基于电流特征分析和改进k均值聚类技术的交流电机错位在线识别

S.B. Chaudhury, S. Gupta
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引用次数: 12

摘要

金属轧制过程自动化的进步和日益严格的质量标准导致对电动机故障检测和诊断的需求日益增长。电机对中误差或电机轴上的耦合载荷是造成大多数机械故障和电机振动的常见原因之一。虽然电机状态监测有不同的算法,但仍缺乏对电机不对准的在线识别和全面的故障报告给维修人员。对不对准电机的电机电流谱分析没有很好的文献记载。本文提出了一种新型的变速驱动异步电动机对中故障在线诊断算法。该创新方法的特点是基于谱分析和聚类的故障检测方法。对定子电流进行谱分解,提取出一组新的机械故障特征系数。该技术在7.5 hp感应电机上进行了实验验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online Identification Of AC Motor Misalignment Using Current Signature Analysis and Modified K-Mean Clustering Technique
Advances in metal rolling process automation and tightening quality standards result in a growing demand being placed on fault detection and diagnostics of electrical motors. Misalignment of motor or coupled load on motor shaft is one of the common causes, which creates most of the mechanical faults and leads to motor vibration. Although different algorithms are available for motor condition monitoring, but an online identification of motor misalignment and comprehensive fault reporting to the maintenance personnel are still missing. The motor current spectrum analysis for misaligned motor is not well documented. This paper portrays a novel online fault diagnostic algorithm related to misalignment of induction motors fed by variable speed drive. The innovative approach features spectral analysis and clustering based, fault detection method. A new set of feature coefficients of the mechanical faults is extracted from the stator current by its spectral decomposition. The technique is validated experimentally for a 7.5-hp induction motor.
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