基于人工神经网络的钻机故障自动诊断

Caleb Vununu, Ki-Ryong Kwon, Eung-Joo Lee, Kwang-Seok Moon, Suk-Hwan Lee
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引用次数: 7

摘要

机器故障诊断(MFD)恢复了所有旨在自动检测机器故障的研究。本研究旨在利用主成分分析(PCA)和人工神经网络(ANN)等模式识别技术,开发一种基于声音的操练MFD系统。对正常钻具和故障钻具发出的声音信号进行了采集和分析。与专注于时域的传统方法不同,我们在这里探讨了频域分量的有效性,并证明了基于演练产生的声音的时域分析的有效性。首先提取声音的功率谱分量,然后使用主成分分析进行降维和去除冗余。然后选择第一个主成分并给予基于神经网络的分类器以执行诊断。结果表明,该方法可用于基于声音的自动诊断系统。
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Automatic Fault Diagnosis of Drills Using Artificial Neural Networks
Machine fault diagnosis (MFD) recovers all the studies that aim to detect faults automatically in the machines. This study aims to develop a sound based MFD system for drills using the pattern recognition techniques such as principal components analysis (PCA) and artificial neural networks (ANN). The sound signals emitted by healthy and faulty drills are obtained and analyzed. Unlike the conventional methods that focus on the time domain, we explore here the effectiveness of the frequency domain components and demonstrate the ineffectiveness of the time domain based analysis of the sounds produced by the drills. The power spectrum components of the sounds are extracted before using PCA for the purpose of dimensionality reduction and redundancy removal. The first principal components are then selected and given to a neural network based classifier in order to perform the diagnosis. The results show that the proposed method can be used for the sounds based automatic diagnosis system.
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