DocumentCode :
1445271
Title :
Use of Artificial Neural Networks to Retrieve TOA SW Radiative Fluxes for the EarthCARE Mission
Author :
Domenech, Carlos ; Wehr, Tobias
Author_Institution :
Mission Sci. Div., Eur. Space Agency, Noordwijk, Netherlands
Volume :
49
Issue :
6
fYear :
2011
fDate :
6/1/2011 12:00:00 AM
Firstpage :
1839
Lastpage :
1849
Abstract :
The Earth Clouds, Aerosols, and Radiation Explorer (EarthCARE) mission responds to the need to improve the understanding of the interactions between cloud, aerosol, and radiation processes. The fundamental mission objective is to constrain retrievals of cloud and aerosol properties such that their impact on top-of-atmosphere (TOA) radiative fluxes can be determined with an accuracy of 10 W · m-2. However, TOA fluxes cannot be measured instantaneously from a satellite. For the EarthCARE mission, fluxes will be estimated from the observed solar and thermal radiances measured by the Broadband Radiometer (BBR). This paper describes an approach to obtain shortwave (SW) fluxes from BBR radiance measurements. The retrieval algorithms are developed relying on the angular distribution models (ADMs) employed by Clouds and the Earth´s Radiant Energy System (CERES) instrument. The solar radiance-to-flux conversion for the BBR is performed by simulating the Terra CERES ADMs us ing a backpropagation artificial neural network (ANN) technique. The ANN performance is optimized by testing different architectures, namely, feedforward, cascade forward, and a customized forward network. A large data set of CERES measurements used to resemble the forthcoming BBR acquisitions has been collected. The CERES BBR-like database is sorted by their surface type, sky conditions, and scene type and then stratified by four input variables (solar zenith angle and BBR SW radiances) to construct three different training data sets. Then, the neural networks are analyzed, and the adequate ADM classification scheme is selected. The results of the BBR ANN-based ADMs show SW flux retrievals compliant with the CERES flux estimates.
Keywords :
aerosols; atmospheric measuring apparatus; atmospheric optics; atmospheric radiation; backpropagation; clouds; geophysics computing; information retrieval; neural nets; radiative transfer; radiometry; remote sensing; ADM classification scheme; Broadband Radiometer; CERES instrument; Clouds and the Earth´s Radiant Energy System; Earth Clouds, Aerosols, and Radiation Explorer; EarthCARE mission; TOA SW radiative flux retrieval; aerosol; angular distribution models; atmospheric radiation process; backpropagation artificial neural network; cloud; shortwave flux; solar radiance; thermal radiance; top-of-atmosphere radiative flux; Artificial neural networks; Clouds; Feedforward neural networks; Input variables; Neurons; Training; Transfer functions; Angular distribution models (ADMs); Earth Clouds, Aerosols, and Radiation Explorer (EarthCARE); anisotropic correction; artificial neural network (ANN); remote sensing; solar radiative flux;
fLanguage :
English
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
Publisher :
ieee
ISSN :
0196-2892
Type :
jour
DOI :
10.1109/TGRS.2010.2102768
Filename :
5710411
Link To Document :
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