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앙상블 기법을 이용한 선박 메인엔진 빅데이터의 이상치 탐지
Outlier detection of main engine data of a ship using ensemble method
김동현 ( Dong-hyun Kim ) , 이지환 ( Ji-hwan Lee ) , 이상봉 ( Sang-bong Lee ) , 정봉규 ( Bong-kyu Jung )
UCI I410-ECN-0102-2021-500-001239546
* 발행 기관의 요청으로 이용이 불가한 자료입니다.

This paper proposes an outlier detection model based on machine learning that can diagnose the presence or absence of major engine parts through unsupervised learning analysis of main engine big data of a ship. Engine big data of the ship was collected for more than seven months, and expert knowledge and correlation analysis were performed to select features that are closely related to the operation of the main engine. For unsupervised learning analysis, ensemble model wherein many predictive models are strategically combined to increase the model performance, is used for anomaly detection. As a result, the proposed model successfully detected the anomalous engine status from the normal status. To validate our approach, clustering analysis was conducted to find out the different patterns of anomalies the anomalous point. By examining distribution of each cluster, we could successfully find the patterns of anomalies.

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[자료제공 : 네이버학술정보]
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