해상크레인 윈치 감속기의 기계학습기반 실시간 상태모니터링 시스템 개발

Development of Real-time Condition Monitoring System Based on Machine Learning for Winch Equipment of Floating Crane

초록

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 Naïve Bayes classification based on the method of supervised learning.

키워드

Real-time monitoringPrognostics and health managementCondition monitoringNaïve Bayes classifierFloating Crane
제목
해상크레인 윈치 감속기의 기계학습기반 실시간 상태모니터링 시스템 개발
제목 (타언어)
Development of Real-time Condition Monitoring System Based on Machine Learning for Winch Equipment of Floating Crane
저자
황세윤이장현김광식오재원민천홍
DOI
10.7315/CDE.2020.445
발행일
2020-12
유형
Y
저널명
한국CDE학회 논문집
25
4
페이지
445 ~ 454