Clone Immune Network Classification Algorithm for Fault Diagnosis of Power Transformer

Guizhi Xiao, Hui-xian Huang, Min Yang
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引用次数: 1

Abstract

In this paper, a new optimization algorithm called Clone Immune Network Classification Algorithm (CINC), is proposed for fault diagnosis of power transformers. The algorithm has merged the merits of population-based immune algorithm and network-based immune algorithm. The characteristics of training fault samples are studied and extracted by memory antibody set. Consequently, CINC can be used to find a limited number of antibodies which can represent all training fault samples distributed structures and features, which helps to realize dynamic classification. Then the testing fault samples are classified with the k-nearest neighbor method (KNN). Compared with previous immune network model and immune algorithm, this one can prevent prematurity, keep variety and avoid local optimal. Many fault samples have been tested by CINC algorithm, and its results are compared with those obtained by IEC three-ratio method (TRM) and BP neural network (BPNN) respectively. Comparison results show that the proposed algorithm is feasible and practical. The algorithm is of fast convergence rate and high diagnosis correctness.
电力变压器故障诊断的克隆免疫网络分类算法
本文提出了一种用于电力变压器故障诊断的克隆免疫网络分类算法(CINC)。该算法融合了基于群体的免疫算法和基于网络的免疫算法的优点。利用记忆抗体集对训练故障样本的特征进行研究和提取。因此,CINC可以用来寻找有限数量的抗体,这些抗体可以代表所有训练故障样本的分布结构和特征,有助于实现动态分类。然后用k近邻法对测试故障样本进行分类。与以往的免疫网络模型和免疫算法相比,该模型具有防止早熟、保持多样性和避免局部最优的特点。用CINC算法对大量故障样本进行了测试,并将其结果与IEC三比法(TRM)和BP神经网络(BPNN)的结果进行了比较。对比结果表明,该算法是可行的、实用的。该算法收敛速度快,诊断正确性高。
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