Machine-learned cloud classes from satellite data for process-oriented climate model evaluation
A. Kaps, A. Lauer, G. Camps-Valls, P. Gentine, L. G\'omez-Chova, V., Eyring

TL;DR
This paper presents a machine learning framework that uses satellite data to classify cloud types, enabling more objective and process-oriented evaluation of clouds in climate models, which improves climate change projections.
Contribution
It introduces a novel machine learning approach that assigns cloud type distributions to coarse climate model data using satellite observations and deep neural networks.
Findings
The method produces physically consistent cloud type distributions.
It is applicable to datasets with physical cloud variables similar to MODIS.
The approach enhances systematic evaluation of clouds in climate models.
Abstract
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 cloud types defined by the World Meteorological Organization (WMO), using cloud type labels from CloudSat as ground truth. The method is applicable to…
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Taxonomy
TopicsAtmospheric and Environmental Gas Dynamics · Climate variability and models · Meteorological Phenomena and Simulations
