Harvesting Insights from the Sky: Satellite-Powered Automation for Detecting Mowing Based on Predicted Compressed Sward Heights

Author:

Dichou Killian1,Nickmilder Charles1ORCID,Tedde Anthony12,Franceschini Sébastien1ORCID,Brostaux Yves1ORCID,Dufrasne Isabelle3,Lessire Françoise3,Glesner Noémie4,Soyeurt Hélène1ORCID

Affiliation:

1. TERRA Research and Teaching Centre, Gembloux Agro-Bio Tech, University of Liège, 5030 Gembloux, Belgium

2. National Funds for Scientific Research, 1000 Brussels, Belgium

3. Faculty of Veterinary Medicine, University of Liège, Quartier Vallée 2, 4000 Liège, Belgium

4. Fourrages Mieux ASBL, Horritine 1, Michamps, 6600 Bastogne, Belgium

Abstract

The extensive identification of mowing events on a territory holds significant potential to help monitor shifts in biodiversity and contribute to assessing the impacts of drought events. Additionally, it provides valuable insights into farming practices and their consequential economic and ecological effects. To overcome challenges in obtaining reference grazing information directly from the field, this study introduces a novel methodology leveraging the compressed sward height (CSH) derived from Sentinel-1, Sentinel-2, and meteorological data, boasting an accuracy of 20 mm. Our central hypothesis posits that the mowing status of a parcel can be automatically discerned by analyzing the distribution and variation of its CSH values. Employing a two-step strategy, we first applied unsupervised algorithms, specifically k-means and isolation forest, and subsequently amalgamated the outcomes with a partial least squares analysis on an extensive dataset encompassing 194,657 pastures spanning the years 2018 to 2021. The culmination of our modeling efforts yielded a validation accuracy of 0.66, as ascertained from a focused dataset of 68 pastures. Depending on the studied year and with a threshold fixed at 0.50, 21% to 57% of all the parcels in the Wallonia dataset were tagged as mown by our model. This study introduces an innovative approach for the automated detection of mown parcels, showcasing its potential to monitor agricultural activities at scale.

Funder

Service Public de Wallonie

Fonds National de la Recherche

Publisher

MDPI AG

Reference54 articles.

1. Carbon Balance of an Intensively Grazed Permanent Grassland in Southern Belgium;Mamadou;Agric. For. Meteorol.,2016

2. Unexpectedly Large Impact of Forest Management and Grazing on Global Vegetation Biomass;Erb;Nature,2018

3. Lessire, F., Jacquet, S., Veselko, D., Piraux, E., and Dufrasne, I. (2019). Evolution of Grazing Practices in Belgian Dairy Farms: Results of Two Surveys. Sustainability, 11.

4. (2023, February 01). European Comission EU Agrees to Increase Carbon Removals. Available online: https://ec.europa.eu/commission/presscorner/detail/en/IP_22_6784.

5. Future Outlook for the Irish Dairy Industry: A Study of International Competitiveness, Influence of International Trade Reform and Requirement for Change;Dillon;Int. J. Dairy Technol.,2008

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