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Evaluation of the model-based state-of-charge estimation methods for lithium-ion batteries

机译:锂离子电池基于模型的电荷估计方法的评价

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To achieve accurate battery SoC, the Gaussian is applied to construct battery model. It is able to simulate the time-variable, nonlinear characteristics of battery. To adaptively adjust the Gaussian battery model parameter set and order, a novel online four-step model parameter identification and order selection method is proposed. To further evaluate the Gaussian battery model estimation accuracy, another two kinds of representative battery models including the combined model and Thevenin model are built as comparisons. Results based on three kinds of Kalman filters show that the maximum SoC estimation error of each case is within 2% and the Gaussian model has the best accuracy for voltage prediction as well as SoC estimation.
机译:为了实现精确的电池SOC,高斯应用于构建电池模型。它能够模拟电池的时变非线性特性。为了自适应调整高斯电池模型参数集和订单,提出了一种新的在线四步模型参数识别和订单选择方法。为了进一步评估高斯电池模型估计精度,构建了包括组合模型和培养型模型的另外两种代表性电池模型作为比较。基于三种卡尔曼滤波器的结果表明,每种情况的最大SOC估计误差在2%以内,高斯模型具有最佳的电压预测和SOC估计的精度。

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