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Publication . Article . 2009

Neural network cloud screening algorithm, Part I: A synthetic case over land using micro-windows in O<sub>2</sub>&gt; and CO<sub>2</sub>&gt; near infrared absorption bands with nadir viewing

Thomas E. Taylor; Denis O'Brien;
Open Access
Published: 01 Sep 2009 Journal: Journal of Applied Remote Sensing, volume 3, page 33,548 (issn: 1931-3195, Copyright policy )
Publisher: SPIE-Intl Soc Optical Eng

A neural network is presented for estimating cloud water and ice paths, effective scattering heights of cloud water and ice, and column water vapor. The cloud water and ice are then used to classify scenes as either clear or cloudy using a simple threshold test of 2 gm−2 for water and 10 gm−2 for ice. Training of the neural networks was performed using high resolution spectra in micro-windows of O2 and CO2 near infrared absorption bands generated from an ensemble of analyzed meteorological fields from ECMWF and surface properties from MODIS. An independent test data set was generated using the same radiative transfermodel, but coupled with atmospheric profiles derived from CloudSat and Calipso data. Analysis indicates that the algorithmprovides approximately 75-90% accuracy with a 95-99% confidence level for classifying scenes as either cloudy or clear over land surfaces in nadir viewing geometry. These estimates are shown to be robust, in the sense that they are insensitive to realistic instrumental errors, errors in the meteorological analyses and surface properties, and errors in the simulations used for training.

Subjects by Vocabulary

Microsoft Academic Graph classification: Signal-to-noise ratio Remote sensing Nadir Artificial neural network Radiative transfer Meteorology Water vapor Test data Environmental science Near-infrared spectroscopy Absorption (electromagnetic radiation)

arXiv: Physics::Atmospheric and Oceanic Physics Physics::Geophysics Astrophysics::Earth and Planetary Astrophysics


General Earth and Planetary Sciences

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