Super-Resolution works for coastal simulations
- URL: http://arxiv.org/abs/2408.16553v1
- Date: Thu, 29 Aug 2024 14:16:13 GMT
- Title: Super-Resolution works for coastal simulations
- Authors: Zhi-Song Liu, Markus Buttner, Vadym Aizinger, Andreas Rupp,
- Abstract summary: High-resolution simulations are necessary to advance understanding of many processes, specifically, to predict flooding from tsunamis and storm surges.
We propose a Deep Network for Super-resolution enhancement to efficiently learn high-resolution numerical solutions.
Our method shows superior super-resolution quality and fast computation compared to the state-of-the-art methods.
- Score: 6.263499279406057
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Learning fine-scale details of a coastal ocean simulation from a coarse representation is a challenging task. For real-world applications, high-resolution simulations are necessary to advance understanding of many coastal processes, specifically, to predict flooding resulting from tsunamis and storm surges. We propose a Deep Network for Coastal Super-Resolution (DNCSR) for spatiotemporal enhancement to efficiently learn the high-resolution numerical solution. Given images of coastal simulations produced on low-resolution computational meshes using low polynomial order discontinuous Galerkin discretizations and a coarse temporal resolution, the proposed DNCSR learns to produce high-resolution free surface elevation and velocity visualizations in both time and space. To efficiently model the dynamic changes over time and space, we propose grid-aware spatiotemporal attention to project the temporal features to the spatial domain for non-local feature matching. The coordinate information is also utilized via positional encoding. For the final reconstruction, we use the spatiotemporal bilinear operation to interpolate the missing frames and then expand the feature maps to the frequency domain for residual mapping. Besides data-driven losses, the proposed physics-informed loss guarantees gradient consistency and momentum changes. Their combination contributes to the overall 24% improvements in RMSE. To train the proposed model, we propose a large-scale coastal simulation dataset and use it for model optimization and evaluation. Our method shows superior super-resolution quality and fast computation compared to the state-of-the-art methods.
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