Machine learning-based detection of irrigation in Vojvodina (Serbia) using Sentinel-2 data

With rapid population growth and the high influence of climate change on agricultural productivity, providing enough food is the main challenge in the 21st century. Irrigation, as a hydrological artificial process, has an indispensable role in achieving that goal. However, high pressure and demand on water resources could lead to serious problems in water consumption. Knowing information about the spatial distribution of irrigation parcels is essential to many aspects of Earth system science and global change research. To extract this knowledge for the main agricultural region in Serbia located in the moderate continental area, we utilized optical satellite Sentinel-2 data and collected ground truth data needed to train the machine learning model. Both satellite imagery and ground truth data were collected for the three most irrigated crops, maize, soybean, and sugar beet during 3 years (2020–2022) characterized by different weather conditions. This data was then used for training the Random Forest-based models, separately for each crop type, differentiating irrigated and rainfed crops on the parcel level. Finally, the models were run for the whole territory of Vojvodina generating 10 m resolution maps of irrigated three crops of interest. With overall accuracy for crops per year (2020: 0.76; 2021: 0.78; 2022: 0.84) results showed that this method could be successfully used for detecting the irrigation of three crops of interest. This was confirmed by validation with the national dataset from Public Water Management Company “Vode Vojvodine” which revealed that classification maps had an accuracy of 76%. These maps further allow us to understand the spatial dynamics of the most important irrigated crops and can serve for the improvement of sustainable agricultural water management.

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Main Authors: Radulović, Mirjana, Brdar, Sanja, Pejak, Branislav, Lugonja, Predrag, Athanasiadis, Ioannis, Pajević, Nina, Pavić, Dragoslav, Crnojević, Vladimir
Format: Article/Letter to editor biblioteca
Language:English
Subjects:Life Science,
Online Access:https://research.wur.nl/en/publications/machine-learning-based-detection-of-irrigation-in-vojvodina-serbi
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spelling dig-wur-nl-wurpubs-6198202025-01-14 Radulović, Mirjana Brdar, Sanja Pejak, Branislav Lugonja, Predrag Athanasiadis, Ioannis Pajević, Nina Pavić, Dragoslav Crnojević, Vladimir Article/Letter to editor GIScience & Remote Sensing 60 (2023) 1 ISSN: 1548-1603 Machine learning-based detection of irrigation in Vojvodina (Serbia) using Sentinel-2 data 2023 With rapid population growth and the high influence of climate change on agricultural productivity, providing enough food is the main challenge in the 21st century. Irrigation, as a hydrological artificial process, has an indispensable role in achieving that goal. However, high pressure and demand on water resources could lead to serious problems in water consumption. Knowing information about the spatial distribution of irrigation parcels is essential to many aspects of Earth system science and global change research. To extract this knowledge for the main agricultural region in Serbia located in the moderate continental area, we utilized optical satellite Sentinel-2 data and collected ground truth data needed to train the machine learning model. Both satellite imagery and ground truth data were collected for the three most irrigated crops, maize, soybean, and sugar beet during 3 years (2020–2022) characterized by different weather conditions. This data was then used for training the Random Forest-based models, separately for each crop type, differentiating irrigated and rainfed crops on the parcel level. Finally, the models were run for the whole territory of Vojvodina generating 10 m resolution maps of irrigated three crops of interest. With overall accuracy for crops per year (2020: 0.76; 2021: 0.78; 2022: 0.84) results showed that this method could be successfully used for detecting the irrigation of three crops of interest. This was confirmed by validation with the national dataset from Public Water Management Company “Vode Vojvodine” which revealed that classification maps had an accuracy of 76%. These maps further allow us to understand the spatial dynamics of the most important irrigated crops and can serve for the improvement of sustainable agricultural water management. en application/pdf https://research.wur.nl/en/publications/machine-learning-based-detection-of-irrigation-in-vojvodina-serbi 10.1080/15481603.2023.2262010 https://edepot.wur.nl/639707 Life Science https://creativecommons.org/licenses/by/4.0/ https://creativecommons.org/licenses/by/4.0/ Wageningen University & Research
institution WUR NL
collection DSpace
country Países bajos
countrycode NL
component Bibliográfico
access En linea
databasecode dig-wur-nl
tag biblioteca
region Europa del Oeste
libraryname WUR Library Netherlands
language English
topic Life Science
Life Science
spellingShingle Life Science
Life Science
Radulović, Mirjana
Brdar, Sanja
Pejak, Branislav
Lugonja, Predrag
Athanasiadis, Ioannis
Pajević, Nina
Pavić, Dragoslav
Crnojević, Vladimir
Machine learning-based detection of irrigation in Vojvodina (Serbia) using Sentinel-2 data
description With rapid population growth and the high influence of climate change on agricultural productivity, providing enough food is the main challenge in the 21st century. Irrigation, as a hydrological artificial process, has an indispensable role in achieving that goal. However, high pressure and demand on water resources could lead to serious problems in water consumption. Knowing information about the spatial distribution of irrigation parcels is essential to many aspects of Earth system science and global change research. To extract this knowledge for the main agricultural region in Serbia located in the moderate continental area, we utilized optical satellite Sentinel-2 data and collected ground truth data needed to train the machine learning model. Both satellite imagery and ground truth data were collected for the three most irrigated crops, maize, soybean, and sugar beet during 3 years (2020–2022) characterized by different weather conditions. This data was then used for training the Random Forest-based models, separately for each crop type, differentiating irrigated and rainfed crops on the parcel level. Finally, the models were run for the whole territory of Vojvodina generating 10 m resolution maps of irrigated three crops of interest. With overall accuracy for crops per year (2020: 0.76; 2021: 0.78; 2022: 0.84) results showed that this method could be successfully used for detecting the irrigation of three crops of interest. This was confirmed by validation with the national dataset from Public Water Management Company “Vode Vojvodine” which revealed that classification maps had an accuracy of 76%. These maps further allow us to understand the spatial dynamics of the most important irrigated crops and can serve for the improvement of sustainable agricultural water management.
format Article/Letter to editor
topic_facet Life Science
author Radulović, Mirjana
Brdar, Sanja
Pejak, Branislav
Lugonja, Predrag
Athanasiadis, Ioannis
Pajević, Nina
Pavić, Dragoslav
Crnojević, Vladimir
author_facet Radulović, Mirjana
Brdar, Sanja
Pejak, Branislav
Lugonja, Predrag
Athanasiadis, Ioannis
Pajević, Nina
Pavić, Dragoslav
Crnojević, Vladimir
author_sort Radulović, Mirjana
title Machine learning-based detection of irrigation in Vojvodina (Serbia) using Sentinel-2 data
title_short Machine learning-based detection of irrigation in Vojvodina (Serbia) using Sentinel-2 data
title_full Machine learning-based detection of irrigation in Vojvodina (Serbia) using Sentinel-2 data
title_fullStr Machine learning-based detection of irrigation in Vojvodina (Serbia) using Sentinel-2 data
title_full_unstemmed Machine learning-based detection of irrigation in Vojvodina (Serbia) using Sentinel-2 data
title_sort machine learning-based detection of irrigation in vojvodina (serbia) using sentinel-2 data
url https://research.wur.nl/en/publications/machine-learning-based-detection-of-irrigation-in-vojvodina-serbi
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