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Feature selection techniques for increasing reliability of fault diagnosis of bearings

机译:特征选择技术可提高轴承故障诊断的可靠性

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Features selection (FS) techniques have an apparent need in many complex engineering applications especially the bearing fault diagnosis of low-speed industrial motor. The main goal of an FS algorithm is to select the most discriminant features subset from a high-dimension features vector that increases the model performance by reducing the redundant and irrelevant fault features. This paper proposes an efficient fault diagnosis model of bearing by incorporating the optimal feature selection approach for increasing the reliability of fault diagnosis of bearing. Also, this paper investigates the feature selection approaches including sequential forward selection (SFS), sequential floating forward selection (SFFS), and genetic algorithm (GA) for identifying the most discriminant subset. The effectiveness of this discriminant features subset is verified with a low-speed bearing fault diagnosis application for identifying bearing failures. The experimental shows up-to-mark diagnosis performance using GA based optimal feature selection method.
机译:在许多复杂的工程应用中,特别是在低速工业电机的轴承故障诊断中,特征选择(FS)技术具有明显的需求。 FS算法的主要目标是从高维特征向量中选择最有区别的特征子集,该特征子集通过减少冗余和不相关的故障特征来提高模型性能。通过结合最优特征选择方法,提出了一种有效的轴承故障诊断模型,以提高轴承故障诊断的可靠性。此外,本文还研究了特征选择方法,包括顺序正向选择(SFS),顺序浮向正向选择(SFFS)和用于识别最有区别子集的遗传算法(GA)。该判别特征子集的有效性已通过用于确定轴承故障的低速轴承故障诊断应用程序进行了验证。实验显示了使用基于遗传算法的最佳特征选择方法的最新诊断性能。

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