Artificial neural network in estimation of battery state of-charge (SOC) with nonconventional input variables selected by correlation analysis

Chenghui Cai, Dong-Du, Zhiyu Liu, Hua Zhang
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引用次数: 35

Abstract

The selection of input variables is important to improve the prediction accuracy of artificial neural networks (ANNs). A three-layer feedforward backpropagation ANN is presented to estimate and predict the battery state-of-charge with nonconventional input variables selected. Initially, a few candidate input variables are derived from three basic input variables: discharging current, discharging time and battery terminal voltage. Then, three techniques of correlation analysis - the linear correlation analysis, nonparametric correlation analysis and partial correlation analysis - are used to select the input variables, and the results obtained are compared. With several nonconventional input variables included in the input sets, high prediction accuracy of the ANN model is obtained.
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通过相关分析选择非常规输入变量,利用人工神经网络进行电池荷电状态估计
输入变量的选择对提高人工神经网络的预测精度至关重要。提出了一种三层前馈反向传播神经网络,用于在选择非常规输入变量的情况下对电池电量状态进行估计和预测。最初,从三个基本输入变量:放电电流、放电时间和电池端电压中推导出几个候选输入变量。然后,利用线性相关分析、非参数相关分析和偏相关分析三种相关分析技术选择输入变量,并对得到的结果进行比较。在输入集中加入多个非常规输入变量,获得了较高的预测精度。
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