基于免疫机制的电机故障诊断方法

Fu-Jian Duan, Ming Lei, Jianwei Li, Yuling Tian
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引用次数: 2

摘要

本文提出了一种基于负选择算法和免疫网络模型的故障诊断系统框架。首先对检测器进行免疫容限训练,然后检测是否出现故障。诊断实验表明,通过聚类算法可以将系统的正常模式和异常模式完全由自集和非自集反映出来。从而提高了诊断的准确性。在诊断过程中,提出了多重诊断对数据进行处理。如果不能准确识别数据,则给出异常程度,作为专家决策的依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Motor Fault Diagnosis Method Based on Immune Mechanism
In this paper, a framework of fault diagnosis system is proposed, which is based on negative selection algorithm and the immune network model. Firstly, train the detectors by immune tolerance, and then detect if faults appear. Diagnosis experiments show that the system in normal pattern and abnormal pattern can be reflected by the self set and the non-self set completely through clustering algorithm. So the accuracy of diagnosis is improved. In the course of diagnosis, multiple diagnosis is proposed to process the data. If the data can't be recognized exactly, the abnormity degree is presented, which is the evidence for experts to make decision.
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