0% Complete
صفحه اصلی
/
The 4th International Conference on Electrical Machines and Drives
Intelligent Fault Diagnosis of Gearbox in Rotating Machinery Using Adversarial Neural Networks under Variable Speeds
نویسندگان :
Saba Abhari
1
Mostafa Abedi
2
Javad Hasanpour Sangelaji
3
1- Shahid Beheshti University Tehran, Iran
2- Shahid Beheshti University Tehran, Iran
3- Shahid Beheshti University Tehran, Iran
کلمات کلیدی :
rotary machinery،generative adversarial network،fault detection،gearbox
چکیده :
This research presents an intelligent fault diagnosis method for gearbox systems in rotating machinery using Generative Adversarial Networks (GANs). Due to variable speeds and the scarcity of reliable data in real-world conditions, accurate fault detection faces significant challenges. While GANs can generate realistic synthetic data, this study leverages adversarial training, aiming to make the diagnostic system resilient to speed variations. By combining adversarial learning with real data, diagnostic models can better recognize various fault patterns and improve detection accuracy. The primary goal of this study is to enhance the precision and reliability of gearbox fault diagnosis under different operational conditions using GANs. With deep learning techniques, the proposed approach can identify various gearbox faults even under limited and fluctuating data conditions. Experimental results demonstrate that this approach improves detection performance and fault classification accuracy compared to traditional methods.
لیست مقالات
لیست مقالات بایگانی شده
تشخیص عیب عایقی میان لایهای هسته استاتور در موتورهای سه فاز القایی
بهرام نوری - منصور اوجاقی
Design-Oriented Analysis of A DC Motor Drive Considering DC Bus Stability
Mohammad Mohsen Rahimian - Mohsen Ghorbanali Afjeh - Mehdi Fazeli
A Novel of Buck topology for Active Magnetic Bearings used in High-Speed Permanent Magnet Moto
Pedram Pakravan
Real-time temperature estimation of permanent magnets in a PMSM using a hybrid ANN and Lumped-Parameters Thermal Network
Mohammadreza Bagheri - Alireza Shokripour - Teymoor Ghanbari - Ebrahim Farjah
Minimizing Torque Ripple in Synchronous Reluctance Motors Through Rotor Shape Optimization with Particle Swarm Algorithm
Mohammadreza Naeimi - Karim Abbaszadeh
Integrated Simulation of an E-Bike Powertrain and Vehicle Dynamics Using MATLAB/Simulink
ِDanial Gharibi - Mojtaba Mirsalim
Optimal Adaptive Robust Pitch Controller Specifically Designed for The National Renewable Energy Laboratory Wind Turbine Mode
Pedram Pakravan
Optimization and Enhancing the Torque Profile of a Novel Double-Layer Radial-Flux Magnetic Gear Using a DOE Method
Mohammad Mardani - Mahdi Abolghasemi - Aghil Ghaheri - Seyyed Ebrahim Afjei
A transfer learning based CNN for dynamic security assessment with small datasets and unknown data
ساسان آزاد - Nazanin Pourmoradi - Mohammad Taghi Ameli
Low-Cost Semi-Hard Material in High-Speed 6/2 Switched Reluctance Motor For Eliminate Torque Dead-Zone and Torque Enhancement
Aydin Yousefi Javid - Alireza Sohrabzadeh - Hossein Torkaman
بیشتر
ثمین همایش، سامانه مدیریت کنفرانس ها و جشنواره ها - نگارش 43.6.0