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Abstract Hull form optimization presents a challenge of efficiently exploring a high-dimensional design space induced by complex geometries while managing the high computational costs of CFD (Computational Fluid Dynamics) analysis. To address this, optimization methods using surrogate models based on CFD data have been actively studied. However, obtaining sufficient training data for DoE (Design of Experiments) is difficult due to the high dimensionality of the design space and limited computing resources. Consequently, initial surrogate models built on sparse training data often exhibit rapid degradation in prediction accuracy outside the training domain, thereby compromising the reliability of the optimal solution. In this study, we proposed a hull form optimization method that iteratively updates the surrogate model by sequentially adding training data via an acquisition function. Specifically, GPR (Gaussian Process Regression) was used to simultaneously estimate the predicted resistance performance and its variance, enabling a quantitative assessment of uncertainty via the acquisition function. The UCB (Upper Confidence Bound), a linear combination of the predicted value and its variance, was used as the acquisition function to balance exploration of high-uncertainty regions with exploitation of areas where resistance performance improvement is expected. Based on the initial surrogate model, multiple hull forms that maximize the acquisition function were generated, and additional CFD analyses were performed to expand the training data. The surrogate model was then iteratively updated using the generated data, thereby mitigating prediction uncertainty and improving the accuracy of resistance performance predictions. Ultimately, the updated surrogate model served as a reliable substitute for CFD analysis, enabling efficient optimization while reducing computational costs. Applied to the KCS (KRISO Container Ship) optimization problem, the proposed method improved the surrogate model’s prediction accuracy and yielded an optimal hull form with superior resistance performance.
Publication Date 2026-05-19

Seung-Jun Oh, Myung-Il Roh, Jin-Hyeok Kim, Do-Hyeok Ahn, "Hull Form Optimization Method Using an Uncertainty-Based, Automatically Updated Surrogate Model", Proceedings of ACSMO 2026, Busan, Korea, 2026.05.17-21.


List of Articles
번호 분류 제목 Publication Date
164 International Conference Yun-Sik Kim, Myung-Il Roh, Ha-Yun Kim, In-Chang Yeo, Nam-Sun Son, "An Improved Method for Detection and Tracking of Maritime Obstacles Using Multiple-Sensor Fusion in Real-World Maritime Environments", G-NAOE 2026, Houston, USA, 2026.10.20-24 2026-10-20
163 International Conference Ha-Yun Kim, Myung-Il Roh, Do-Hyuk Ahn, In-Chang Yeo, Seong-Won Choi, "A Method for the Virtual Modeling and Performance Prediction of a Ship to Replace Sea Trials", Proceedings of ICCAS 2026, Singapore, 2026.09.14-16 2026-09-14
» International Conference Seung-Jun Oh, Myung-Il Roh, Jin-Hyeok Kim, Do-Hyeok Ahn, "Hull Form Optimization Method Using an Uncertainty-Based, Automatically Updated Surrogate Model", Proceedings of ACSMO 2026, Busan, Korea, 2026.05.17-21. file 2026-05-19
161 International Conference Gyeong-Hyeon Kang, Myung-Il Roh, In-Chang Yeo, "A Simulation Method for the Coastal Patrol Mission of Multiple Unmanned Surface Vehicles", Proceedings of ACSMO 2026, Busan, Korea, 2026.05.17-21. file 2026-05-19
160 International Conference Myung-Il Roh, "Introduction to AI-driven Improvements in Ship Design", International Expert Workshop on Design and Safety of Next-Generation Ships, Seoul, 2026.04.07-09 file 2026-04-07
159 International Conference Seong-Won Choi, Myung-Il Roh, Min-Chul Kong, In-Su Han, "A Method for Ship Pipe Routing Based on Transformer Architecture with Expert Knowledge", Proceedings of ICCAS 2026, Singapore, 2026.09.14-16 2026-09-14
158 International Conference In-Su Han, Myung-Il Roh, In-Chang Yeo, Seong-Won Choi, Dohyun Chun, "A Method of Exemplar-Based Symbol Detection for Enhancing the Accuracy and Efficiency of Ship Fire and Safety Plan Review Processes", Proceedings of G-NAOE 2026, Houston, USA 2026-10-20
157 International Conference In-Su Han, Myung-Il Roh, Min-Chul Kong, Seong-Won Choi, Hwasup Jang, Yeonhwa Jo, Gapheon Lee, "A Method for the Automatic Revision Identification in Ship Drawings", Proceedings of ICCAS 2026, Singapore, 2026.09.14-16 2026-09-14
156 International Conference Seong-Won Choi, Myung-Il Roh, In-Chang Yeo, "A Method for Ship Collision Avoidance Based on Deep Reinforcement Learning Considering Uncertainty", Proceedings of OMAE 2026, Tokyo, Japan, 2026.06.07-12 file 2026-06-09
155 International Conference Yun-Sik Kim, Myung-Il Roh, Ha-Yun Kim, In-Chang Yeo, Nam-Sun Son, "An Improved Method for Detection and Tracking of Maritime Obstacles Using Multiple-Sensor Fusion", Proceedings of OMAE 2026, Tokyo, Japan, 2026.06.07-12 file 2026-06-09
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