This datasets supports the paper "Stochastic Super-Resolution for Downscaling Time-Evolving Atmospheric Fields with a Generative Adversarial Network" submitted to IEEE Transactions in Geoscience and Remote Sensing. A preprint of the paper can be found here: https://arxiv.org/abs/2005.10374. The code that uses these data is available at https://github.com/jleinonen/downscaling-rnn-gan. The file "goes-samples-2019-128x128.nc" contains the training dataset called "GOES-COT" in the paper, consisting of cloud optical depth measurements from the GOES-16 satellite. The files "gen_weights*.nc" contain the generator weights saved at different time steps during training for the two different datasets described in the paper
In light of the success of superresolution (SR) applications in computer vision, recent studies have...
This study develops a neural-network-based approach for emulating high-resolution modeled precipitat...
This dataset contains replication data for: Jussi Leinonen, Alexandre Guillaume and Tianle Yuan (201...
Datasets and source codes for the manuscript "Surrogate Downscaling of Mesoscale Wind Fields Using E...
Inspired by the success of superresolution applications in computer vision, deep neural networks hav...
Code to accompany paper "A Generative Deep Learning Approach to Stochastic Downscaling of Precipitat...
Despite continuous improvements, precipitation forecasts are still not as accurate and reliable as t...
Weather forecasts at high spatio-temporal resolution are of great relevance for industry and society...
Stochastic parameterizations account for uncertainty in the representation of unresolved subgrid pro...
Extra-Tropical Cyclones (ETCs) are major storm system ruling and influencing the atmospheric structu...
We demonstrate the feasibility of solving atmospheric remote sensing problems with machine learning ...
Spatially and temporally resolved aerosol data are essential for conducting air quality studies and ...
This document is a description of all files and scripts used for the MSc thesis research of Avelon G...
This dataset contains image patches used to train deep networks for super-resolution reconstruction,...
This thesis builds on the research that uses Bayesian neural networks to generate Global Precipitati...
In light of the success of superresolution (SR) applications in computer vision, recent studies have...
This study develops a neural-network-based approach for emulating high-resolution modeled precipitat...
This dataset contains replication data for: Jussi Leinonen, Alexandre Guillaume and Tianle Yuan (201...
Datasets and source codes for the manuscript "Surrogate Downscaling of Mesoscale Wind Fields Using E...
Inspired by the success of superresolution applications in computer vision, deep neural networks hav...
Code to accompany paper "A Generative Deep Learning Approach to Stochastic Downscaling of Precipitat...
Despite continuous improvements, precipitation forecasts are still not as accurate and reliable as t...
Weather forecasts at high spatio-temporal resolution are of great relevance for industry and society...
Stochastic parameterizations account for uncertainty in the representation of unresolved subgrid pro...
Extra-Tropical Cyclones (ETCs) are major storm system ruling and influencing the atmospheric structu...
We demonstrate the feasibility of solving atmospheric remote sensing problems with machine learning ...
Spatially and temporally resolved aerosol data are essential for conducting air quality studies and ...
This document is a description of all files and scripts used for the MSc thesis research of Avelon G...
This dataset contains image patches used to train deep networks for super-resolution reconstruction,...
This thesis builds on the research that uses Bayesian neural networks to generate Global Precipitati...
In light of the success of superresolution (SR) applications in computer vision, recent studies have...
This study develops a neural-network-based approach for emulating high-resolution modeled precipitat...
This dataset contains replication data for: Jussi Leinonen, Alexandre Guillaume and Tianle Yuan (201...