Spectrum Synergy for Investigating Cloud Microphysics

Author:

Cimini Domenico1,Serio Carmine2,Masiello Guido2,Mastro Pietro2,Ricciardelli Elisabetta1,Di Paola Francesco1,Larosa Salvatore1,Gallucci Donatello1,Hultberg Tim3,August Thomas3,Romano Filomena1

Affiliation:

1. Institute of Methodologies for Environmental Analysis, National Research Council of Italy, Tito Scalo, Italy;

2. School of Engineering, University of Basilicata, Potenza, Italy;

3. European Organisation for the Exploitation of Meteorological Satellites, Darmstadt, Germany

Abstract

Abstract Observations from spaceborne microwave (MW) and infrared (IR) passive sensors are the backbone of current satellite meteorology, essential for data assimilation into modern numerical weather prediction and for climate benchmarking. While MW and IR observations from space offer complementary features with respect to cloud properties, their synergy for cloud investigation is currently underexplored, despite the presence of both MW and IR sensors on operational meteorological satellites such as the EUMETSAT Polar System (EPS) MetOp series. As such, several key cloud microphysical properties are not part of the operational products available from EPS MetOp sensors. In addition, the EPS Second Generation (EPS-SG) series, scheduled for launch starting from 2024 onward, will carry sensors such as the Microwave Sounder (MWS) and IASI Next Generation (IASI-NG), enhancing spatial and spectral resolutions and thus capacity to retrieve cloud properties. This article presents the Combined MWS and IASI-NG Soundings for Cloud Properties (ComboCloud) project, funded by EUMETSAT with the overall objective to specify, prototype, and validate algorithms for the retrieval of cloud microphysical properties (e.g., water content and drop effective radius) from the synergy of passive MW and IR observations. The article presents the synergy rationale, the algorithm design, and the results obtained exploiting simulated observations from EPS and EPS-SG sensors, quantifying the benefits to be expected from the MW–IR synergy and the new generation sensors.

Publisher

American Meteorological Society

Subject

Atmospheric Science

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