Title :
A new generation of radiative transfer models for climate studies based on neural networks
Author :
Cheruy, F. ; Chevallier, F. ; Scott, N.A. ; Chedin, A.
Author_Institution :
Lab. de Meteorol. Dynamique, Ecole Polytech., Palaiseau, France
Abstract :
It is demonstrated that neural networks can be successfully used for accurately deriving the longwave radiative budget from the top of the atmosphere (TOA) to the surface. The reliable sampling of the Earth atmospheric situations in the TIGR dataset developed at LMD allows for an efficient learning of the neural networks. The dramatic saving of computing time based on the neural networks technique allows for using more sophisticated (hence more accurate) radiative schemes for computing the longwave radiative budget either in GCM simulations or from long time series of satellite observations such as those provided by the 16 years of measurements of the TOVS sounder aboard the NOAA operational satellites
Keywords :
atmospheric optics; atmospheric radiation; climatology; geophysics computing; learning (artificial intelligence); neural nets; radiative transfer; GCM simulation; IR infrared; LMD; TIGR dataset; atmosphere; climate model; far infrared IR radiation; learning; longwave radiative budget; meteorology; neural net; neural network; radiative scheme; radiative transfer model; thermal radiation; Atmosphere; Atmospheric modeling; Computational modeling; Computer networks; Earth; Infrared spectra; Instruments; Neural networks; Satellite broadcasting; Thermodynamics;
Conference_Titel :
Geoscience and Remote Sensing Symposium, 1995. IGARSS '95. 'Quantitative Remote Sensing for Science and Applications', International
Conference_Location :
Firenze
Print_ISBN :
0-7803-2567-2
DOI :
10.1109/IGARSS.1995.520447