DocumentCode :
1302075
Title :
Application of multilayer feedforward neural networks to precipitation cell-top altitude estimation
Author :
Spina, Michelle S. ; Schwartz, Michael J. ; Staelin, David H. ; Gaisewski, A.J.
Author_Institution :
MIT, Cambridge, MA, USA
Volume :
36
Issue :
1
fYear :
1998
fDate :
1/1/1998 12:00:00 AM
Firstpage :
154
Lastpage :
162
Abstract :
The use of passive 118-GHz O2 observations of rain cells for precipitation cell-top altitude estimation is demonstrated by using a multilayer feedforward neural network retrieval system. Rain cell observations at 118 GHz were compared with estimates of the cell-top altitude obtained by optical stereoscopy. The observations were made with 2-4-km horizontal spatial resolution by using the millimeter-wave temperature sounder (MTS) scanning spectrometer aboard the NASA ER-2 research aircraft during the Genesis of Atlantic Lows Experiment (GALE) and the Cooperative Huntsville Meteorological Experiment (COHMEX) in 1986. The neural network estimator applied to MTS spectral differences between clouds, and nearby clear air yielded an rms discrepancy of 1.76 km for a combined cumulus, mature, and dissipating cell set and 1.44 km for the cumulus-only set. An improvement in rms discrepancy to 1.36 km was achieved by including additional MTS information on the absolute atmospheric temperature profile. An incremental method for training neural networks was developed that yielded robust results, despite the use of as few as 56 training spectra. Comparison of these results with a nonlinear statistical estimator shows that superior results can be obtained with a neural network retrieval system. Imagery of estimated cell-top altitudes was created from 118-GHz spectral imagery gathered from CAMEX, September through October 1993, and from cyclone Oliver, February 7, 1993
Keywords :
atmospheric techniques; clouds; feedforward neural nets; geophysics computing; millimetre wave measurement; radiometry; rain; remote sensing; 118 GHz; COHMEX; EHF; GALE; O2; altitude estimation; atmosphere; cloud; cumulus; geophysics computing; incremental method; measurement technique; meteorology; microwave radiometry; millimeter-wave temperature sounder; mm wave; multilayer feedforward neural network; multilayer neural net; neural net; neural network estimator; nonlinear statistical estimator; precipitation cell-top; rain cell; remote sensing; retrieval system; satellite remote sensing; temperature profile; Feedforward neural networks; Millimeter wave technology; Multi-layer neural network; Neural networks; Nonlinear optics; Optical computing; Rain; Spatial resolution; Spectroscopy; Temperature;
fLanguage :
English
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
Publisher :
ieee
ISSN :
0196-2892
Type :
jour
DOI :
10.1109/36.655325
Filename :
655325
Link To Document :
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