Mthembu T.L., Kunz R., Gokool S., Mabhaudhi T. (2024). The use of agricultural databases for crop modeling: a scoping review. Sustainability, 01/08/2024, vol. 16, n. 15, p. 6554.
https://doi.org/10.3390/su16156554
https://doi.org/10.3390/su16156554
Titre : | The use of agricultural databases for crop modeling: a scoping review (2024) |
Auteurs : | T.L. Mthembu ; R. Kunz ; S. Gokool ; T. Mabhaudhi |
Type de document : | Article |
Dans : | Sustainability (vol. 16, n. 15, August 2024) |
Article en page(s) : | p. 6554 |
Langues : | Anglais |
Langues du résumé : | Anglais |
Catégories : |
Catégories principales 06 - AGRICULTURE. FORÊTS. PÊCHES ; 6.6 - Technique Agricole (sols, engrais, mécanisation)Thésaurus IAMM MODELE ; DONNEE STATISTIQUE ; BANQUE DE DONNEES ; MODELE DE SIMULATION ; AGRICULTURE ; DONNEE DE PRODUCTION ; RENDEMENT ; PREVISION DE RENDEMENT |
Mots-clés: | APPRENTISSAGE AUTOMATIQUE |
Résumé : | There is growing interest in promoting neglected and underutilized crop species to enhance agrobiodiversity and contribute to food systems transformation under climate change. A lack of available measured data has hindered the mainstreaming of these crops and limited the ability of agricultural databases to be used for calibrating and validating crop models. This study conducts a systematic scoping review and bibliometric analysis to assess the use of agricultural databases for crop modeling. The Biblioshiny App v4.1.2 and VOSviewer software v1.6.20 were used to analyze 51 peer-reviewed articles from Scopus and Web of Science. Key findings from this review were that agricultural databases have been used for estimating crop yield, assessing soil conditions, and fertilizer management and are invaluable for developing decision support tools. The main challenges include the need for high-quality datasets for developing agricultural databases and more expertise and financial resources to develop and apply crop and machine learning models. From the bibliometric dataset, only one study used modeled data to develop a crop database despite such data having a level of uncertainty. This presents an opportunity for future research to improve models to minimize their uncertainty level and provide reliable data for crop database development. |
Cote : | En ligne |
URL / DOI : | https://doi.org/10.3390/su16156554 |