Automated Mapping of Convective Clouds (AMCC) Thermodynamical, Microphysical, and CCN Properties from SNPP/VIIRS Satellite Data
Autor: | Xiaohong Xu, Daniel Rosenfeld, Jin Dai, Yannian Zhu, Guihua Liu, Zhiguo Yue, Ying Hui, Oliver Lauer, Eyal Hashimshoni, Xing Yu |
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Rok vydání: | 2019 |
Předmět: |
Convection
Atmospheric Science Cloud microphysics Radiometer 010504 meteorology & atmospheric sciences 010502 geochemistry & geophysics 01 natural sciences On board Satellite data Visible infrared Convective cloud Environmental science Satellite 0105 earth and related environmental sciences Remote sensing |
Zdroj: | Journal of Applied Meteorology and Climatology. 58:887-902 |
ISSN: | 1558-8432 1558-8424 |
Popis: | The advent of the Visible Infrared Imager Radiometer Suite (VIIRS) on board the Suomi NPP (SNPP) satellite made it possible to retrieve a new class of convective cloud properties and the aerosols that they ingest. An automated mapping system of retrieval of some properties of convective cloud fields over large areas at the scale of satellite coverage was developed and is presented here. The system is named Automated Mapping of Convective Clouds (AMCC). The input is level-1 VIIRS data and meteorological gridded data. AMCC identifies the cloudy pixels of convective elements; retrieves for each pixel its temperature T and cloud drop effective radius re; calculates cloud-base temperature Tb based on the warmest cloudy pixels; calculates cloud-base height Hb and pressure Pb based on Tb and meteorological data; calculates cloud-base updraft Wb based on Hb; calculates cloud-base adiabatic cloud drop concentrations Nd,a based on the T–re relationship, Tb, and Pb; calculates cloud-base maximum vapor supersaturation S based on Nd,a and Wb; and defines Nd,a/1.3 as the cloud condensation nuclei (CCN) concentration NCCN at that S. The results are gridded 36 km × 36 km data points at nadir, which are sufficiently large to capture the properties of a field of convective clouds and also sufficiently small to capture aerosol and dynamic perturbations at this scale, such as urban and land-use features. The results of AMCC are instrumental in observing spatial covariability in clouds and CCN properties and for obtaining insights from such observations for natural and man-made causes. AMCC-generated maps are also useful for applications from numerical weather forecasting to climate models. |
Databáze: | OpenAIRE |
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