Title of article :
Assimilation of leaf area index derived from ASAR and MERIS data into CERES-Wheat model to map wheat yield
Author/Authors :
Dente، نويسنده , , Laura and Satalino، نويسنده , , Giuseppe and Mattia، نويسنده , , Francesco and Rinaldi، نويسنده , , Michele، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2008
Pages :
13
From page :
1395
To page :
1407
Abstract :
This study presents a method to assimilate leaf area index retrieved from ENVISAT ASAR and MERIS data into CERES-Wheat crop growth model with the objective to improve the accuracy of the wheat yield predictions at catchment scale. The assimilation method consists in re-initialising the model with optimal input parameters allowing a better temporal agreement between the LAI simulated by the model and the LAI estimated by remote sensing data. A variational assimilation algorithm has been applied to minimise the difference between simulated and remotely-sensed LAI and to determine the optimal set of input parameters. After the re-initialisation, the wheat yield maps have been obtained and their accuracy evaluated. thod has been applied over Matera site located in Southern Italy and validated by using the dataset of an experimental campaign carried out during the 2004 wheat growing season. s indicate that, LAI maps retrieved from MERIS and ASAR data can be effectively assimilated into CERES-Wheat model thus leading to accuracies of the yield maps ranging from 360 kg/ha to 420 kg/ha.
Keywords :
LAI retrieval , MERIS , ASAR , Data assimilation , Crop growth model , Wheat yield maps
Journal title :
Remote Sensing of Environment
Serial Year :
2008
Journal title :
Remote Sensing of Environment
Record number :
1575366
Link To Document :
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