Development of Machine Learning Models to Predict Compressed Sward Height in Walloon Pastures Based on Sentinel-1, Sentinel-2 and Meteorological Data Using Multiple Data Transformations

Type de document
journalArticle
Langue source
-- Langue source --
Titre
Development of Machine Learning Models to Predict Compressed Sward Height in Walloon Pastures Based on Sentinel-1, Sentinel-2 and Meteorological Data Using Multiple Data Transformations
Titre français
Titre anglais
Auteur(s)
  • NICKMILDER Charles
  • TEDDE Anthony
  • DUFRASNE Isabelle
  • LESSIRE Françoise
  • TYCHON Bernard
  • CURNEL Yannick
  • BINDELLE Jérome
  • SOYEURT Hélène
Editeur(s)
Autre(s)
Id
UKRF4L2M
Version
3520
Date ajout
26 avril 2021 12:06
Date modification
26 avril 2021 12:06
Résumé
Accurate information about the available standing biomass on pastures is critical for the adequate management of grazing and its promotion to farmers. In this paper, machine learning models are developed to predict available biomass expressed as compressed sward height (CSH) from readily accessible meteorological, optical (Sentinel-2) and radar satellite data (Sentinel-1). This study assumed that combining heterogeneous data sources, data transformations and machine learning methods would improve the robustness and the accuracy of the developed models. A total of 72,795 records of CSH with a spatial positioning, collected in 2018 and 2019, were used and aggregated according to a pixel-like pattern. The resulting dataset was split into a training one with 11,625 pixellated records and an independent validation one with 4952 pixellated records. The models were trained with a 19-fold cross-validation. A wide range of performances was observed (with mean root mean square error (RMSE) of cross-validation ranging from 22.84 mm of CSH to infinite-like values), and the four best-performing models were a cubist, a glmnet, a neural network and a random forest. These models had an RMSE of independent validation lower than 20 mm of CSH at the pixel-level. To simulate the behavior of the model in a decision support system, performances at the paddock level were also studied. These were computed according to two scenarios: either the predictions were made at a sub-parcel level and then aggregated, or the data were aggregated at the parcel level and the predictions were made for these aggregated data. The results obtained in this study were more accurate than those found in the literature concerning pasture budgeting and grassland biomass evaluation. The training of the 124 models resulting from the described framework was part of the realization of a decision support system to help farmers in their daily decision making.
Note
None
CRAW tags
  • AB - Transversal
  • FREDO fourrage et prairie
  • FREDO technologie et innovation
  • GEO Belgique
  • GEO Wallonie
  • detection
  • technologie
WEB tags
  • sentinel-1
  • sentinel-2
  • compressed sward height
  • machine learning
  • pastures
Titre de la publication
Remote Sensing
Volume
13
Pages
408
Date caractères
2021/1
Date publication
27 janvier 2021
Doi
10.3390/rs13030408 Le DOI est une URL unique de référencement d'une publication. Il est donc plus fiable et permanent qu'une URL classique