- 영문명
- Development of Online-learning based Adaptive Anomaly Detection Algorithm for Monitoring Data Analysis on Caisson Type Breakwater
- 발행기관
- 한국연안방재학회
- 저자명
- 진승섭 민지영 김영택 김률리
- 간행물 정보
- 『한국연안방재학회지』제10권 제1호, 1~12쪽, 전체 12쪽
- 주제분류
- 사회과학 > 사회과학일반
- 파일형태
- 발행일자
- 2023.01.31
국문 초록
영문 초록
Most port structures are massive and data measured on them sensitively changes to the surrounding environment including sea waves, tides, wind, and other operational conditions so it might be difficult to extract and long-term monitor their own features such as natural frequencies and mode shapes. To solve this problem, an anomaly detection algorithm with online learning was developed for the analysis of monitoring data on the port structures. For this, data were first measured on a 1/50 scaled model of caisson type breakwater through hydraulic model experiments, and the characteristics of data were investigated. Then an unsupervised algorithm was developed to online detect abnormal conditions caused by the drift, which can track the reconstruction error from the principal component analysis and the Euclidean distance between original and reconstructed signals. The experimental results showed that the proposed algorithm could be successfully applied to time-dependent dataset shifts with high accuracy and automatically calculate the threshold based on the adaptive model.
목차
1. 서 론
2. 온라인 학습 기반 적응적 이상상태 탐지 알고리즘
3. 실험 및 검증
4. 결 론
감사의 글
References
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