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Modeling and mapping temperature and precipitation climate data in Greece using topographical and geographical parameters.

Authors :
Feidas, Haralambos
Karagiannidis, Athanasios
Keppas, Stavros
Vaitis, Michail
Kontos, Themistoklis
Zanis, Prodromos
Melas, Dimitrios
Anadranistakis, Emmanouil
Source :
Theoretical & Applied Climatology; Oct2014, Vol. 118 Issue 1-2, p133-146, 14p
Publication Year :
2014

Abstract

This study presents a methodology for modeling and mapping the seasonal and annual air temperature and precipitation climate normals over Greece using several topographical and geographical parameters. Data series of air temperature and precipitation from 84 weather stations distributed evenly over Greece are used along with a set of topographical and geographical parameters extracted with Geographic Information System methods from a digital elevation model (DEM). Normalized difference vegetation index (NDVI) obtained from MODIS Aqua satellite data is also used as a geographical parameter. First, the relation of the two climate elements to the topographical and geographical parameters was investigated based on the Pearson's correlation coefficient to identify the parameters that mostly affect the spatial variability of air temperature and precipitation over Greece. Then a backward stepwise multiple regression was applied to add topographical and geographical parameters as independent variables into a regression equation and develop linear estimation models for both climate parameters. These models are subjected to residual correction using different local interpolation methods, in an attempt to refine the estimated values. The validity of these models is checked through cross-validation error statistics against an independent test subset of station data. The topographical and geographical parameters used as independent variables in the multiple regression models are mostly those found to be strongly correlated with both climatic variables. Models perform best for annual and spring temperatures and effectively for winter and autumn temperatures. Summer temperature spatial variability is rather poorly simulated by the multiple regression model. On the contrary, best performance is obtained for summer and autumn precipitation while the multiple regression model is not able to simulate effectively the spatial distribution of spring precipitation. Results revealed also a relatively weaker model performance for precipitation than that for air temperature probably due to the highly variable nature of precipitation compared to the relatively low spatial variability of air temperature field. The correction of the developed regression models using residuals improved though not significantly the interpolation accuracy. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
0177798X
Volume :
118
Issue :
1-2
Database :
Complementary Index
Journal :
Theoretical & Applied Climatology
Publication Type :
Academic Journal
Accession number :
98371796
Full Text :
https://doi.org/10.1007/s00704-013-1052-4