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Identification of the non-linear dynamics and state of charge estimation of a LiFePO_4 battery using constrained unscented Kalman filter

机译:使用受限无限的卡尔曼滤波器识别LifePo_4电池的非线性动力学和充电状态

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State of charge (SOC) estimation of a LiFePO_4 battery exhibiting significant hysteresis is considered. The dynamics of the battery is modeled as a linear system in conjunction with a non-linear hysteresis block. The linear part is assumed to be of a second order equivalent circuit model along with an open circuit voltage (OCV) source V_(oc). The circuit model is descretised and the resulting parameters are modeled as a multivariate random walk with a diagonal noise covariance matrix. These parameters are estimated using a Kalman filter. The linear model is then validated using a hybrid pulse power characterisation (HPPC) current profile. The major loop of the non-linear hysteresis relating V_(oc) and SOC is experimentally determined by charging and discharging the battery with low magnitude currents. Using Chebyshev polynomials, a model is fit for the hysteresis curves. Constrained unscented Kalman filter (CUKF) is used for estimating the minor loops of the hysteresis, and the SOC. The SOC estimation is then validated from a full electrochemical model simulation of the battery using COMSOL software.
机译:考虑了表现出显着滞后的LiFepo_4电池的充电状态(SOC)估计。与非线性滞后块一起建模电池的动态被建模为线性系统。线性部分被假定为二阶等效电路模型以及开路电压(OCV)源V_(OC)。解释电路模型,并将所得参数与具有对角线噪声协方差矩阵的多变量随机步行建模。使用卡尔曼滤波器估计这些参数。然后使用混合脉冲功率表征(HPPC)电流分布验证线性模型。通过用低幅度电流充电和排出电池来实验地确定非线性滞后与v_(oc)和soC的主要环。使用Chebyshev多项式,模型适合滞后曲线。约束的无编号卡尔曼滤波器(CUKF)用于估计滞后的次要循环和SOC。然后使用COMSOL软件从电池的全电化学模型模拟验证SOC估计。

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