Title :
Tropospheric Ozone Column Retrieval From ESA-Envisat SCIAMACHY Nadir UV/VIS Radiance Measurements by Means of a Neural Network Algorithm
Author :
Sellitto, Pasquale ; Del Frate, Fabio ; Solimini, Domenico ; Casadio, Stefano
Author_Institution :
Dept. of Comput., Tor Vergata Univ., Rome, Italy
fDate :
3/1/2012 12:00:00 AM
Abstract :
Spaceborne measurements may significantly support monitoring the concentration of atmospheric constituents affecting air quality, such as ozone. However, retrieving tropospheric ozone concentration information from nadir satellite data is an arduous task, given the weak sensitivity of the earth´s radiance to ozone variations in the lower part of the atmosphere. We propose a new methodology, based on neural networks (NN), for retrieving the tropospheric ozone column from SCanning Imaging Absorption spectroMeter for Atmospheric CHartographY (SCIAMACHY) nadir UV/VIS measurements. The design of the NN algorithm is based on an analysis of the information content of measurements in both UV and VIS bands, carried out by a combined radiative transfer model and NN extended pruning procedure. The NN was trained and tested with simulated data and with matching World Ozone and Ultraviolet radiation Data Centre ozonesonde data sets and validated by independent data taken over two test sites. A significant improvement of the retrieval capabilities is observed when VIS wavelengths are included into the input vector. Finally, an example of tropospheric ozone map generated automatically by the methodology at a continental scale is provided and critically discussed.
Keywords :
air pollution measurement; atmospheric composition; atmospheric radiation; atmospheric techniques; remote sensing; troposphere; Centre ozonesonde data sets; ESA-Envisat SCIAMACHY Nadir; Scanning Imaging Absorption spectroMeter for Atmospheric CHartographY; UV-VIS radiance measurements; Ultraviolet radiation data; World Ozone data; air quality; atmospheric constituent concentration; earth radiance; nadir satellite data; neural network algorithm; radiative transfer model; spaceborne measurements; tropospheric ozone column retrieval; tropospheric ozone concentration information; Artificial neural networks; Atmospheric measurements; Earth; Pollution measurement; Satellites; Sensitivity; Training; Air quality; neural networks (NN); satellite remote sensing; tropospheric ozone;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2011.2163198