Unpublished conference/Abstract (Scientific congresses and symposiums)
Deployment of models predicting compressed sward height on Wallonia: quality and validity of the predictions
Nickmilder, Charles; Soyeurt, Hélène; Tedde, Anthony et al.
2022DAIR'INNOV 2022
 

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Keywords :
machine learning; pasture; compressed sward height; remote sensing; satellite
Abstract :
[en] Currently, there is a high interest to integrate remote sensed data and machine learning algorithms to develop pastures management tools. In this context, over the past two years, we published models predicting the available compressed sward height (CSH) in pasture using Sentinel-1, Sentinel-2, and meteorological data. Those scalable models were developed to be the basis of a decision support system (DSS) available for Walloon farmers. A platform predicting CSH over Wallonia was developed and this presentation aims to provide some insights in its prediction capabilities by detailing the values and their variability at the parcel level for the year 2021. The first prospect was the distribution of the predictions without considering a mean per parcel: 2% of the predicted values were out of the [0:250] mm of CSH range on which model were trained and the median was around 56mm. If we were to consider a mean per parcel, the values fall back in training range and the median is around 60mm and coefficient of variation (cv) of the prediction within each parcel, which indicated the variability, ranged from 0 to 986. These cv values indicated that the predictions might be too variable and that further training data are required to get more stable outputs. However, given that the range of predictions respects the training CSH range, the predicting platform was considered mature enough to be ready for being a data provider for a future DSS, the main interest in this future tool being to provide everyday food availability to the farmer in order to help him manage his feed wedge and therefore improving cattle welfare.
Disciplines :
Agriculture & agronomy
Author, co-author :
Nickmilder, Charles  ;  Université de Liège - ULiège > TERRA Research Centre
Soyeurt, Hélène  ;  Université de Liège - ULiège > Département GxABT
Other collaborator :
Tedde, Anthony  ;  Université de Liège - ULiège > TERRA Research Centre
Dufrasne, Isabelle  ;  Université de Liège - ULiège > Département de gestion vétérinaire des Ressources Animales (DRA) > Nutrition des animaux domestiques ; Université de Liège - ULiège > Fundamental and Applied Research for Animals and Health (FARAH) > FARAH: Productions animales durables
Lessire, Françoise  ;  Université de Liège - ULiège > Fundamental and Applied Research for Animals and Health (FARAH) > FARAH: Productions animales durables ; Université de Liège - ULiège > Département de gestion vétérinaire des Ressources Animales (DRA)
Tychon, Bernard ;  Université de Liège - ULiège > Département des sciences et gestion de l'environnement (Arlon Campus Environnement)
Curnel, Yannick
Bindelle, Jérôme  ;  Université de Liège - ULiège > TERRA Research Centre > Ingénierie des productions animales et nutrition
Language :
English
Title :
Deployment of models predicting compressed sward height on Wallonia: quality and validity of the predictions
Publication date :
27 April 2022
Event name :
DAIR'INNOV 2022
Event place :
Namur, Belgium
Event date :
27 - 29 avril 2022
Name of the research project :
ROADSTEP
Funders :
Région wallonne
Available on ORBi :
since 02 October 2022

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