Can We Use Machine Learning for Agricultural Land Suitability Assessment?

Type de document
journalArticle
Langue source
-- Langue source --
Titre
Can We Use Machine Learning for Agricultural Land Suitability Assessment?
Titre français
Titre anglais
Auteur(s)
  • MØLLER Anders Bjørn
  • MULDER Vera Leatitia
  • HEUVELINK Gerard B. M.
  • JACOBSEN Niels Mark
  • GREVE Mogens Humlekrog
Editeur(s)
Autre(s)
Id
DPQASYYT
Version
3349
Date ajout
19 avril 2021 17:22
Date modification
19 avril 2021 17:22
Résumé
It is vital for farmers to know if their land is suitable for the crops that they plan to grow. An increasing number of studies have used machine learning models based on land use data as an efficient means for mapping land suitability. This approach relies on the assumption that farmers grow their crops in the best-suited areas, but no studies have systematically tested this assumption. We aimed to test the assumption for specialty crops in Denmark. First, we mapped suitability for 41 specialty crops using machine learning. Then, we compared the predicted land suitabilities with the mechanistic model ECOCROP (Ecological Crop Requirements). The results showed that there was little agreement between the suitabilities based on machine learning and ECOCROP. Therefore, we argue that the methods represent different phenomena, which we label as socioeconomic suitability and ecological suitability, respectively. In most cases, machine learning predicts socioeconomic suitability, but the ambiguity of the term land suitability can lead to misinterpretation. Therefore, we highlight the need for increasing awareness of this distinction as a way forward for agricultural land suitability assessment.
Note
None
CRAW tags
  • AB - Transversal
  • FREDO technologie et innovation
  • GEO Danemark
  • land allocation
WEB tags
  • climate
  • ecology
  • maxent
  • socioeconomics
  • soil
  • specialty crops
  • topography
Titre de la publication
Agronomy
Volume
11
Pages
703
Date caractères
2021/4
Date publication
21 avril 2021
Doi
10.3390/agronomy11040703 Le DOI est une URL unique de référencement d'une publication. Il est donc plus fiable et permanent qu'une URL classique