Skip to content
Extra Form
Abstract In the design process of hull form, several candidates of hull forms are generated, and CFD (Computational Fluid Dynamics) analysis is typically used to evaluate the hydrodynamic performance of the candidates. If the performance of the evaluated hull form is not good, it is improved through the iterative process of redesigning or fairing the hull form. However, there is a problem that CFD analysis takes a long time to calculate. As the design period of the ship is limited, the iteration is not sufficient to find the optimal hull form. To solve this problem, in this study, we proposed a method to evaluate the performance within a short time by skipping CFD analysis using a deep learning model. To train a deep learning model for evaluating the performance of hull forms, it takes a long time to generate data and train the model, but once the model is trained well, the performance of the hull form can be estimated quickly using the trained model. The hull forms used for training the model are generated by deforming the reference hull form using FFD (Free Form Deformation). The performances derived from the CFD analysis are used as a ground truth. For the better precision of estimation, various structures of the deep learning model were compared, and we selected an appropriate model to predict performances of the hull forms. By using the proposed model, many candidates can be evaluated when designing the hull form. In addition, the efficiency of the design process of the hull form can be increased by selecting only a few good alternatives and performing CFD. In this study, from data generation for the deep learning model, a prediction model’s structure and learning process were proposed and applied to evaluate the performance of various hull forms.
Publication Date 2022-10-09

Jin-Hyeok Kim, Myung-Il Roh, In-Chang Yeo, Ki-Su Kim, Min-Jae Oh, Sejin Oh, "Estimation Model of Hydrodynamic Performance Using Hull Form Variation and Deep Learning", Proceedings of International Symposium on PRADS(Practical Design of Ships and Other Floating Structures) 2022, Dubrovnik, Croatia, pp. 82, 2022.10.09-13


List of Articles
번호 분류 제목 Publication Date
506 International Conference Jisang Ha, Myung-Il Roh, Min-Chul Kong, Mijin Kim, Jeoungyoun Kim, Nam-Kug Ku, "An Automated Method for Pipe Routing in Ship Unit Modules", Proceedings of IMDC 2024, Amsterdam, Netherland, 2024.06.02-06 2024-06-02
505 International Conference Min-Chul Kong, Myung-Il Roh, In-Chang Yeo, In-Su Han, Dongki Min, Dongguen Jeong, "Methods for Graph Conversion and Pattern Recognition for P&IDs", Proceedings of IMDC 2024, Amsterdam, Netherland, 2024.06.02-06 2024-06-02
504 Domestic Conference 전도현, 노명일, 이혜원, "데이터 불확실성 기반 충돌 위험도 평가 및 강화 학습 기반 충돌 회피", 2024년도 스마트전기선박연구회 동계학술발표회, 부산, 2024.02.15-16 2024-02-16
503 Domestic Conference 박동규, 노명일, 하지상, "추진 체계 선정을 포함한 무인수상정 초기 제원 최적화 방법", 2024년도 한국CDE학회 동계학술발표회, 평창, pp. 241, 2024.01.29-02.01 file 2024-01-31
502 Domestic Conference 공민철, 노명일, 하지상, 한인수, 김미진, 김정연, "선박 내 배관의 자동 배치를 위한 P&ID의 그래프 변환 방법", 2024년도 한국CDE학회 동계학술발표회, 평창, pp. 129, 2024.01.29-02.01 file 2024-01-30
501 Domestic Conference 여인창, 노명일, 공민철, 유동훈, 진은석, "LIDAR를 이용한 선박의 위치 예측 알고리즘", 2024년도 한국CDE학회 동계학술발표회, 평창, pp. 99, 2024.01.29-02.01 file 2024-01-30
500 Domestic Conference 한인수, 노명일, 공민철, 이정렬, 박서윤, "의미 유사도 기반의 선박 규정 검색 알고리즘", 2024년도 한국CDE학회 동계학술발표회, 평창, pp. 126, 2024.01.29-02.01 file 2024-01-30
499 Domestic Conference 김진혁, 노명일 ,여인창, "MLP 기반 상선의 선형 변환 방법", 2024년도 한국CDE학회 동계학술발표회, 평창, pp. 28, 2024.01.29-02.01 file 2024-01-30
498 Domestic Conference 김하연, 노명일, 하지상, "해상 장애물 추적을 위한 혼합 추적 방법", 2024년도 한국CDE학회 동계학술발표회, 평창, pp. 94, 2024.01.29-02.01 file 2024-01-30
497 Domestic Conference 하지상, 노명일, 공민철, 한인수, 김미진, 김정연, "전문가 지식을 고려한 선박 유닛 모듈의 배관 배치 방법", 2024년도 한국CDE학회 동계학술발표회, 평창, pp. 124, 2024.01.29-02.01 file 2024-01-30
Board Pagination Prev 1 2 3 4 5 6 7 8 9 10 ... 51 Next
/ 51

Powered by Xpress Engine / Designed by Sketchbook

sketchbook5, 스케치북5

sketchbook5, 스케치북5

나눔글꼴 설치 안내


이 PC에는 나눔글꼴이 설치되어 있지 않습니다.

이 사이트를 나눔글꼴로 보기 위해서는
나눔글꼴을 설치해야 합니다.

설치 취소