Hull form optimization of fully parameterized small ships using characteristic curves and deep neural networks

IF 2.3 3区 工程技术 Q2 ENGINEERING, MARINE International Journal of Naval Architecture and Ocean Engineering Pub Date : 2024-01-01 DOI:10.1016/j.ijnaoe.2024.100596
Jin-Hyeok Kim , Myung-Il Roh , In-Chang Yeo
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Abstract

Designing a hull form typically involves beginning with a reference hull form based on ship owner requirements, editing the hull form to satisfy the requirements, and determining the most efficient hull form. Numerical analyses using Computational Fluid Dynamics (CFD) were employed to assess the performance of the hull form. However, these analyses require extensive computational resources, making it challenging to perform thorough analyses within the design timeframe. To address this issue, this paper proposes an approach that involves defining a range of hull forms with characteristic curves, predicting their performance using Deep Neural Networks (DNNs), and subsequently determining the optimal hull form based on these predictions. Initially, the hull form of a small ship was defined using four characteristic curves and parameterized using 29 variables. Fairness optimization was performed using these characteristic curves to define the hull form surface. By varying 29 parameters, 896 different hull forms were generated, with CFD analysis conducted for each variant. These data were then used to build a DNN model capable of predicting the performance based on hull form parameters. The accuracy of the DNN model was evaluated, resulting in a Mean Absolute Error (MAE) of 2.835%. Subsequently, the DNN model is combined with a genetic algorithm to identify the optimal set of parameters for the hull form, resulting in an optimal hull form. This optimization process revealed that the optimal hull form reduced the total hydrodynamic resistance by approximately 7% compared to the initial reference design. Consequently, this study demonstrates the effectiveness of the proposed method for deriving the optimal hull form for small ships.

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利用特性曲线和深度神经网络优化全参数化小型船舶的船体形式
船体设计通常包括根据船东要求设计参考船体,编辑船体以满足要求,并确定最有效的船体形式。采用计算流体动力学(CFD)进行数值分析,以评估船体形式的性能。然而,这些分析需要大量的计算资源,因此在设计时限内进行全面分析具有挑战性。为解决这一问题,本文提出了一种方法,包括定义一系列具有特征曲线的船体形式,使用深度神经网络(DNN)预测其性能,然后根据这些预测确定最佳船体形式。最初,使用四条特征曲线定义了一艘小型船舶的船体形式,并使用 29 个变量对其进行了参数化。利用这些特征曲线定义船体曲面,进行公平优化。通过改变 29 个参数,生成了 896 种不同的船体形式,并对每种变体进行了 CFD 分析。然后利用这些数据建立了 DNN 模型,该模型能够根据船体形式参数预测性能。对 DNN 模型的准确性进行了评估,得出的平均绝对误差 (MAE) 为 2.835%。随后,DNN 模型与遗传算法相结合,确定了船体形式的最佳参数集,从而得出了最佳船体形式。优化过程表明,与最初的参考设计相比,最佳船体形式减少了约 7% 的总流体动力阻力。因此,这项研究证明了所提出的小型船舶最佳船体形式推导方法的有效性。
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来源期刊
CiteScore
4.90
自引率
4.50%
发文量
62
审稿时长
12 months
期刊介绍: International Journal of Naval Architecture and Ocean Engineering provides a forum for engineers and scientists from a wide range of disciplines to present and discuss various phenomena in the utilization and preservation of ocean environment. Without being limited by the traditional categorization, it is encouraged to present advanced technology development and scientific research, as long as they are aimed for more and better human engagement with ocean environment. Topics include, but not limited to: marine hydrodynamics; structural mechanics; marine propulsion system; design methodology & practice; production technology; system dynamics & control; marine equipment technology; materials science; underwater acoustics; ocean remote sensing; and information technology related to ship and marine systems; ocean energy systems; marine environmental engineering; maritime safety engineering; polar & arctic engineering; coastal & port engineering; subsea engineering; and specialized watercraft engineering.
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