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Battery state-of-charge and parameter estimation algorithm based on Kalman filter

机译:基于卡尔曼滤波的电池充电状态及参数估计算法

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摘要

Electrochemical battery is the most widely used energy storage technology, finding its application in various devices ranging from low power consumer electronics to utility back-up power. All types of batteries show highly non-linear behaviour in terms of dependence of internal parameters on operating conditions, momentary replenishment and a number of past charge/discharge cycles. A good indicator for the quality of overall customer service in any battery based application is the availability and reliability of these informations, as they point out important runtime variables such as the actual state of charge (SOC) and state of health (SOH). Therefore, a modern battery management systems (BMSs) should incorporate functions that accommodate real time tracking of these non-linearities. For that purpose, Kalman filter based algorithms emerged as a convenient solution due to their ability to adapt the underlying battery model on-line according to internal processes and measurements. This paper proposes an enhancement of previously proposed algorithms for estimation of the battery SOC and internal parameters. The validity of the algorithm is confirmed through the simulation on experimental data captured from the lead acid battery stack installed in the real-world remote telecommunication station.
机译:电化学电池是使用最广泛的能量存储技术,它在从低功耗消费电子产品到公用备用电源的各种设备中得到了应用。所有类型的电池在内部参数对工作条件,瞬时补充和许多过去的充电/放电循环的依赖性方面都表现出高度非线性的行为。这些信息的可用性和可靠性是衡量任何基于电池的应用程序中总体客户服务质量的一个很好的指标,因为它们指出了重要的运行时变量,例如实际充电状态(SOC)和运行状况(SOH)。因此,现代的电池管理系统(BMS)应包含可实时跟踪这些非线性的功能。为此,基于卡尔曼滤波器的算法因其能够根据内部过程和测量值在线调整基础电池模型的能力而成为一种便捷的解决方案。本文提出了对先前提出的用于估计电池SOC和内部参数的算法的增强。通过对从安装在现实世界远程电信站中的铅酸电池组捕获的实验数据进行仿真,证实了该算法的有效性。

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