Kalman Filter for Lead-Acid Battery State of Charge Estimation

Sercan Ç. Tekkök, Bekir Bostanci, Mehmet Emre Söyünmez, P. O. Ekim
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Abstract

Battery systems are crucial part of the most applications which are mobile and have electronic components from autonomous mobile robots to mobile phones. Hence, it is important to keep track of the state of the battery and its health in order to make these devices reliable and also protect the battery from over discharges and overcharges. There are different methods to estimate it but not all of them applicable for mobile systems. Thus, this study discusses and compares three methods that can be used for mobile applications and batteries that are under continuous use. The coulomb counting method, the linear counting model and the extended Kalman filter with nonlinear battery model are tested with both simulated and real data with a lead acid battery.
卡尔曼滤波在铅酸蓄电池电量状态估计中的应用
电池系统是大多数移动应用的关键部分,并且具有从自主移动机器人到移动电话的电子组件。因此,跟踪电池的状态及其健康状况非常重要,以使这些设备可靠,并保护电池免受过放电和过充电的影响。有不同的方法来估计它,但不是所有的方法都适用于移动系统。因此,本研究讨论并比较了三种可用于移动应用程序和连续使用的电池的方法。以铅酸蓄电池为例,对库仑计数法、线性计数模型和非线性电池模型的扩展卡尔曼滤波进行了仿真和实际试验。
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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