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GSDNet: A deep learning model for downscaling the significant wave height based on NAFNet.

Authors :
Wu, Xiaoyu
Zhao, Rui
Chen, Hongyi
Wang, Zijia
Yu, Chen
Jiang, Xingjie
Liu, Weiguo
Song, Zhenya
Source :
Journal of Sea Research. Apr2024, Vol. 198, pN.PAG-N.PAG. 1p.
Publication Year :
2024

Abstract

Finer resolution is one of the development trends in ocean surface waves simulation and forecasting. However, high-resolution numerical models for ocean surface waves have led to an enormous increase in computational complexity, posing a challenge with respect to balancing computational efficiency and timeliness. To meet the demand for refined ocean surface waves simulation/forecasting and to address the computational efficiency challenge of high-resolution ocean surface waves models, we propose a downscaling model called the Global location-Specific transformation Downscaling Network (GSDNet) based on the non-autoregressive fusion network (NAFNet). By incorporating global location-specific transformation and introducing a land–sea distribution indicator, GSDNet can quickly and accurately map low-resolution significant wave heights to high-resolution grids. The results show that, compared with traditional interpolation methods such as the bilinear, inverse distance weight interpolation (IDW), and bicubic methods, the GSDNet model can reduce the global mean absolute error (MAE) by >77%. Compared with those of FourCastNet (FCN), the Koopman neural operator (KNO), the original NAFNet, and residual networks in deep learning from empirical downscaling methods (DL4DS_ResNet), the MAE decreases by >21%. Furthermore, the GSDNet model outperforms the other downscaling methods at the coastal boundary and for identifying the maximum significant wave height. In this work, we provide an effective solution for balancing computational efficiency and timeliness, which is important for improving the accuracy and reliability of ocean surface waves simulation/forecasting. • GSDNet demonstrates excellent downscaling ability for global wave heights. • GS is designed to capture fine features in margin regions. • GSDNet has a good generalization to apply in different resolutions via fine-tuning. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
13851101
Volume :
198
Database :
Academic Search Index
Journal :
Journal of Sea Research
Publication Type :
Academic Journal
Accession number :
176122017
Full Text :
https://doi.org/10.1016/j.seares.2024.102482