2022
DOI: 10.3390/machines10070503
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An Improved Convolutional-Neural-Network-Based Fault Diagnosis Method for the Rotor–Journal Bearings System

Abstract: More layers in a convolution neural network (CNN) means more computational burden and longer training time, resulting in poor performance of pattern recognition. In this work, a simplified global information fusion convolution neural network (SGIF-CNN) is proposed to improve computational efficiency and diagnostic accuracy. In the improved CNN architecture, the feature maps of all the convolutional and pooling layers are globally convoluted into a corresponding one-dimensional feature sequence, and then all th… Show more

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Cited by 4 publications
(2 citation statements)
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References 38 publications
(41 reference statements)
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“…Study [6] proves that the efficiency of diagnosing a rotor journal malfunction increases with the use of the simplified global information fusion convolution neural network (SGIF-CNN). The idea of using SGIF-CNN can be good only when identifying unchangeable fault signs.…”
Section: Introductionmentioning
confidence: 89%
“…Study [6] proves that the efficiency of diagnosing a rotor journal malfunction increases with the use of the simplified global information fusion convolution neural network (SGIF-CNN). The idea of using SGIF-CNN can be good only when identifying unchangeable fault signs.…”
Section: Introductionmentioning
confidence: 89%
“…The image was trained in the LeNet-5 model based on CNN, and the proposed method which was tested on three famous datasets, including motor bearing dataset, self-priming centrifugal pump dataset, and axial piston hydraulic pump dataset, and had achieved a prediction accuracy of 99.79%, 99.481%, and 100%, respectively. Luo et al [17] utilized the Adaptive Optimal-Kernel Time-Frequency Representation (AOK-TFR) algorithm to transform time series into time-frequency spectrogram representations, thereby simultaneously capturing signal characteristics from both time and frequency domains.…”
Section: Introductionmentioning
confidence: 99%