Super Resolution On Global Weather Forecasts
Lawrence Zhang, Adam Yang, Rodz Andrie Amor, Bryan Zhang, Dhruv Rao

TL;DR
This paper explores applying super resolution techniques to enhance the spatial accuracy of global weather forecasts generated by deep learning models, aiming to improve resolution from 1 degree to 0.5 degrees.
Contribution
It introduces a novel super resolution approach for deep learning weather forecasts, specifically improving the spatial resolution of GraphCast temperature predictions.
Findings
Achieved higher spatial resolution in weather predictions.
Demonstrated comparable accuracy to traditional models.
Enhanced detail in global temperature forecasts.
Abstract
Weather forecasting is a vitally important tool for tasks ranging from planning day to day activities to disaster response planning. However, modeling weather has proven to be challenging task due to its chaotic and unpredictable nature. Each variable, from temperature to precipitation to wind, all influence the path the environment will take. As a result, all models tend to rapidly lose accuracy as the temporal range of their forecasts increase. Classical forecasting methods use a myriad of physics-based, numerical, and stochastic techniques to predict the change in weather variables over time. However, such forecasts often require a very large amount of data and are extremely computationally expensive. Furthermore, as climate and global weather patterns change, classical models are substantially more difficult and time-consuming to update for changing environments. Fortunately, with…
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Taxonomy
TopicsAdvanced Image Processing Techniques · Image and Signal Denoising Methods · Advanced Image Fusion Techniques
