Inpainting Computational Fluid Dynamics with Deep Learning
Inpainting Computational Fluid Dynamics with Deep Learning
Fluid data completion is a research problem with high potential benefit for both experimental and computational fluid dynamics. An effective fluid data completion method reduces the required number of sensors in a fluid dynamics experiment, and allows a coarser and more adaptive mesh for a Computational Fluid Dynamics (CFD) simulation. However, the ill-posed nature of the fluid data completion problem makes it prohibitively difficult to obtain a theoretical solution and presents high numerical uncertainty and instability for a data-driven approach (e.g., a neural network model). To address these challenges, we leverage recent advancements in computer vision, employing the vector quantization technique to map both complete and incomplete fluid data spaces onto discrete-valued lower-dimensional representations via a two-stage learning procedure. We demonstrated the effectiveness of our approach on Kolmogorov flow data (Reynolds number: 1000) occluded by masks of different size and arrangement. Experimental results show that our proposed model consistently outperforms benchmark models under different occlusion settings in terms of point-wise reconstruction accuracy as well as turbulent energy spectrum and vorticity distribution.
Zijie Li、Amir Barati Farimani、Wilson Zhen、Dule Shu
力学计算技术、计算机技术
Zijie Li,Amir Barati Farimani,Wilson Zhen,Dule Shu.Inpainting Computational Fluid Dynamics with Deep Learning[EB/OL].(2024-02-26)[2025-07-16].https://arxiv.org/abs/2402.17185.点此复制
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