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Intelligent fault diagnosis of rotating machinery based on deep learning with feature selection

机译:基于专程选择的深度学习旋转机械智能故障诊断

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In the absence of a priori knowledge, manual feature selection is too blind to find the sensitive features which can effectively classify the different fault features. And it is difficult to obtain a large number of typical fault samples in practice to train the intelligent classifier. A novel intelligent fault diagnosis method based on feature selection and deep learning is proposed for rotating machine mechanical in the paper. In this method, the deep neural network is not only used for feature extraction but also for fault diagnosis. First, the deep neural network 1 is used to extract feature from the spectral signal of the original signal. In addition, the original vibration signal is decomposed to a series of intrinsic mode function components by empirical mode decomposition, and the statistical features of each intrinsic mode function component are extracted by the deep neural network 2 in time domain and frequency domain. Second, the extraction features of the original signal spectrum and the extraction features of each intrinsic mode function component are evaluated, respectively. After features evaluation, the selected sensitive features are combined together to construct a joint feature. Finally, the joint feature is put into the deep neural network 3 to realize the automatic recognition of different fault states of rotating machinery. The experimental results show that the method proposed in this paper which integrated time-domain, frequency-domain statistical characteristics, empirical mode decomposition, feature selection, and deep learning methods can obtain the fault information in detail and can select sensitive features from a large number of fault features. The method can reduce the network size, improve the mechanical fault diagnosis classification accuracy, and has strong robustness.
机译:在没有先验的知识的情况下,手动功能选择太盲目,无法找到可以有效地分类不同故障功能的敏感功能。并且很难在实践中获得大量典型的故障样本以培训智能分类器。提出了一种基于特征选择和深度学习的新型智能故障诊断方法,用于在纸上旋转机械机械。在这种方法中,深神经网络不仅用于特征提取,而且用于故障诊断。首先,深神经网络1用于从原始信号的光谱信号中提取特征。另外,通过经验模式分解,原始振动信号被分解为一系列内在模式函数分量,并且在时域和频域中的深神经网络2中提取每个内部模式功能分量的统计特征。其次,分别评估了原始信号谱的提取特征和每个内在模式功能分量的提取特征。在特征评估之后,所选择的敏感特征在一起组合以构建联合特征。最后,将关节特征放入深神经网络3中,以实现旋转机械的不同故障状态的自动识别。实验结果表明,本文提出的该方法,其中集成了时域,频域统计特征,经验模式分解,特征选择和深度学习方法可以详细地获得故障信息,可以从大量选择敏感功能故障特征。该方法可以降低网络尺寸,提高机械故障诊断分类精度,具有强大的鲁棒性。

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