首页> 外文会议>2003 ASME(American Society of Mechanical Engineers) Turbo Expo; Jun 16-19, 2003; Atlanta, Georgia >IMPROVED ACCURACY OF FAULT DIAGNOSIS OF ROTATING MACHINERY USING WAVELET DE-NOISING AND FEATURE SELECTION
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IMPROVED ACCURACY OF FAULT DIAGNOSIS OF ROTATING MACHINERY USING WAVELET DE-NOISING AND FEATURE SELECTION

机译:小波消噪和特征选择提高旋转机械故障诊断的准确性

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Past literature shows that artificial neural networks (ANN) can be successfully applied for fault diagnosis of rotating machinery but the results reported in the past literature are not satisfying. It is discovered that the main reasons for this poor accuracy are, noise present in the signals and visage of feature set that do not describe the signals accurately. Data obtained in field contains good degree of noise and this noise hurts the performance of the network. Although neural network, as a function estimator removes noise from time series to a certain extent, denoising prior to the modeling can greatly improve its ability to capture valuable information. The features used to describe the vibration signals implicitly define a pattern language. If the language is not expressive enough, it would fail to capture the information that is necessary for classification and hence regardless of the learning algorithm used, the accuracy of the classification function learned would be limited by this lack of information. Signal de-noising and feature selection are therefore highly desirable to improve the classification performance of the network In this paper de-noising based on wavelet transforms and feature selection process based on genetic algorithms is presented. The implicit assumption made in all the past literature is, multi defects do not occur. But in reality we can find lot of cases with multi defects. So, cases with multi defects are also considered hi this paper. GA is also used to select optimum network parameters. A multi layer feed forward neural network (MLFNN) is trained with error back propagation (EBP) learning algorithm.. To have a complete understanding of the concepts behind the classification accuracy first the study is started with ideal signals derived by synthesizing different sinusoids composed of possible frequencies and amplitudes of sinusoids normally observed in machine vibrations and faults such as unbalance, misalignment and defects in anti friction bearings. The test results show that the proposed method improves the performance of diagnosis to 99.2% even with 15% random noise in the input signals.
机译:过去的文献表明,人工神经网络(ANN)可以成功地应用于旋转机械的故障诊断,但过去的文献报道的结果并不令人满意。结果发现,这种差的准确性的主要原因是,信号中存在噪声以及特征集的面貌无法准确描述信号。现场获得的数据包含良好的噪声,这种噪声会损害网络的性能。尽管作为功能估计器的神经网络在一定程度上消除了时间序列中的噪声,但是在建模之前进行去噪可以大大提高其捕获有价值信息的能力。用于描述振动信号的特征隐式定义了一种模式语言。如果语言的表达能力不足,则它将无法捕获分类所必需的信息,因此,无论使用哪种学习算法,所学习的分类功能的准确性都会受到这种信息缺乏的限制。因此,非常需要信号去噪和特征选择,以提高网络的分类性能。本文提出了基于小波变换的去噪和基于遗传算法的特征选择过程。过去所有文献中的隐含假设是,不会发生多重缺陷。但实际上,我们可以发现很多带有多个缺陷的情况。因此,在本文中也考虑了具有多个缺陷的情况。 GA也用于选择最佳网络参数。使用错误反向传播(EBP)学习算法训练多层前馈神经网络(MLFNN)。为了完全了解分类准确性背后的概念,首先要研究通过合成由以下组成的不同正弦波而得出的理想信号通常在机器振动和故障(例如不平衡,未对准和抗磨轴承的缺陷)中观察到的正弦波可能的频率和振幅。测试结果表明,即使输入信号中有15%的随机噪声,该方法也可以将诊断性能提高到99.2%。

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