논문 상세보기

A study on Data Preprocessing for Developing Remaining Useful Life Predictions based on Stochastic Degradation Models Using Air Craft Engine Data KCI 등재

항공엔진 열화데이터 기반 잔여수명 예측력 향상을 위한 데이터 전처리 방법 연구

  • 언어KOR
  • URLhttps://db.koreascholar.com/Article/Detail/394800
구독 기관 인증 시 무료 이용이 가능합니다. 4,000원
한국산업경영시스템학회지 (Journal of Society of Korea Industrial and Systems Engineering)
한국산업경영시스템학회 (Society of Korea Industrial and Systems Engineering)
초록

Recently, a study of prognosis and health management (PHM) was conducted to diagnose failure and predict the life of air craft engine parts using sensor data. PHM is a framework that provides individualized solutions for managing system health. This study predicted the remaining useful life (RUL) of aeroengine using degradation data collected by sensors provided by the IEEE 2008 PHM Conference Challenge. There are 218 engine sensor data that has initial wear and production deviations. It was difficult to determine the characteristics of the engine parts since the system and domain-specific information was not provided. Each engine has a different cycle, making it difficult to use time series models. Therefore, this analysis was performed using machine learning algorithms rather than statistical time series models. The machine learning algorithms used were a random forest, gradient boost tree analysis and XG boost. A sliding window was applied to develop RUL predictions. We compared model performance before and after applying the sliding window, and proposed a data preprocessing method to develop RUL predictions. The model was evaluated by R-square scores and root mean squares error (RMSE). It was shown that the XG boost model of the random split method using the sliding window preprocessing approach has the best predictive performance.

목차
1. 연구 개요
2. 관련 문헌 연구
3. 연구 프로세스
4. 실험분석 및 결과
    4.1 전체 데이터를 통한 잔여수명 예측
    4.2 수명길이 군집별 잔여수명 예측
5. 결론 및 추후 연구과제
References
저자
  • Yeon Ah Yoon(경기대학교 일반대학원 산업경영공학과) | 윤연아
  • Jin Hyeong Jung(경기대학교 일반대학원 산업경영공학과) | 정진형
  • Jun Hyoung Lim(한컴MDS Intelligent System Engineering 사업본부) | 임준형
  • Tai-Woo Chang(경기대학교 산업경영공학과) | 장태우
  • Yong Soo Kim(경기대학교 산업경영공학과) | 김용수 Corresponding Author