Modelling agricultural drought: a review of latest advances in big data technologies

This article reviews the main recent applications of multi-sensor remote sensing and Artificial Intelligence techniques in multivariate modelling of agricultural drought. The study focused mainly on three fundamental aspects, namely descriptive modelling, predictive modelling, and spatial modelling...

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Autores principales: Houmma, I.H., El Mansouri, L., Gadal, S., Garba, M., Hadria, R.
Formato: Journal Article
Lenguaje:Inglés
Publicado: Informa UK Limited 2022
Materias:
Acceso en línea:https://hdl.handle.net/10568/125344
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author Houmma, I.H.
El Mansouri, L.
Gadal, S.
Garba, M.
Hadria, R.
author_browse El Mansouri, L.
Gadal, S.
Garba, M.
Hadria, R.
Houmma, I.H.
author_facet Houmma, I.H.
El Mansouri, L.
Gadal, S.
Garba, M.
Hadria, R.
author_sort Houmma, I.H.
collection Repository of Agricultural Research Outputs (CGSpace)
description This article reviews the main recent applications of multi-sensor remote sensing and Artificial Intelligence techniques in multivariate modelling of agricultural drought. The study focused mainly on three fundamental aspects, namely descriptive modelling, predictive modelling, and spatial modelling of expected risks and vulnerability to drought. Thus, out of 417 articles across all studies on drought, 226 articles published from 2010 to 2022 were analyzed to provide a global overview of the current state of knowledge on multivariate drought modelling using the inclusion criteria. The main objective is to review the recent available scientific evidence regarding multivariate drought modelling based on the joint use of geospatial technologies and artificial intelligence. The analysis focused on the different methods used, the choice of algorithms and the most relevant variables depending on whether they are descriptive or predictive models. Criteria such as the skill score, the given game complexity used, and the nature of validation data were considered to draw the main conclusions. The results highlight the very heterogeneous nature of studies on multivariate modelling of agricultural drought, and the very original nature of studies on multivariate modelling of agricultural drought in the recent literature. For future studies, in addition to scientific advances in prospects, case studies and comparative studies appear necessary for an in-depth analysis of the reproducibility and operational applicability of the different approaches proposed for spatial and temporal modelling of agricultural drought.
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institution CGIAR Consortium
language Inglés
publishDate 2022
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spelling CGSpace1253442025-12-08T09:54:28Z Modelling agricultural drought: a review of latest advances in big data technologies Houmma, I.H. El Mansouri, L. Gadal, S. Garba, M. Hadria, R. modelling drought machine learning artificial intelligence This article reviews the main recent applications of multi-sensor remote sensing and Artificial Intelligence techniques in multivariate modelling of agricultural drought. The study focused mainly on three fundamental aspects, namely descriptive modelling, predictive modelling, and spatial modelling of expected risks and vulnerability to drought. Thus, out of 417 articles across all studies on drought, 226 articles published from 2010 to 2022 were analyzed to provide a global overview of the current state of knowledge on multivariate drought modelling using the inclusion criteria. The main objective is to review the recent available scientific evidence regarding multivariate drought modelling based on the joint use of geospatial technologies and artificial intelligence. The analysis focused on the different methods used, the choice of algorithms and the most relevant variables depending on whether they are descriptive or predictive models. Criteria such as the skill score, the given game complexity used, and the nature of validation data were considered to draw the main conclusions. The results highlight the very heterogeneous nature of studies on multivariate modelling of agricultural drought, and the very original nature of studies on multivariate modelling of agricultural drought in the recent literature. For future studies, in addition to scientific advances in prospects, case studies and comparative studies appear necessary for an in-depth analysis of the reproducibility and operational applicability of the different approaches proposed for spatial and temporal modelling of agricultural drought. 2022-12-31 2022-11-07T08:39:35Z 2022-11-07T08:39:35Z Journal Article https://hdl.handle.net/10568/125344 en Open Access application/pdf Informa UK Limited Houmma, I.H., El Mansouri, L., Gadal, S., Garba, M. & Hadria, R. (2022). Modelling agricultural drought: a review of latest advances in big data technologies. Geomatics, Natural Hazards and Risk, 13(1), 2737-2776.
spellingShingle modelling
drought
machine learning
artificial intelligence
Houmma, I.H.
El Mansouri, L.
Gadal, S.
Garba, M.
Hadria, R.
Modelling agricultural drought: a review of latest advances in big data technologies
title Modelling agricultural drought: a review of latest advances in big data technologies
title_full Modelling agricultural drought: a review of latest advances in big data technologies
title_fullStr Modelling agricultural drought: a review of latest advances in big data technologies
title_full_unstemmed Modelling agricultural drought: a review of latest advances in big data technologies
title_short Modelling agricultural drought: a review of latest advances in big data technologies
title_sort modelling agricultural drought a review of latest advances in big data technologies
topic modelling
drought
machine learning
artificial intelligence
url https://hdl.handle.net/10568/125344
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AT gadals modellingagriculturaldroughtareviewoflatestadvancesinbigdatatechnologies
AT garbam modellingagriculturaldroughtareviewoflatestadvancesinbigdatatechnologies
AT hadriar modellingagriculturaldroughtareviewoflatestadvancesinbigdatatechnologies