SURFACE PARAMETERS EVALUATED FROM SATELLITE REMOTE SENSING IMAGES FOR POLLUTANT ATMOSPHERIC DISPERSION MODELLING
Item
Title (Dublin Core)
eng
SURFACE PARAMETERS EVALUATED FROM SATELLITE REMOTE SENSING IMAGES FOR POLLUTANT ATMOSPHERIC DISPERSION MODELLING
Description (Dublin Core)
eng
This contribute deals with the use of surface parameters extracted from satellite remote sensing images for the setup of
the input dataset required by pollutants atmospheric dispersion models (PATM). These models need 2D distributions (grids) of
many surface parameters to model turbulence parameters, as roughness length, albedo, leaf area index and Bowen ratio. Very often
these parameters are set using predefined tables defined as a function of land cover (LC). Usually, this last information is extracted
from public datasets, such as, for European countries, the CORINE Land Cover (CLC). Some of these parameters can be computed
directly from remote sensing. Moreover, land cover classification evaluated from remote sensing can be used to update existing LC
datasets. In this work ASTER images have been used to evaluate, using a supervised classification method, the LC map of the area.
This LC is used to update the CLC. Moreover, albedo was directly calculated from the image. The importance of information
extracted from remote sensing is evaluated using the SPRAY lagrangian PATM. SPRAY has been used to simulate the dispersion of
an inert generic pollutant emitted from two virtual sources on a 30 km x 40 km domain in a study area located at Venice (Northern
Italy), where a big industrial site is found (Porto Marghera). Real (measured) meteorological data have been used.
the input dataset required by pollutants atmospheric dispersion models (PATM). These models need 2D distributions (grids) of
many surface parameters to model turbulence parameters, as roughness length, albedo, leaf area index and Bowen ratio. Very often
these parameters are set using predefined tables defined as a function of land cover (LC). Usually, this last information is extracted
from public datasets, such as, for European countries, the CORINE Land Cover (CLC). Some of these parameters can be computed
directly from remote sensing. Moreover, land cover classification evaluated from remote sensing can be used to update existing LC
datasets. In this work ASTER images have been used to evaluate, using a supervised classification method, the LC map of the area.
This LC is used to update the CLC. Moreover, albedo was directly calculated from the image. The importance of information
extracted from remote sensing is evaluated using the SPRAY lagrangian PATM. SPRAY has been used to simulate the dispersion of
an inert generic pollutant emitted from two virtual sources on a 30 km x 40 km domain in a study area located at Venice (Northern
Italy), where a big industrial site is found (Porto Marghera). Real (measured) meteorological data have been used.
Creator (Dublin Core)
Teggi, Sergio
Bogliolo, Maria Paola
Ghermandi, Grazia
Fabbi, Sara
Funaro, Marina
Gariazzo, Claudio
Subject (Dublin Core)
eng
Remote sensing;lagrangian dipersion model;classification;CORINE land cover;albedo
Publisher (Dublin Core)
Croatian meteorological society
Date (Dublin Core)
2008
Type (Dublin Core)
text
info:eu-repo/semantics/article
info:eu-repo/semantics/publishedVersion
Format (Dublin Core)
application/pdf
Identifier (Dublin Core)
https://hrcak.srce.hr/64287
eng
https://hrcak.srce.hr/file/96409
Source (Dublin Core)
Hrvatski meteorološki časopis
ISSN 1330-0083 (Print)
ISSN 1849-0700 (Online)
Volume 43
Issue 43/2
Language (Dublin Core)
eng
Rights (Dublin Core)
info:eu-repo/semantics/openAccess
The papers of this Journal are free of charge for personal or educational use, with respect of copyright of authors and publisher.