Application of neural networks in diagnosing engine faults based on vibration signals
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Published:2024-04-22
Issue:94
Volume:
Page:22-30
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ISSN:1859-1043
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Container-title:Journal of Military Science and Technology
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language:
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Short-container-title:JMST
Author:
Nguyễn Đức Thành ,Tran Hoai Linh ,Nguyen Cong Phuong ,Phạm Văn Nam
Abstract
This paper investigates and applies artificial intelligence (AI) to improve the monitoring and diagnosis process of electrical engine faults based on vibration signals. The research aims to build a model to collect sample data from engines and utilize three different AI networks in this study, including YOLO (You Only Look Once), Resnet (Residual neural network), and SVM (Support Vector Machine). By applying these models to independently identify faults using the common input signal of vibration, particularly focusing on bearing-related faults in engine systems, the paper concentrates on exploring various faults. The experimental results presented in the paper demonstrate the accuracy of using these networks in diagnosing engine faults and provide important insights into the accuracy and practical applicability of AI networks in the field of industrial equipment maintenance and management.
Publisher
Academy of Military Science and Technology
Reference16 articles.
1. [1]. Rai, A., & Upadhyay, S. H., “A review on signal processing techniques utilized in the fault diagnosis of rolling element bearings”, Tribology International, 96, 289-306, (2016). 2. [2]. Saufi, S. R., Ahmad, Z. A. B., Leong, M. S., & Lim, M. H., “Challenges and opportunities of deep learning models for machinery fault detection and diagnosis”, A review. Ieee Access, 7, 122644-122662, (2019). 3. [3]. Zhao, Z., Wu, J., Li, T., Sun, C., Yan, R., & Chen, X., “Challenges and opportunities of AI-enabled monitoring, diagnosis & prognosis”, A review. Chinese Journal of Mechanical Engineering, 34(1), 1-29, (2021). 4. [4]. Tahir, M. M., Khan, A. Q., Iqbal, N., Hussain, A., & Badshah, S., “Enhancing fault classification accuracy of ball bearing using central tendency based time domain features”, IEEE Access, 5, 72-83, (2016). 5. [5]. Chen, Z.; Li, C.; Sanchez, R.V, “Gearbox fault identification and classification with convolutional neural networks”, Shock. Vib. 2015, 390134, (2015).
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