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Evaluation of Model Based State of Charge Estimation Methods for Lithium-Ion Batteries

机译:基于模型的锂离子电池充电状态估计方法的评估

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摘要

Four model-based State of Charge (SOC) estimation methods for lithium-ion (Li-ion) batteries are studied and evaluated in this paper. Different from existing literatures, this work evaluates different aspects of the SOC estimation, such as the estimation error distribution, the estimation rise time, the estimation time consumption, etc. The equivalent model of the battery is introduced and the state function of the model is deduced. The four model-based SOC estimation methods are analyzed first. Simulations and experiments are then established to evaluate the four methods. The urban dynamometer driving schedule (UDDS) current profiles are applied to simulate the drive situations of an electrified vehicle, and a genetic algorithm is utilized to identify the model parameters to find the optimal parameters of the model of the Li-ion battery. The simulations with and without disturbance are carried out and the results are analyzed. A battery test workbench is established and a Li-ion battery is applied to test the hardware in a loop experiment. Experimental results are plotted and analyzed according to the four aspects to evaluate the four model-based SOC estimation methods.
机译:本文研究并评估了四种基于模型的锂离子电池充电状态(SOC)估计方法。与现有文献不同,这项工作评估了SOC估计的不同方面,例如估计误差分布,估计上升时间,估计时间消耗等。引入了电池的等效模型,并且模型的状态函数为推论。首先分析了四种基于模型的SOC估计方法。然后建立仿真和实验以评估这四种方法。应用城市测功机行驶时间表(UDDS)的电流曲线来模拟电动车辆的驾驶情况,并利用遗传算法识别模型参数以找到锂离子电池模型的最佳参数。进行了有无扰动的仿真,并对结果进行了分析。建立了电池测试工作台,并在循环实验中应用了锂离子电池来测试硬件。根据四个方面对实验结果进行绘制和分析,以评估四种基于模型的SOC估计方法。

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