机械故障诊断的集成方法

P. Wang, N. Propes, N. Khiripet, Y. Li, G. Vachtsevanos
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引用次数: 24

摘要

本文介绍了一种用于纺织和纤维制造设备等复杂工业过程中机器故障监测和诊断的综合方法。该方法是通用的,适用于各种操作关键过程的工业工厂,可能需要持续监控和维护程序。采用双重方法:通过特征提取器/神经网络分类器结构处理高带宽故障症状证据,如振动、电流尖峰等;而低带宽现象,如温度、压力、腐蚀、泄漏等,则可以用模糊规则集作为专家系统进行更好的诊断。用许多工业工厂常见的基准工艺的典型实例说明了该技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An integrated approach to machine fault diagnosis
This paper introduces an integrated methodology to monitor and diagnose machine faults in complex industrial processes such as textile and fiber manufacturing facilities. The approach is generic and applicable to a variety of industrial plants that operate critical processes and may require continuous monitoring and maintenance procedures. A dual approach is pursued: high-bandwidth fault symptomatic evidence, such as vibrations, current spikes, etc., are treated via a feature extractor/neural network classifier construct; while low-bandwidth phenomena, such as temperature, pressure, corrosion, leaks, etc., are better diagnosed with a fuzzy rule base set as an expert system. The technique is illustrated with typical examples from benchmark processes common to many industrial plants.
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