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Get Free AccessThe advancement of artificial intelligence algorithms has gained growing interest in identifying the fault types in rotary machines, which is a high-efficiency but not a human-like module. Hence, in order to build a human-like fault identification module that could learn knowledge from the environment, in this paper, a deep reinforcement learning framework is proposed to provide an end-to-end training mode and a human-like learning process based on an improved Double Deep Q Network. In addition, to improve the convergence properties of the Deep Reinforcement Learning algorithm, the parameters of the former layers of the convolutional neural networks are transferred from a convolutional auto-encoder under an unsupervised learning process. The experiment results show that the proposed framework could efficiently extract the fault features from raw time-domain data and have higher accuracy than other deep learning models with balanced samples and better performance with imbalanced samples.
Daoguang Yang, Hamid Reza Karimi, Marek Pawełczyk (2023). A new intelligent fault diagnosis framework for rotating machinery based on deep transfer reinforcement learning. Control Engineering Practice, 134, pp. 105475-105475, DOI: 10.1016/j.conengprac.2023.105475.
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Type
Article
Year
2023
Authors
3
Datasets
0
Total Files
0
Language
English
Journal
Control Engineering Practice
DOI
10.1016/j.conengprac.2023.105475
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