Mapping Agricultural Intensification in the Brazilian Savanna: A Machine Learning Approach Using Harmonized Data from Landsat Sentinel-2

Author:

Bolfe Édson Luis12ORCID,Parreiras Taya Cristo2ORCID,Silva Lucas Augusto Pereira da3ORCID,Sano Edson Eyji4ORCID,Bettiol Giovana Maranhão4,Victoria Daniel de Castro1,Sanches Ieda Del’Arco5ORCID,Vicente Luiz Eduardo6

Affiliation:

1. Brazilian Agricultural Research Corporation (Embrapa Agricultura Digital), Campinas 13083-886, Brazil

2. Institute of Geosciences, State University of Campinas (Unicamp), Campinas 13083-855, Brazil

3. Institute of Geography, Federal University of Uberlândia (UFU), Uberlândia 38408-100, Brazil

4. Brazilian Agricultural Research Corporation (Embrapa Cerrados), Planaltina 73301-970, Brazil

5. National Institute for Space Research (INPE), São José dos Campos 12227-010, Brazil

6. Brazilian Agricultural Research Corporation (Embrapa Meio Ambiente), Jaguariúna 13820-000, Brazil

Abstract

Agricultural intensification practices have been adopted in the Brazilian savanna (Cerrado), mainly in the transition between Cerrado and the Amazon Forest, to increase productivity while reducing pressure for new land clearing. Due to the growing demand for more sustainable practices, more accurate information on geospatial monitoring is required. Remote sensing products and artificial intelligence models for pixel-by-pixel classification have great potential. Therefore, we developed a methodological framework with spectral indices (Normalized Difference Vegetation Index (NDVI), Normalized Difference Water Index (NDWI), and Soil-Adjusted Vegetation Index (SAVI)) derived from the Harmonized Landsat Sentinel-2 (HLS) and machine learning algorithms (Random Forest (RF), Artificial Neural Networks (ANNs), and Extreme Gradient Boosting (XGBoost)) to map agricultural intensification considering three hierarchical levels, i.e., temporary crops (level 1), the number of crop cycles (level 2), and the crop types from the second season in double-crop systems (level 3) in the 2021–2022 crop growing season in the municipality of Sorriso, Mato Grosso State, Brazil. All models were statistically similar, with an overall accuracy between 85 and 99%. The NDVI was the most suitable index for discriminating cultures at all hierarchical levels. The RF-NDVI combination mapped best at level 1, while at levels 2 and 3, the best model was XGBoost-NDVI. Our results indicate the great potential of combining HLS data and machine learning to provide accurate geospatial information for decision-makers in monitoring agricultural intensification, with an aim toward the sustainable development of agriculture.

Funder

São Paulo Research Foundation

National Council for Scientific and Technological Development

Coordination for the Improvement of Higher Education Personnel

Minas Gerais Research Support Foundation

Publisher

MDPI AG

Subject

Earth and Planetary Sciences (miscellaneous),Computers in Earth Sciences,Geography, Planning and Development

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