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Gaussian-process emulation for integrating data-driven aerosol-cloud physics from simulation, satellite, and ground-based data

Authors :
Glassmeier, F. (author)
Hoffmann, Fabian (author)
Feingold, Graham (author)
Gryspeerdt, Edward (author)
van Hooft, J.A. (author)
Yamaguchi, Takanobu (author)
Johnson, Jill S. (author)
Carslaw, Ken S. (author)
Glassmeier, F. (author)
Hoffmann, Fabian (author)
Feingold, Graham (author)
Gryspeerdt, Edward (author)
van Hooft, J.A. (author)
Yamaguchi, Takanobu (author)
Johnson, Jill S. (author)
Carslaw, Ken S. (author)
Publication Year :
2022

Abstract

Data-driven quantification and parameterization of cloud physics in general, and of aerosol-cloud interactions in particular, rely on input data from observations or detailed simulations. These data sources have complementary limitations in terms of their spatial and temporal coverage and resolution; simulation data has the advantage of readily providing causality but cannot represent the full process complexity. In order to base data-driven approaches on comprehensive information, we therefore need ways to integrate different data sources. We discuss how the classical statistical technique of Gaussian-process emulation can be combined with specifically initialized ensembles of detailed cloud simulations (large-eddy simulations, LES) to provide a framework for evaluating data-driven descriptions of cloud characteristics and processes across different data sources. We specifically illustrate this approach for integrating LES and satellite data of aerosol-cloud interactions in subtropical stratocumulus cloud decks. We furthermore explore the extension of our framework to ground-based observations of Arctic mixed-phase clouds.<br />Atmospheric Remote Sensing

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1376663827
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.5194.ems2022-701