基于KNN的异步电动机故障诊断系统

S. Samanta, J. Bera, G. Sarkar
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引用次数: 11

摘要

本文用序列分量分析法研究了3-Φ异步电动机在线故障诊断系统。故障诊断系统仅使用时间同步的三相定子电压和电流样本,利用样本移位技术(SST)计算正负序分量。目的是利用序列分量分析法检测故障类型、故障严重程度和故障相位。利用k近邻算法等计算技术提高了故障相位诊断的准确性和故障的严重程度。严重程度信息肯定有助于制定机器维护计划,从而使工厂停机时间降至最低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
KNN based fault diagnosis system for induction motor
The paper deals with an online fault diagnosis system of 3-Φ induction motor with sequence component analysis. The fault diagnosis system uses only time synchronized three phase stator voltage and current samples, from which the positive and negative sequence components have been calculated using Sample Shifting Technique (SST). With the objectives to detect the type of fault, fault severity and faulty phase using sequence components analysis. The computational technique like K-nearest neighbor algorithm has been utilized to enhance the accuracy in diagnosis of faulty phase and the severity of fault. The severity information will definitely help to make a machine maintenance schedule and accordingly plant shut down can be made minimum.
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