Affiliation:
1. BIM for Smart Engineering Centre, School of Engineering, Cardiff University, Cardiff CF24 3AA, UK
2. Aston Business School, Aston University, Birmingham B4 7ET, UK
Abstract
Intelligent fault diagnosis (IFD) is essential for preventative maintenance (PM) in Industry 4.0. Data-driven approaches have been widely accepted for IFD in smart manufacturing, and various deep learning (DL) models have been developed for different datasets and scenarios. However, an automatic and unified DL framework for developing IFD applications is still required. Hence, this work proposes an efficient framework integrating popular convolutional neural networks (CNNs) for IFD based on time-series data by leveraging automated machine learning (AutoML) and image-like data fusion. After normalisation, uniaxial or triaxial signals are reconstructed into -channel pseudo-images to satisfy the input requirements for CNNs and achieve data-level fusion simultaneously. Then, the model training, hyperparameter optimisation, and evaluation can be taken automatically based on AutoML. Finally, the selected model can be deployed on a cloud server or an edge device (via tiny machine learning). The proposed framework and method were validated via two case studies, demonstrating the framework’s availability for the automatic development of IFD applications and the effectiveness of the proposed data-level fusion method.
Subject
Electrical and Electronic Engineering,Industrial and Manufacturing Engineering,Control and Optimization,Mechanical Engineering,Computer Science (miscellaneous),Control and Systems Engineering
Reference40 articles.
1. Industrial Artificial Intelligence in Industry 4.0-Systematic Review, Challenges and Outlook;Peres;IEEE Access,2020
2. Applications of Unsupervised Deep Transfer Learning to Intelligent Fault Diagnosis: A Survey and Comparative Study;Zhao;IEEE Trans. Instrum. Meas.,2021
3. Deep learning-based intelligent fault diagnosis methods toward rotating machinery;Tang;IEEE Access,2020
4. Intelligent fault diagnosis of machines with small & imbalanced data: A state-of-the-art review and possible extensions;Zhang;ISA Trans.,2022
5. Qiu, J., Ran, J., Tang, M., Yu, F., and Zhang, Q. (2023). Fault Diagnosis of Train Wheelset Bearing Roadside Acoustics Considering Sparse Operation with GA-RBF. Machines, 11.
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