基于MIV-OSELM算法的铅酸电池荷电状态预测

Sun Shuo, Jiang Hai-long, Li Chao, Ding Yi-yang
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摘要

本文将平均冲击值(MIV)算法与在线序列极限学习机(OSELM)算法相结合,构建了铅酸电池荷电状态(SOC)预测模型。该模型采用MIV方法定量计算输入变量对输出变量的影响值,完成模型输入变量的选择;采用OSELM方法对电池使用过程中产生的新样本进行增量学习,及时跟踪电池健康状态(SOH)对电池SOC预测的潜在影响。与其他模型的预测结果相比,MIV-OSELM方法提高了铅酸电池充放电过程荷电状态的预测精度,并具有根据新样品信息动态调整模型参数的自适应能力。
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The SOC Prediction of Lead-Acid Battery Based on MIV-OSELM Algorithm
In this work, an MIV-OSELM prediction model is constructed to predict the state of charge (SOC) of lead-acid battery, which combines the mean impact value (MIV) algorithm and the online sequence extreme learning machine (OSELM) algorithm. This model uses the MIV method to quantitatively calculate the impact value of the input variables on the output variables, and completes selection of the input variables of model; the OSELM method is used to carry out incremental learning of new samples generated during the use of battery, and track the potential impact of battery's state of health (SOH) on the SOC prediction of battery in a timely manner. Compared with the prediction results of other models, the MIV-OSELM method can improve the prediction accuracy of SOC during the charging and discharging processes of lead-acid batteries, which also has the adaptive ability to make dynamic adjustment of the model parameters according to the information of new samples.
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