해상크레인 윈치 감속기의 기계학습기반 실시간 상태모니터링 시스템 개발Development of Real-time Condition Monitoring System Based on Machine Learning for Winch Equipment of Floating Crane
- Other Titles
 - Development of Real-time Condition Monitoring System Based on Machine Learning for Winch Equipment of Floating Crane
 
- Authors
 - 황세윤; 이장현; 김광식; 오재원; 민천홍
 
- Issue Date
 - 2020
 
- Publisher
 - 한국CDE학회
 
- Keywords
 - Real-time monitoring; Prognostics and health management; Condition monitoring; Na?ve Bayes classifier; Floating Crane
 
- Citation
 - 한국CDE학회 논문집, v.25, no.4, pp 445 - 454
 
- Pages
 - 10
 
- Journal Title
 - 한국CDE학회 논문집
 
- Volume
 - 25
 
- Number
 - 4
 
- Start Page
 - 445
 
- End Page
 - 454
 
- URI
 - https://www.kriso.re.kr/sciwatch/handle/2021.sw.kriso/303
 
- DOI
 - 10.7315/CDE.2020.445
 
- ISSN
 - 2508-4003
2508-402X 
- Abstract
 - This study introduces development examples of monitoring system for winch equipment, the main equipment of floating cranes. The detail process was introduced to develop a system that can acquire sensor data in real time, monitor operating conditions and fault diagnosis. The proposed monitoring system is designed for winch equipment, which is a key equipment of the offshore crane. The system was developed for bearing part, which frequently causes failures in the winch equipment. In addition, we would like to introduce a relatively low-cost H/W configuration to facilitate application in small and medium-sized industries. The monitoring methods have been implemented by applying the method of Na?ve Bayes classification based on the method of supervised learning.
 
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