AquaCrop model; Remote sensing data integration; Semi-automatic approach; Maize; Belgium
Disciplines :
Environmental sciences & ecology
Author, co-author :
Mohamed Sallah, Abdoul-Hamid ; Université de Liège - ULiège > DER Sc. et gest. de l'environnement (Arlon Campus Environ.) > Eau, Environnement, Développement
Tychon, Bernard ; Université de Liège - ULiège > DER Sc. et gest. de l'environnement (Arlon Campus Environ.) > Eau, Environnement, Développement
Piccard, Isabelle
Gobin, Anne
Van Hoolst, Roel
Djaby, Bakary ; Université de Liège - ULiège > DER Sc. et gest. de l'environnement (Arlon Campus Environ.) > Eau, Environnement, Développement
Wellens, Joost ; Université de Liège - ULiège > DER Sc. et gest. de l'environnement (Arlon Campus Environ.) > Eau, Environnement, Développement
Language :
English
Title :
Batch-processing of AquaCrop plug-in for rainfed maize using satellite derived Fractional Vegetation Cover data
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