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State Estimation of Lithium Batteries for Energy Storage Based on Dual Extended Kalman Filter

机译:基于双延长卡尔曼滤波器的储能锂电池的状态估算

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摘要

In general, battery packs are monitored by the battery management system (BMS) to ensure the efficiency and reliability of the energy storage system. SOC and SOH represent the battery’s energy and lifetime, respectively. They are the core aspects of the battery BMS. The traditional method assumes that the SOC is determined by the integral of the current input and output from the battery over time, which is an open-loop-based approach and often accompanies by poor estimation accuracy and the accumulation of sensor errors. The contribution of this work is to establish a new equivalent circuit model based on the lithium battery external characteristic, and the battery parameters are identified by considering the influence of capacity fade, voltage rebound, and internal capacitance-resistance performance. The correlation between the ohmic internal resistance and real capacity is obtained by degradation test. Then, the dual extended Kalman filter (DEKF) is used to perform real-time prediction of the lithium battery state. And through the simulation analysis and experiments, the feasibility and precision of the estimation method are well proved.
机译:通常,电池管理系统(BMS)监控电池组,以确保能量存储系统的效率和可靠性。 SOC和SOH分别代表电池的能量和寿命。它们是电池BMS的核心方面。传统方法假设SOC由电流输入的积分和从电池输出随时间的时间决定,这是基于开环的方法,并且通常通过差的估计精度和传感器误差的累积而伴随。这项工作的贡献是基于锂电池外部特性建立新的等效电路模型,通过考虑容量褪色,电压反弹和内部电容性能的影响来识别电池参数。通过降解试验获得欧姆内阻和实际容量之间的相关性。然后,双扩展卡尔曼滤波器(DEKF)用于执行锂电池状态的实时预测。通过仿真分析和实验,估计方法的可行性和精度得到了很好的证明。

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