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State of Charge Estimation of Power Lithium Battery Based on Extended Kalman Filter

机译:基于扩展卡尔曼滤波器的动力锂电池充电状态估计

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The chemical reaction process of the vehicle power lithium battery is complicated, and the battery has typical time-varying and nonlinear characteristics. High-precision SOC (State Of Charge) estimation algorithm takes a long time and is computationally intensive. In practical use, the ampere-hour integral method is applied more, but it is easy to cause time accumulation error. In this paper, considering the simplification and accuracy of the algorithm, the second-order RC equivalent circuit model is built according to the battery test data, and the SOC estimation of the battery is completed by EKF (Extended Kalman Filtering) algorithm. The simulation results show that the estimation accuracy can be kept within 3%.
机译:车用动力锂电池的化学反应过程复杂,具有典型的时变和非线性特性。高精度SOC(荷电状态)估计算法耗时长且计算量大。在实际使用中,安培小时积分法应用较多,但容易引起时间累积误差。本文考虑了算法的简化性和准确性,根据电池测试数据建立了二阶RC等效电路模型,并通过EKF(扩展卡尔曼滤波)算法完成了电池的SOC估计。仿真结果表明,估计精度可以保持在3%以内。

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