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Research on residual life prediction method of lithium ion battery for pure electric vehicle

机译:纯电动汽车锂离子电池剩余寿命预测方法研究

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To overcome the complexity of the lithium-ion battery inside the chemical reaction resulting in a low battery life remaining prediction accuracy, the paper proposes a new electric vehicle lithium ion battery remaining life prediction method based on a correlation vector machine. According to the operating characteristics of lithium-ion batteries in electric vehicles, this method selects health factors that affect battery life, and selects related factors. According to the marginal likelihood function, the factor weights are integrated to obtain the health factor sequence target. Relevance vector machine is used to optimise and evaluate the characteristics of health factors, and complete the prediction of electric vehicle lithium-ion battery capacity and remaining battery life. Comparative experiments show that the prediction effect and stability of the method in this paper are better, and the minimum prediction error is only 0.013.
机译:为了克服化学反应内部的锂离子电池的复杂性导致电池寿命剩余的低电量预测精度,提出了一种基于相关矢量机的新型电动车辆锂离子电池剩余寿命预测方法。 根据电动汽车锂离子电池的操作特性,该方法选择影响电池寿命的健康因素,并选择相关因素。 根据边缘似然函数,整合因子重量以获得健康因子序列目标。 相关矢量机用于优化和评估健康因子的特性,并完成电动车辆锂离子电池容量的预测和剩余电池寿命。 比较实验表明,本文中该方法的预测效应和稳定性更好,最小预测误差仅为0.013。

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