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http://dx.doi.org/10.7471/ikeee.2022.26.3.488

Building Bearing Fault Detection Dataset For Smart Manufacturing  

Kim, Yun-Su (Dept. of Information and Communication Engineering, Changwon National University)
Bae, Seo-Han (Dept. of Information and Communication Engineering, Changwon National University)
Seok, Jong-Won (Dept. of Information and Communication Engineering, Changwon National University)
Publication Information
Journal of IKEEE / v.26, no.3, 2022 , pp. 488-493 More about this Journal
Abstract
In manufacturing sites, bearing fault in eletrically driven motors cause the entire system to shut down. Stopping the operation of this environment causes huge losses in time and money. The reason of this bearing defects can be various factors such as wear due to continuous contact of rotating elements, excessive load addition, and operating environment. In this paper, a motor driving environment is created which is similar to the domestic manufacturing sites. In addition, based on the established environment, we propose a dataset for bearing fault detection by collecting changes in vibration characteristics that vary depending on normal and defective conditions. The sensor used to collect the vibration characteristics is Microphone G.R.A.S. 40PH-10. We used various machine learning models to build a prototype bearing fault detection system trained on the proposed dataset. As the result, based on the deep neural network model, it shows high accuracy performance of 92.3% in the time domain and 98.3% in the frequency domain.
Keywords
Manufacturing; Signal Processing; Machine Learning; Deep Learning; Anomaly Detection;
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  • Reference
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