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An adaptive strategy for Li-ion battery internal state estimation

机译:锂离子电池内部状态估计的自适应策略

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摘要

Further developing a study presented in Di Domenico, Prada, and Creff (2011), this paper presents an extended Kalman filter (EKF) based on an electro-thermal model for the estimation of the internal state of a lithium-ion battery, i.e. state of charge and the cell overpotential. In order to compensate for uncertainties in the model parameters and in the measurements, it is first shown that the filter robustness strongly depends on the State of Charge (SOC) range. Then the filter weights are adapted according to the estimated SOC value. This estimation technique is tested using experimental data collected from a commercial A123 Systems lithium iron phosphate/graphite (LiFeP0_4/graphite) cell. The filter shows good performance. The estimation of SOC exhibits an average error within 3% range and the overpotential is estimated with a precision higher than 5 mV.
机译:为了进一步开展Di Domenico,Prada和Creff(2011)提出的研究,本文提出了一种基于电热模型的扩展卡尔曼滤波器(EKF),用于估计锂离子电池的内部状态,即状态电荷和电池超电势。为了补偿模型参数和测量中的不确定性,首先表明滤波器的鲁棒性强烈取决于充电状态(SOC)范围。然后根据估计的SOC值调整滤波器权重。使用从商用A123 Systems磷酸铁锂/石墨(LiFePO_4 /石墨)电池中收集的实验数据测试此估算技术。该过滤器显示出良好的性能。 SOC的估计值显示3%范围内的平均误差,并且以高于5 mV的精度估计过电势。

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