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A Novel Method for Identifying Crack and Shaft Misalignment Faults in Rotor Systems under Noisy Environments Based on CNN

机译:基于CNN的转子系统裂纹轴偏心故障识别新方法。

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摘要

Crack and shaft misalignment are two common types of fault in a rotor system, both of which have very similar dynamic response characteristics, and the vibration signals are vulnerable to noise contamination because of the interaction among different components of rotating machinery in the actual industrial environment, resulting in great difficulties in fault identification of a rotor system based on vibration signals. A method for identification of faults in the form of crack and shaft misalignments is proposed in this paper, which combines variational mode decomposition (VMD) and probabilistic principal component analysis (PPCA) to denoise the collected vibration signals from a test rig and then achieve signal feature extraction and fault classification with convolutional artificial neural network (CNN). The key parameters of the CNN are optimized and determined by genetic algorithm (GA) firstly, and the domain adaptability of the trained network is verified by the signals with different signal-to-noise ratio (SNR) values; then, the noisy vibration signals are decomposed into multiple band-limited intrinsic modal functions by VMD, and further data dimension reduction is performed by PPCA to realize the separation of the useful signals from noise; finally, the crack and shaft misalignment of the rotor system are identified by the optimized CNN. The results show that the proposed method can effectively remove the interference noise and extract the intrinsic features of the vibration signals, and the recognition rates of crack and shaft misalignment faults for the rotor system with different SNR values are more than 99%, which is considered to be very effective and useful.
机译:裂纹和轴未对准是转子系统中两种常见的故障类型,两者都具有非常相似的动态响应特性,并且由于实际工业环境中旋转机械的不同部件之间的相互作用,振动信号容易受到噪声污染。在基于振动信号的转子系统的故障识别中造成很大的困难。本文提出了一种识别裂纹和轴不对中形式的故障的方法,该方法结合了变模分解(VMD)和概率主成分分析(PPCA)来对从测试台收集的振动信号进行去噪,然后获得信号。卷积人工神经网络(CNN)进行特征提取和故障分类。首先通过遗传算法对CNN的关键参数进行优化和确定,然后通过不同信噪比(SNR)值的信号验证训练网络的域适应性。然后,通过VMD将噪声振动信号分解为多个频带受限的固有模态函数,并通过PPCA进行进一步的数据降维,以实现有用信号与噪声的分离。最后,通过优化的CNN识别转子系统的裂纹和轴未对准。结果表明,该方法能够有效地消除干扰噪声,提取振动信号的内在特征,对于不同信噪比值的转子系统,裂纹和轴偏心故障的识别率均在99%以上。非常有效和有用。

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