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Enhanced state-of-charge estimation for lithium-ion iron phosphate cells with flat open-circuit voltage curves

机译:具有平坦开路电压曲线的增强型锂离子磷酸铁锂电池充电状态估计

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The open-circuit voltage (OCV) forms the basis for many real-time state-of-charge (SOC) estimation algorithms. The OCV-SOC relationship for most battery chemistries often provides a good estimate for SOC. However, for the lithium-ion iron phosphate (LiFePO4) variation of the lithium-ion cell chemistry, the OCV curve is fairly flat over the operational SOC range. Thus, even the smallest error in the OCV obtained from a battery model can lead to divergence in SOC from the actual value. Therefore, as a remedy this paper presents a separated framework for the Extended Kalman Filter (EKF) estimation of SOC, with real-time process noise assessment. In this paper, the states and parameters of a non-linear cell model, namely the two time-constant Randle's model, are also identified using the dual implementation of the EKF algorithm in real time.
机译:开路电压(OCV)构成了许多实时充电状态(SOC)估计算法的基础。大多数电池化学性质的OCV-SOC关系通常为SOC提供了一个很好的估计。但是,对于锂离子电池化学的锂离子磷酸铁(LiFePO4)变化,OCV曲线在工作SOC范围内相当平坦。因此,即使从电池模型获得的OCV中的最小误差也可能导致SOC与实际值发生偏差。因此,作为一种补救措施,本文提出了一种分离的框架,用于SOC的扩展卡尔曼滤波器(EKF)估计,并具有实时过程噪声评估。在本文中,还使用EKF算法的双重实现来实时识别非线性单元模型(即两个时间常数Randle模型)的状态和参数。

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