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Stochastic Super-Resolution for Downscaling Time-Evolving Atmospheric
  Fields with a Generative Adversarial Network

Stochastic Super-Resolution for Downscaling Time-Evolving Atmospheric Fields with a Generative Adversarial Network

20 May 2020
J. Leinonen
D. Nerini
A. Berne
ArXivPDFHTML

Papers citing "Stochastic Super-Resolution for Downscaling Time-Evolving Atmospheric Fields with a Generative Adversarial Network"

17 / 17 papers shown
Title
Towards Kriging-informed Conditional Diffusion for Regional Sea-Level Data Downscaling
Towards Kriging-informed Conditional Diffusion for Regional Sea-Level Data Downscaling
Subhankar Ghosh
Arun Sharma
Jayant Gupta
Aneesh Subramanian
Shashi Shekhar
DiffM
59
5
0
28 Jan 2025
Kolmogorov Arnold Neural Interpolator for Downscaling and Correcting Meteorological Fields from In-Situ Observations
Kolmogorov Arnold Neural Interpolator for Downscaling and Correcting Meteorological Fields from In-Situ Observations
Zili Liu
Hao Chen
Lei Bai
Wenyuan Li
Zhengxia Zou
Zhenwei Shi
48
1
0
24 Jan 2025
A Likelihood-Based Generative Approach for Spatially Consistent
  Precipitation Downscaling
A Likelihood-Based Generative Approach for Spatially Consistent Precipitation Downscaling
Jose González-Abad
33
0
0
26 Jun 2024
Capturing Climatic Variability: Using Deep Learning for Stochastic
  Downscaling
Capturing Climatic Variability: Using Deep Learning for Stochastic Downscaling
Kiri Daust
Adam Monahan
48
2
0
31 May 2024
Precipitation nowcasting with generative diffusion models
Precipitation nowcasting with generative diffusion models
Andrea Asperti
Fabio Merizzi
Alberto Paparella
G. Pedrazzi
M. Angelinelli
Stefano Colamonaco
DiffM
25
17
0
13 Aug 2023
Inductive biases in deep learning models for weather prediction
Inductive biases in deep learning models for weather prediction
Jannik Thümmel
Matthias Karlbauer
S. Otte
C. Zarfl
Georg Martius
...
Thomas Scholten
Ulrich Friedrich
V. Wulfmeyer
B. Goswami
Martin Volker Butz
AI4CE
31
4
0
06 Apr 2023
On the modern deep learning approaches for precipitation downscaling
On the modern deep learning approaches for precipitation downscaling
B. Kumar
Kaustubh Atey
B. Singh
R. Chattopadhyay
N. Acharya
Manmeet Singh
R. Nanjundiah
A. S. Rao
MLAU
22
38
0
02 Jul 2022
A Generative Deep Learning Approach to Stochastic Downscaling of
  Precipitation Forecasts
A Generative Deep Learning Approach to Stochastic Downscaling of Precipitation Forecasts
L. Harris
Andrew T. T. McRae
Matthew Chantry
P. Dueben
T. Palmer
11
101
0
05 Apr 2022
Increasing the accuracy and resolution of precipitation forecasts using
  deep generative models
Increasing the accuracy and resolution of precipitation forecasts using deep generative models
Ilan Price
S. Rasp
AI4Cl
24
47
0
23 Mar 2022
Rotationally Equivariant Super-Resolution of Velocity Fields in
  Two-Dimensional Fluids Using Convolutional Neural Networks
Rotationally Equivariant Super-Resolution of Velocity Fields in Two-Dimensional Fluids Using Convolutional Neural Networks
Y. Yasuda
R. Onishi
13
4
0
22 Feb 2022
Combining data assimilation and machine learning to estimate parameters
  of a convective-scale model
Combining data assimilation and machine learning to estimate parameters of a convective-scale model
Stefanie Legler
T. Janjić
21
18
0
07 Sep 2021
Bridging observation, theory and numerical simulation of the ocean using
  Machine Learning
Bridging observation, theory and numerical simulation of the ocean using Machine Learning
Maike Sonnewald
Redouane Lguensat
Daniel C. Jones
P. Dueben
J. Brajard
Venkatramani Balaji
AI4Cl
AI4CE
30
99
0
26 Apr 2021
Controlled abstention neural networks for identifying skillful
  predictions for classification problems
Controlled abstention neural networks for identifying skillful predictions for classification problems
E. Barnes
R. Barnes
11
8
0
16 Apr 2021
Machine Learning for Stochastic Parameterization: Generative Adversarial
  Networks in the Lorenz '96 Model
Machine Learning for Stochastic Parameterization: Generative Adversarial Networks in the Lorenz '96 Model
D. Gagne
H. Christensen
A. Subramanian
A. Monahan
AI4CE
BDL
33
137
0
10 Sep 2019
A Style-Based Generator Architecture for Generative Adversarial Networks
A Style-Based Generator Architecture for Generative Adversarial Networks
Tero Karras
S. Laine
Timo Aila
262
10,183
0
12 Dec 2018
Generative Adversarial Networks and Perceptual Losses for Video
  Super-Resolution
Generative Adversarial Networks and Perceptual Losses for Video Super-Resolution
Alice Lucas
Santiago López-Tapia
Rafael Molina
Aggelos K. Katsaggelos
GAN
SupR
36
171
0
14 Jun 2018
Convolutional LSTM Network: A Machine Learning Approach for
  Precipitation Nowcasting
Convolutional LSTM Network: A Machine Learning Approach for Precipitation Nowcasting
Xingjian Shi
Zhourong Chen
Hao Wang
Dit-Yan Yeung
W. Wong
W. Woo
201
7,816
0
13 Jun 2015
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