Publication

Hyperautomation Artificial Intelligence

2015 저널베어링의 이상상태 진단을 위한 데이텀 효용성 평가

본문

Journal
대한기계학회논문집 A권
Author
전병철, 정준하, 윤병동, 김연환, 배용채
Date
2015-08
Citation Index
SCOPUS, KCI 등재
Vol./ Page
제39권, 제8호
Year
2015
File
저널베어링의_이상상태_진단을_위한_데이텀_효용성_평가.pdf (1.7M) 4회 다운로드 DATE : 2024-04-30 12:44:23

Abstract 


Journal bearings support rotors using fluid film between the rotor and the stator. Generally, journal bearings are used in large rotor systems such as turbines in a power plant, because even in high-speed and load conditions, journal bearing systems run in a stable condition. To enhance the reliability of journal-bearing systems, in this paper, we study health-diagnosis algorithms that are based on the supervised learning method. Specifically, this paper focused on defining the unit of features, while other previous papers have focused on defining various features of vibration signals. We evaluate the features of various lengths or units on the separable ability basis. From our results, we find that one cycle datum in the time-domain and 60 cycle datum in the frequency domain are the optimal datum units for real-time journal-bearing diagnosis systems.