振动分析在钻井过程故障检测与分类中的应用

Adarsh Kumar, J. Ramkumar, N. Verma, Sonal Dixit
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引用次数: 14

摘要

在这个柔性制造系统的时代,对自动化和无人值守加工过程的需求增加非常高。因此,需要适当的在线工具状态监测方法,以尽量减少误差和工件的浪费。本研究采用支持向量机(SVM)、人工神经网络(ANN)和贝叶斯分类器等方法,利用振动信号开发了自动钻井作业系统。将这些分类器生成的模型的性能进行比较,以确定最佳的分类方法。由于在不同钻井参数下获得了振动信号,本研究还试图了解钻井过程中的事件,从而便于故障分类。研究了三种不同类型的磨损,并对其进行了比较,以了解磨损对钻井过程和信号的影响程度或程度。
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Detection and classification for faults in drilling process using vibration analysis
In this era of flexible manufacturing systems, increase in demand of automatic and unattended machining process is very high. Thus arise the need for proper online tool condition monitoring methods, in order to minimize error and waste of work-material. In this study, Support Vector Machine (SVM), Artificial Neural Network (ANN) and Bayes classifier are used to develop such a system for automatic drilling operations with the help of vibration signals. The performances of models generated by these classifiers are compared with each other in order to establish the best method. As the vibration signals were acquired under different drilling parameters, this study also tries to understand the events in drilling process that help in ease of fault classification. Three different kinds of wears were studied and later compared to understand the degree or magnitude of effect of wears on the drilling process and signals.
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