Clouds play a key role in regulating climate change but are difficult to simulate within Earth system models (ESMs). Improving the representation of clouds is one of the key tasks towards more robust climate change projections. This study introduces a new machine-learning based framework relying on satellite observations to improve understanding of the representation of clouds and their relevant processes in climate models. The proposed method is capable of assigning distributions of established cloud types to coarse data. It facilitates a more objective evaluation of clouds in ESMs and improves the consistency of cloud process analysis. The method is built on satellite data from the MODIS instrument labelled by deep neural networks with cl...
International audienceThe evaluation of key cloud properties such as cloud cover, vertical profile a...
Clouds play a vital role in Earth's energy balance by modulating atmospheric processes, thus it is c...
Climate change is stated as one of the largest issues of our time, resulting in many unwanted effect...
Climate models are an essential tool for understanding future climate and preparing for the challeng...
The representation of shallow trade wind convective clouds in climate models dominates the uncertain...
The Cloud Climate Change Initiative (Cloud_cci) satellite simulator has been developed to enable com...
Machine learning (ML) techniques represent a promising avenue to enhance climate model evaluation, b...
We develop a deep convolutional neural network for determination of cloud types in low-resolution da...
One way of reducing the uncertainty involved in determining the radiative forcing of climate change ...
One of the greatest sources of uncertainty in future climate projections comes from limitations in m...
We present a framework for cloud characterization that leverages modern unsupervised deep learning t...
To date, no observation-based proxy for climate change has been successful in quantifying the feedba...
The representation of clouds in Global Climate Models (GCMs) remains a major source of uncertainty i...
Meteorological features, such as clouds, can be observed in 2 ways - from ground stations and, more ...
A promising method for improving the representation of clouds in climate models, and hence climate p...
International audienceThe evaluation of key cloud properties such as cloud cover, vertical profile a...
Clouds play a vital role in Earth's energy balance by modulating atmospheric processes, thus it is c...
Climate change is stated as one of the largest issues of our time, resulting in many unwanted effect...
Climate models are an essential tool for understanding future climate and preparing for the challeng...
The representation of shallow trade wind convective clouds in climate models dominates the uncertain...
The Cloud Climate Change Initiative (Cloud_cci) satellite simulator has been developed to enable com...
Machine learning (ML) techniques represent a promising avenue to enhance climate model evaluation, b...
We develop a deep convolutional neural network for determination of cloud types in low-resolution da...
One way of reducing the uncertainty involved in determining the radiative forcing of climate change ...
One of the greatest sources of uncertainty in future climate projections comes from limitations in m...
We present a framework for cloud characterization that leverages modern unsupervised deep learning t...
To date, no observation-based proxy for climate change has been successful in quantifying the feedba...
The representation of clouds in Global Climate Models (GCMs) remains a major source of uncertainty i...
Meteorological features, such as clouds, can be observed in 2 ways - from ground stations and, more ...
A promising method for improving the representation of clouds in climate models, and hence climate p...
International audienceThe evaluation of key cloud properties such as cloud cover, vertical profile a...
Clouds play a vital role in Earth's energy balance by modulating atmospheric processes, thus it is c...
Climate change is stated as one of the largest issues of our time, resulting in many unwanted effect...