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Ship Motion-Based Prediction of Damage Locations Using Bidirectional Long Short-Term Memoryopen access손상 선박 운동 데이터를 이용한 양방향 LSTM 기반 손상 위치 추정

Other Titles
손상 선박 운동 데이터를 이용한 양방향 LSTM 기반 손상 위치 추정
Authors
손혜영김기용Kang, Hee JinChoi, JinLee, Dong kon신성철
Issue Date
10월-2022
Publisher
한국해양공학회
Citation
한국해양공학회지, v.36, no.5, pp 295 - 302
Pages
8
Journal Title
한국해양공학회지
Volume
36
Number
5
Start Page
295
End Page
302
URI
https://www.kriso.re.kr/sciwatch/handle/2021.sw.kriso/9393
DOI
10.26748/KSOE.2022.026
ISSN
1225-0767
2287-6715
Abstract
The initial response to a marine accident can play a key role to minimize the accident. Therefore, various decision support systems have been developed using sensors, simulations, and active response equipment. In this study, we developed an algorithm to predict damage locations using ship motion data with bidirectional long short-term memory (BiLSTM), a type of recurrent neural network. To reflect the low frequency ship motion characteristics, 200 time-series data collected for 100 s were considered as input values. Heave, roll, and pitch were used as features for the prediction model. The F1-score of the BiLSTM model was 0.92; this was an improvement over the F1-score of 0.90 of a prior model. Furthermore, 53 of 75 locations of damage had an F1-score above 0.90. The model predicted the damage location with high accuracy, allowing for a quick initial response even if the ship did not have flood sensors. The model can be used as input data with high accuracy for a real-time progressive flooding simulator on board.
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