CCClim - A machine-learning powered cloud class climatology
收藏NIAID Data Ecosystem2026-05-01 收录
下载链接:
https://zenodo.org/record/8369201
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资源简介:
CCClim is based on cloud property retrievals from the European Space Agency's (ESA) Cloud\_cci dataset, adding relative occurrences of eight major cloud types as defined by the World Meteorological Organization (WMO) at 1° resolution.
The cloud types are predicted using a two stage machine learning framework, in which a 1 km pixel-level classifier is followed up with a grid-box scale Random Forest regression model.
CCClim's global coverage being almost gapless from 1982 to 2016 allows for performing process-oriented analyses of clouds on a climatological time scale. Similarly, the moderate spatial and temporal resolutions make it a lightweight dataset while enabling straightforward comparison to climate models.
The compressed tarball contains 35 netCDF files, each covering one calendar year. Each file provides daily averages of nine cloud-related variables and the nine classes (eight cloud types+undetermined) as per 1° grid box fractional amounts.
Cloud-related variables:
cloud water path
ice water path
liquid water path
cloud optical depth
effective liquid droplet radius at cloud top
effective ice particle radius at cloud top
cloud top pressure
surface temperature
cloud area fraction
Cloud types:
Ci: Cirrus/Cirrostratus
As: Altostratus
Ac: Altocumulus
St: Stratus
Sc: Stratocumulus
Cu: Cumulus
Ns: Nimbostratus
Dc: Deep convective
创建时间:
2023-10-18



