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A Novel Deep Learning Method for Intelligent Fault Diagnosis of Rotating Machinery Based on Improved CNN-SVM and Multichannel Data Fusion

机译:基于改进的CNN-SVM和多通道数据融合的旋转机械智能故障诊断深度学习新方法

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摘要

Intelligent fault diagnosis methods based on deep learning becomes a research hotspot in the fault diagnosis field. Automatically and accurately identifying the incipient micro-fault of rotating machinery, especially for fault orientations and severity degree, is still a major challenge in the field of intelligent fault diagnosis. The traditional fault diagnosis methods rely on the manual feature extraction of engineers with prior knowledge. To effectively identify an incipient fault in rotating machinery, this paper proposes a novel method, namely improved the convolutional neural network-support vector machine (CNN-SVM) method. This method improves the traditional convolutional neural network (CNN) model structure by introducing the global average pooling technology and SVM. Firstly, the temporal and spatial multichannel raw data from multiple sensors is directly input into the improved CNN-Softmax model for the training of the CNN model. Secondly, the improved CNN are used for extracting representative features from the raw fault data. Finally, the extracted sparse representative feature vectors are input into SVM for fault classification. The proposed method is applied to the diagnosis multichannel vibration signal monitoring data of a rolling bearing. The results confirm that the proposed method is more effective than other existing intelligence diagnosis methods including SVM, K-nearest neighbor, back-propagation neural network, deep BP neural network, and traditional CNN.
机译:基于深度学习的智能故障诊断方法成为故障诊断领域的研究热点。自动且准确地识别旋转机械的初期微故障,特别是对于故障方向和严重程度而言,仍然是智能故障诊断领域的主要挑战。传统的故障诊断方法依赖于具有先验知识的工程师的手动特征提取。为了有效地识别旋转机械中的早期故障,本文提出了一种新的方法,即改进的卷积神经网络-支持向量机(CNN-SVM)方法。该方法通过引入全局平均池技术和SVM改进了传统的卷积神经网络(CNN)模型结构。首先,将来自多个传感器的时空多通道原始数据直接输入到改进的CNN-Softmax模型中,以训练CNN模型。其次,改进的CNN用于从原始故障数据中提取代表性特征。最后,将提取的稀疏代表特征向量输入SVM以进行故障分类。该方法适用于滚动轴承的多通道振动信号监测数据诊断。结果证实,该方法比其他现有的智能诊断方法(包括SVM,K近邻,反向传播神经网络,深度BP神经网络和传统的CNN)更有效。

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