CFD-driven physics-informed generative adversarial networks for predicting AUV hydrodynamic performance

被引:1
|
作者
Liu, Jixin [1 ,2 ]
Yu, Fei [3 ]
Yan, Tianhong [4 ]
He, Bo [1 ]
Soares, C. Guedes [2 ]
机构
[1] Ocean Univ China, Fac Informat Sci & Engn, Qingdao 266404, Peoples R China
[2] Univ Lisbon, Ctr Marine Technol & Ocean Engn CENTEC, Inst Super Tecn, P-1049001 Lisbon, Portugal
[3] Shandong Univ Sci & Technol, Coll Ocean Sci & Engn, Qingdao 266590, Peoples R China
[4] China Jiliang Univ, Sch Mech & Elect Engn, Hangzhou 310018, Peoples R China
基金
中国博士后科学基金;
关键词
Autonomous underwater vehicles; Hull-appendage-propeller; Computational fluid dynamics; Physics-informed generative adversarial networks; Convolutional neural network; Multilayer perceptron; SURROGATE MODEL; OPTIMIZATION; DESIGN; SIMULATION;
D O I
10.1016/j.oceaneng.2024.119638
中图分类号
U6 [水路运输]; P75 [海洋工程];
学科分类号
0814 ; 081505 ; 0824 ; 082401 ;
摘要
A novel framework for predicting the hydrodynamic performance of autonomous underwater vehicles (AUVs) is proposed based on computational fluid dynamics (CFD) and physics-informed generative adversarial networks (PIGAN). The physics information is embedded in the generator and discriminator, improving prediction accuracy and efficiency. The antenna position, height, and propeller diameter are modelled parametrically. Ultimately, 27 design schemes are constructed by combining the three variables and their three levels in full permutations. In the present study, 1440 groups of sample points and 270 groups of response points are obtained through CFD simulation for PIGAN training and testing. Furthermore, the prediction performance of CFD and PIGAN is compared, and the results show that PIGAN has significant advantages in efficiency and generalisability. The effects of antenna position and height on the AUV's flow field and motion performance are systematically analysed using the validated method. The hull-appendage-propeller interaction is calculated and analysed. The results indicate that the size and layout of the appendage significantly affect the turbulence intensity, especially at the top of the appendage. External devices should be prioritised in an embedded design, with the necessary external sensors in an optimised layout to provide a positive wake flow.
引用
收藏
页数:15
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