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首页> 外文期刊>Advances in Mechanical Engineering >Noise reduction in feature level and its application in rolling element bearing fault diagnosis:
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Noise reduction in feature level and its application in rolling element bearing fault diagnosis:

机译:特征级降噪及其在滚动轴承故障诊断中的应用:

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摘要

Vibration analysis is an effective way to accurately diagnose bearing faults, because it carries abundant information regarding mechanical health conditions. However, noise interference makes the features, extracted from vibration signals at different time periods, show randomness fluctuation that will reduce the bearing diagnostic accuracy. To solve this problem, this article proposes a noise reduction method in feature level and tries to use it in bearing fault diagnosis with principal component analysis and radial basis function neural network. First, original feature space, including time, frequency, and energy features, is constructed from these obtained vibration signals. Second, compendious feature sets of the considered bearing faults are created by principal component analysis and random statistical average algorithm. In this step, random statistical average is designed to weaken the influence of noise to features and principal component analysis is used to reduce the dimension of features for co...
机译:振动分析是准确诊断轴承故障的有效方法,因为它可以提供有关机械健康状况的大量信息。但是,噪声干扰会使从不同时间段的振动信号中提取的特征显示出随机性波动,从而降低了轴承的诊断精度。为了解决这个问题,本文提出了一种特征级的降噪方法,并试图通过主成分分析和径向基函数神经网络将其用于轴承故障诊断。首先,从这些获得的振动信号构造原始特征空间,包括时间,频率和能量特征。其次,通过主成分分析和随机统计平均算法创建考虑的轴承故障的综合特征集。在此步骤中,设计随机统计平均值以减弱噪声对特征的影响,并使用主成分分析来减小特征的维数,以减少噪声对特征的影响。

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