6533b862fe1ef96bd12c6d6d
RESEARCH PRODUCT
Comparative Analysis of Spatial Interpolation Methods in the Mediterranean Area: Application to Temperature in Sicily
Leonardo NotoAnnalisa Di PiazzaEmanuele EccelFrancesco Lo ContiFrancesco Violasubject
lcsh:Hydraulic engineeringGeography Planning and DevelopmentSpazializzazioneGeostatisticsAquatic ScienceBiochemistryMultivariate interpolationlcsh:Water supply for domestic and industrial purposesKriginglcsh:TC1-978StatisticsLinear regressionSettore GEO/12 - OCEANOGRAFIA E FISICA DELL'ATMOSFERAgeostatisticsSicilyWater Science and TechnologyMathematicsHydrologylcsh:TD201-500Settore ICAR/02 - Costruzioni Idrauliche E Marittime E IdrologiaUnivariateGeostatisticatemperatureTemperaturageostatistics; Sicily; spatial interpolation; temperatureField (geography)Siciliageostatisticspatial interpolationScale (map)Interpolationdescription
An exhaustive comparison among different spatial interpolation algorithms was carried out in order to derive annual and monthly air temperature maps for Sicily (Italy). Deterministic, data-driven and geostatistics algorithms were used, in some cases adding the elevation information and other physiographic variables to improve the performance of interpolation techniques and the reconstruction of the air temperature field. The dataset is given by air temperature data coming from 84 stations spread around the island of Sicily. The interpolation algorithms were optimized by using a subset of the available dataset, while the remaining subset was used to validate the results in terms of the accuracy and bias of the estimates. Validation results indicate that univariate methods, which neglect the information from physiographic variables, significantly entail the largest errors, while performances improve when such parameters are taken into account. The best results at the annual scale have been obtained using the the ordinary kriging of residuals from linear regression and from the artificial neural network algorithm, while, at the monthly scale, a Fourier-series algorithm has been used to downscale mean annual temperature to reproduce monthly values in the annual cycle.
year | journal | country | edition | language |
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2015-04-27 | Water |