Study of data mining based machinery fault diagnosis

Dong Jiang, Shih-Tao Huang, Wenqing Lei, Jin-Yan Shi
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引用次数: 5

Abstract

In accordance with the reality of the installation of an online monitoring system to significant equipment and many large-scale databases or data warehouses that have come into being, a new artificial intelligence research approach known as data mining is introduced into the fault diagnosis field in this paper. Based on the Bayesian statistical learning theory and a large number of sample data, which represent the historic running record of the machine, different probability density functions of frequent classes of machine faults are established to determine the current running state. Moreover, the mining results are valuable for domain experts to discover the running regularity of machines, predict the running trend and provide decision supports for senior managers. Experiments indicate that the method is feasible in the fault diagnosis field and effective in distinguishing some frequent rotary machine faults.
基于数据挖掘的机械故障诊断研究
根据重大设备安装在线监测系统的实际情况,以及目前已形成的许多大型数据库或数据仓库,本文将一种新的人工智能研究方法——数据挖掘引入故障诊断领域。基于贝叶斯统计学习理论,利用代表机器历史运行记录的大量样本数据,建立机器故障频繁类别的不同概率密度函数,确定机器当前运行状态。挖掘结果可为领域专家发现机器运行规律、预测机器运行趋势以及为高级管理人员提供决策支持提供参考。实验结果表明,该方法在故障诊断领域是可行的,能够有效地识别出一些频繁的旋转机械故障。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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