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Optimal Model Selection of Support Vector Classifiers for Rolling Element Bearings Fault Detection Using Statistical Time-Domain Features

机译:滚动元件轴承滚动元件轴承故障检测的最佳模型选择使用统计时域特征

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Support Vector Machines (SVMs) are being used extensively now days in the arena of pattern recognition and regression analysis. It has become a good choice for machine learning both for supervised and unsupervised learning purposes. The SVM is primarily based on the mapping the data to a hyperplane using some kernel function and then increasing the margin between the hype planes so this hyperplane classifies the data in the normal and fault state. Due to large amount of input data, it is computationally cumbersome to yield the desired results in shortest possible time by using SVM. To overcome this difficulty in this work, we have employed statistical Time-Domain Features like Root Mean Square (RMS), Variance, Skewness and Kurtosis as pre-processors to the input raw data. Then various combinations of these time-domains signals and features have been used as inputs and their effects on the optimal model selection have been investigated thoroughly and optimal one has been suggested. The procedure presented here is computational less expensive otherwise to process the input data for model selection we may have to use super computer. The implementation of proposed method for machine learning is not much complicated and by using this procedure, an impending fault/abnormal behavior of the machine can be detected beforehand.
机译:支持向量机(SVMS)现在在模式识别和回归分析的竞技场中广泛使用。对于监督和无监督的学习目的而言,它已成为机器学习的好选择。 SVM主要基于使用某些内核功能将数据映射到超平面,然后增加次平面之间的余量,因此该超平面将数据分类为正常和故障状态。由于大量的输入数据,通过使用SVM来计算最短的时间,从而计算所需的结果。为了在这项工作中克服这种困难,我们已经使用了统计时域特征,如均方根(RMS),方差,偏斜和刚度,作为输入原始数据的预处理器。然后,这些时间域信号和特征的各种组合已被用作输入,并且已经彻底调查了对最佳模型选择的影响,并提出了最佳选择。这里呈现的过程是计算更便宜,否则要处理模型选择的输入数据,我们可能必须使用超级计算机。所提出的机器学习方法的实施并不多得多,并且通过使用该过程,可以预先检测机器的即将发生故障/异常行为。

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