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Intelligent fault diagnosis of rotating machine elements using machine learning through optimal features extraction and selection

机译:智能故障诊断旋转机器元件通过机器学习通过最佳特点提取和选择

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The rolling element bearings, and gears are the main components of rotating machines and are most prone to defects which may result in significant economic loss. The main purpose of this study is an automated diagnosis of rolling element bearings and gears defects using machine learning (ML) technique and statistical features extracted from time domain vibration signal and spectral kurtosis. Extracted features are used to train K- nearest neighbors (KNN) as diagnostic classifier. The significance of segmentation size for time domain raw vibrational signals for the purpose of feature extraction is studied. This analysis is carried out by varying the window/segment length for features extraction and observing its effect on classification accuracy. Importance of feature selection for optimal performance of KNN in defect classification is studied by selecting most important and useful features using Genetic Algorithm (GA). Furthermore, effect of value of K on performance of KNN classifier has been observed by varying the value of K between 1 to 10 with step size of 1. Results show the ability of KNN classifier in combination with GA for correct and confident fault diagnosis of rotating machine elements in case of proper selection of parameters for features extraction.
机译:滚动元件轴承和齿轮是旋转机器的主要部件,最容易导致可能导致经济损失显着的缺陷。本研究的主要目的是使用机器学习(ML)技术的滚动元件轴承和齿轮缺陷的自动诊断和从时域振动信号和光谱峰度提取的统计特征。提取的特征用于将K-最近邻居(KNN)培训为诊断分类器。研究了用于特征提取目的时域原始振动信号的分割大小的意义。通过改变特征提取的窗口/段长度来进行该分析,并观察其对分类准确性的影响。通过选择遗传算法(GA)选择最重要和有用的特征,研究了对缺陷分类的最佳性能特征选择的重要性。此外,通过将k值为1至10之间的值与1.结果改变了k的值,k的kn分类值的值,结果表明了KNN分类器与GA适用于旋转的正确和自信的故障诊断的能力,观察到KNN分类器的性能。结果表明了KNN分类器的能力。 machine elements in case of proper selection of parameters for features extraction.

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