Inverse Design of Optimal Stern Shape with Convolutional Neural Network-based Pressure Distribution

Oh, Sang-jin, Kang, Ju Young, Pak, Kyungryeong, Kim, Heejung, Shin, Sung-chul

arXiv.org Artificial Intelligence 

Hull form designing is an iterative process wherein the performance of the hull form needs to be checked via computational fluid dynamics calculations or model experiments. The stern shape has to undergo a process wherein the hull form variations from the pressure distribution analysis results are repeated until the resistance and propulsion efficiency meet the design requirements. In this study, the designer designed a pressure distribution that meets the design requirements; this paper proposes an inverse design algorithm that estimates the stern shape using deep learning. A convolutional neural network was used to extract the features of the pressure distribution expressed as a contour, whereas a multi-task learning model was used to estimate various sections of the stern shape.