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arxiv: 2307.04010 · v1 · pith:UUEHVV5Fnew · submitted 2023-07-08 · ⚛️ physics.flu-dyn · cs.CE· cs.LG

Understanding the Efficacy of U-Net & Vision Transformer for Groundwater Numerical Modelling

classification ⚛️ physics.flu-dyn cs.CEcs.LG
keywords u-netgroundwatermodellingmodelsdatavisionaccuracyapplications
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This paper presents a comprehensive comparison of various machine learning models, namely U-Net, U-Net integrated with Vision Transformers (ViT), and Fourier Neural Operator (FNO), for time-dependent forward modelling in groundwater systems. Through testing on synthetic datasets, it is demonstrated that U-Net and U-Net + ViT models outperform FNO in accuracy and efficiency, especially in sparse data scenarios. These findings underscore the potential of U-Net-based models for groundwater modelling in real-world applications where data scarcity is prevalent.

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