Multi-scale Fusion Fault Diagnosis Method Based on Two-Dimensionaliztion
Sequence in Complex Scenarios
- URL: http://arxiv.org/abs/2304.05198v1
- Date: Tue, 11 Apr 2023 13:05:50 GMT
- Title: Multi-scale Fusion Fault Diagnosis Method Based on Two-Dimensionaliztion
Sequence in Complex Scenarios
- Authors: Weiyang Jin
- Abstract summary: Rolling bearings are critical components in rotating machinery, and their faults can cause severe damage.
Early detection of abnormalities is crucial to prevent catastrophic accidents.
Traditional and intelligent methods have been used to analyze time series data, but in real-life scenarios, sensor data is often noisy and cannot be accurately characterized in the time domain.
This paper proposes an improved convolutional neural network method with a multi-scale feature fusion model and deep learning compression techniques for deployment in industrial scenarios.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Rolling bearings are critical components in rotating machinery, and their
faults can cause severe damage. Early detection of abnormalities is crucial to
prevent catastrophic accidents. Traditional and intelligent methods have been
used to analyze time series data, but in real-life scenarios, sensor data is
often noisy and cannot be accurately characterized in the time domain, leading
to mode collapse in trained models. Two-dimensionalization methods such as the
Gram angle field method (GAF) or interval sampling have been proposed, but they
lack mathematical derivation and interpretability. This paper proposes an
improved GAF combined with grayscale images for convolution scenarios. The main
contributions include illustrating the feasibility of the approach in complex
scenarios, widening the data set, and introducing an improved convolutional
neural network method with a multi-scale feature fusion diffusion model and
deep learning compression techniques for deployment in industrial scenarios.
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