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New Fault Diagnosis Method for Rolling Bearings Based on Improved Residual Shrinkage Network Combined with Transfer Learning
by
Sun, Tieyang
, Gao, Jianxiong
in
Algorithms
/ Bearings
/ convolutional neural network
/ Datasets
/ Deep learning
/ Digital twins
/ Fault diagnosis
/ Industrial Internet of Things
/ Machine learning
/ Neural networks
/ noise resistance
/ rolling bearing
/ soft thresholding
/ Time series
/ transfer learning
/ Working conditions
2024
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New Fault Diagnosis Method for Rolling Bearings Based on Improved Residual Shrinkage Network Combined with Transfer Learning
by
Sun, Tieyang
, Gao, Jianxiong
in
Algorithms
/ Bearings
/ convolutional neural network
/ Datasets
/ Deep learning
/ Digital twins
/ Fault diagnosis
/ Industrial Internet of Things
/ Machine learning
/ Neural networks
/ noise resistance
/ rolling bearing
/ soft thresholding
/ Time series
/ transfer learning
/ Working conditions
2024
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Do you wish to request the book?
New Fault Diagnosis Method for Rolling Bearings Based on Improved Residual Shrinkage Network Combined with Transfer Learning
by
Sun, Tieyang
, Gao, Jianxiong
in
Algorithms
/ Bearings
/ convolutional neural network
/ Datasets
/ Deep learning
/ Digital twins
/ Fault diagnosis
/ Industrial Internet of Things
/ Machine learning
/ Neural networks
/ noise resistance
/ rolling bearing
/ soft thresholding
/ Time series
/ transfer learning
/ Working conditions
2024
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New Fault Diagnosis Method for Rolling Bearings Based on Improved Residual Shrinkage Network Combined with Transfer Learning
Journal Article
New Fault Diagnosis Method for Rolling Bearings Based on Improved Residual Shrinkage Network Combined with Transfer Learning
2024
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Overview
The fault diagnosis of rolling bearings is faced with the problem of a lack of fault data. Currently, fault diagnosis based on traditional convolutional neural networks decreases the diagnosis rate. In this paper, the developed adaptive residual shrinkage network model is combined with transfer learning to solve the above problems. The model is trained on the Case Western Reserve dataset, and then the trained model is migrated to a small-sample dataset with a scaled-down sample size and the Jiangnan University bearing dataset to conduct the experiments. The experimental results show that the proposed method can efficiently learn from small-sample datasets, improving the accuracy of the fault diagnosis of bearings under variable loads and variable speeds. The adaptive parameter-rectified linear unit is utilized to adapt the nonlinear transformation. When rolling bearings are in operation, noise production is inevitable. In this paper, soft thresholding and an attention mechanism are added to the model, which can effectively process vibration signals with strong noise. In this paper, the real noise is simulated by adding Gaussian white noise in migration task experiments on small-sample datasets. The experimental results show that the algorithm has noise resistance.
Publisher
MDPI AG
Subject
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