Battery Fault Diagnosis Scheme Based on Improved RBF Neural Network

Zhenyu Liu, Yan Li
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引用次数: 1

Abstract

In this paper, the fault diagnosis scheme for battery is investigated by an improved radial basis function (RBF) neural network. First, the causes of battery faults and the difficulties of fault diagnosis are analyzed. Second, by using the characteristics of experimental data, the subtractive clustering method (SCM) is employed to determine the number of hidden layer neurons, center vector, and expansion coefficient in the RBF neural network. Then, a battery fault diagnosis scheme is designed based on the proposed improved RBF neural network. The simulation results show that the designed scheme can accurately diagnose the type of battery fault with a fast training speed.
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基于改进RBF神经网络的电池故障诊断方案
本文研究了基于改进径向基函数(RBF)神经网络的蓄电池故障诊断方案。首先,分析了电池故障的原因和故障诊断的难点。其次,利用实验数据的特点,采用减法聚类法(SCM)确定RBF神经网络的隐层神经元个数、中心向量和扩展系数;然后,基于改进的RBF神经网络设计了电池故障诊断方案。仿真结果表明,该方法能准确诊断电池故障类型,训练速度快。
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