TY - JOUR
T1 - Accuracy of Various Sampling Techniques for Precision Agriculture
T2 - A Case Study in Brazil
AU - Valente, Domingos Sárvio Magalhães
AU - Pereira, Gustavo Willam
AU - de Queiroz, Daniel Marçal
AU - Zandonadi, Rodrigo Sinaidi
AU - Amaral, Lucas Rios do
AU - Bottega, Eduardo Leonel
AU - Costa, Marcelo Marques
AU - de Freitas Coelho, Andre Luiz
AU - Grift, Tony
N1 - This work was made possible thanks to the support of the Coordination for the Improvement of Higher Education Personnel\u2014Brazil (CAPES), Funding Code 001, FAPEMIG, National Council for Scientific and Technological Development (CNPq), and Mato Grosso State Research Support Foundation (FAPEMAT).
This research was funded by Coordination for the Improvement of Higher Education Personnel\u2014Brazil (CAPES), Funding Code 001.
PY - 2024/12
Y1 - 2024/12
N2 - Precision agriculture techniques contribute to optimizing the use of agricultural inputs, as they consider the spatial and temporal variability in the production factors. Prescription maps of limestone and fertilizers at variable rates (VRA) can be generated using various soil sampling techniques, such as point grid sampling, cell sampling, and management zone sampling. However, low-density grid sampling often fails to capture the spatial variability in soil properties, leading to inaccurate fertilizer recommendations. Sampling techniques by cells or management zones can generate maps of better quality and at lower costs than the sampling system by degree of points with low sampling density. Thus, this study aimed to compare the accuracy of different sampling techniques for mapping soil attributes in precision agriculture. For this purpose, the following sampling techniques were used: high-density point grid sampling method, low-density point grid sampling method, cell sampling method, management zone sampling method, and conventional method (considering the mean). Six areas located in the Brazilian states of Bahia, Minas Gerais, Mato Grosso, Goias, Mato Grosso do Sul, and Sao Paulo were used. The Root-Mean-Square-Error (RMSE) method was determined for each method using cross-validation. It was concluded that the cell method generated the lowest error, followed by the high-density point grid sampling method. Management zone sampling showed a lower error compared to the low-density point grid sampling method. By comparing different sampling techniques, we demonstrate that management zone and cell grid sampling can reduce soil sampling while maintaining comparable or superior accuracy in soil attribute mapping.
AB - Precision agriculture techniques contribute to optimizing the use of agricultural inputs, as they consider the spatial and temporal variability in the production factors. Prescription maps of limestone and fertilizers at variable rates (VRA) can be generated using various soil sampling techniques, such as point grid sampling, cell sampling, and management zone sampling. However, low-density grid sampling often fails to capture the spatial variability in soil properties, leading to inaccurate fertilizer recommendations. Sampling techniques by cells or management zones can generate maps of better quality and at lower costs than the sampling system by degree of points with low sampling density. Thus, this study aimed to compare the accuracy of different sampling techniques for mapping soil attributes in precision agriculture. For this purpose, the following sampling techniques were used: high-density point grid sampling method, low-density point grid sampling method, cell sampling method, management zone sampling method, and conventional method (considering the mean). Six areas located in the Brazilian states of Bahia, Minas Gerais, Mato Grosso, Goias, Mato Grosso do Sul, and Sao Paulo were used. The Root-Mean-Square-Error (RMSE) method was determined for each method using cross-validation. It was concluded that the cell method generated the lowest error, followed by the high-density point grid sampling method. Management zone sampling showed a lower error compared to the low-density point grid sampling method. By comparing different sampling techniques, we demonstrate that management zone and cell grid sampling can reduce soil sampling while maintaining comparable or superior accuracy in soil attribute mapping.
KW - soil fertility
KW - variable-rate application
KW - geostatistics
KW - management zones
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U2 - 10.3390/agriculture14122198
DO - 10.3390/agriculture14122198
M3 - Article
SN - 2077-0472
VL - 14
JO - Agriculture (Switzerland)
JF - Agriculture (Switzerland)
IS - 12
M1 - 2198
ER -