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صفحه اصلی
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The 4th International Conference on Electrical Machines and Drives
Acoustic Fault Diagnosis of Rolling Bearings in Induction Motors Using Time-Frequency Image Analysis
نویسندگان :
Erfan Madadi Mahani
1
Ahmad Mirabadi
2
Amir Hossein Karamali
3
Ali Rezazadeh
4
1- department of Railway Engineering Iran University of Science and Technology
2- department of Railway Engineering Iran University of Science and
3- department of Electrical Engineering Iran University of Science and Technology
4- department of Electrical Engineering Iran University of Science and Technology
کلمات کلیدی :
non-invasive fault detection،condition monitoring
چکیده :
Bearing failure detection in induction motors is critical to avoiding breakdowns and downtime in industrial processes. The analysis of the sound signals and the corresponding spectral signature makes it possible to detect bearing faults in a non-invasive way. For years, several bearing health monitoring systems have been proposed, including the use of sound and vibration sensors. At the same time, analysis of rolling element bearings is a widely accepted practice in the field of condition monitoring of rotating machinery. However, in many cases, the cost of installing an advanced accelerometer- based bearing condition monitoring system, currently the most popular solution in the industry, may be prohibitive due to the potentially long payback period in non-critical machinery. As a result, the human ear is frequently used as the first diagnostic tool, determining the nature of the produced sound. This paper compares machine learning and deep learning approaches to diagnose a rolling element bearing. Then we show how to classify bearing faults by converting 1-D bearing sound signals to 2-D scalogram images and applying transfer learning with a pretrained network. Transfer learning significantly reduces the time required for feature extraction and selection in conventional bearing diagnostic methods, while maintaining good accuracy for the data set used in this work.
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بیشتر
ثمین همایش، سامانه مدیریت کنفرانس ها و جشنواره ها - نگارش 41.5.3