Battery health analysis of electric vehicle based on EL-SVR

Ling Zhong, X. Liu
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Abstract

Lithium-ion battery has become an indispensable energy storage component in our life because of its environmental protection and high energy characteristics. The battery SOH is the decisive factor to ensure its stability. For the sake to improve the accuracy of EV battery SOH prediction. Firstly, data structuring, PCA dimension reduction and data standardization were used to transform downloaded data into data that could be trained with high accuracy model. After that, the characteristic factors related to battery capacity were extracted from the battery charging data and correlation analysis was carried out. According to the method of Pearson coefficient, the features with strong correlation were left and then imported into the sample data. The factor parameters of SVR and other models were optimized by grid search algorithm, and the final prediction model was established. Lithium-ion battery has become an indispensable energy storage component in our life because of its environmental protection and high energy characteristics. The battery SOH is the decisive factor to ensure its stability.
基于EL-SVR的电动汽车电池健康分析
锂离子电池以其环保、高能量的特点,成为我们生活中不可缺少的储能部件。电池的SOH是保证其稳定性的决定性因素。为了提高电动汽车电池SOH预测的准确性。首先,采用数据结构化、PCA降维和数据标准化等方法,将下载的数据转化为可用于高精度模型训练的数据;然后,从电池充电数据中提取与电池容量相关的特征因素,并进行相关性分析。根据Pearson系数法,将相关性较强的特征留下来,导入到样本数据中。通过网格搜索算法对SVR等模型的因子参数进行优化,建立最终的预测模型。锂离子电池以其环保、高能量的特点,成为我们生活中不可缺少的储能部件。电池的SOH是保证其稳定性的决定性因素。
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