基于FFT的旋转电机振动分析:一种预测性维修方法

S. S. Patil, J. Gaikwad
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引用次数: 24

摘要

目前,对提高旋转设备可靠性的要求比以往任何时候都更为关键,而且需求还在不断增长。故障检测在追求高可靠性运行中起着重要的作用。降低维护和生产成本,提高正常运行时间,提高产品质量,提高安全性和降低风险是部署振动分析的一些基本驱动因素。这些是任何工厂或公司的目标。预测性维修的振动分析是实现所有这些目标的重要组成部分。振动分析可以作为任何工厂的根本原因分析工作的一部分。本研究为利用快速傅立叶变换(Fast Fourier Transform, FFT)分析旋转电机的振动信号和诊断机器的健康状况以满足预测性维修需求提供了一种方法。电动旋转机械的振动分析是基于所有运转良好的旋转机械都有相当稳定的振动模式。在机器工作的任何异常情况下,振动模式都会发生变化。通过LabVIEW可以检测到变化量,分析异常的性质,从而了解机器的故障。根据缺陷的类型及其发展的斜率,可以提出预测性维修计划。这项工作还旨在克服传统振动分析技术的局限性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vibration analysis of electrical rotating machines using FFT: A method of predictive maintenance
Present day requirements for enhanced reliability of rotating equipments are most critical than ever before, and demands continue to grow constantly. Detection of faults play important role in the quest for highly reliable operations. Reducing maintenance and production cost, improving uptime, product quality, advance safety and reducing risks are some of the essential drivers for deploying vibration analysis. These serve as goals of any plant or corporation. Vibration analysis for predictive maintenance is an important ingredient in all these goals. Vibration analysis can be used as part of root cause analysis efforts within any plant. The present work offers a course of action for analyzing the vibration signals of electrical rotating machines and diagnoses the health of machine for predictive maintenance requirements using Fast Fourier Transform (FFT). The Vibration analysis of electrical rotating machines lies on the fact that all rotating machines in good condition have fairly stable vibration pattern. Under any abnormal condition in working of machines, the vibration pattern gets changed. The amount of variation can be detected and the nature of abnormalities can be analyzed with LabVIEW to get an idea about the fault in the machine. Based on the type of defect and its slope of progression, predictive maintenance schedule can be proposed. This work also aims at overcoming the limitations of traditional vibration analysis techniques.
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