Geotechnologies on the phosphorus stocks determination in tropical soils: General impacts on society

Jorge Tadeu Fim Rosas,José A.M. Demattê,Nícolas Augusto Rosin, Bruno dos Anjos Bartsch,Raul Roberto Poppiel,Heidy S. Rodriguez-Albarracin, Jean de Jesus Novaes, Paulo Sergio Pavinato, Yuxin Ma,Danilo César de Mello,Marcio Rocha Francelino, Marcelo Alves Rodrigues

Science of The Total Environment(2024)

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摘要
Phosphorus (P) is a critical nutrient for primary production in terrestrial and aquatic ecosystems. As P mineral reserves are finite and non-renewable, there is an increasing discussion on its sustainable utilization to safeguard food security for future generations. Understanding the spatial distribution of soil P is central in advancing effective phosphorus management and fostering sustainable agricultural practices. This study aims to digitally map the stocks of available P (AP) and total P (TP) in Brazil at a fine resolution (30 m). Using the Random Forest machine learning algorithm and a database of topsoil (0-20 cm) with 28,572 samples for AP and 3154 for TP, we predicted P stocks based on environmental covariates related to soil formation processes. By dividing Brazil into two sub-regions, representing areas with native coverage and anthropogenic ones, we built independent predictive models for each sub-region. Our results show that Brazil has a TP stock of 531 Tg and an AP stock of 17.4 Tg. The largest soil TP stocks are in the Atlantic Forest biome (73.8 g.m2), likely due to higher organic carbon stocks in this biome. The largest AP stocks were in the Caatinga biome (2.51 g.m2) because of younger soils with low P adsorption capacity. We also found that fertilizer use significantly increased AP stocks in agricultural areas compared to native ones. Our results indicated that AP stocks strongly influenced Brazil's agricultural production, with a correlation coefficient ranging from 0.20 for coffee crops to 0.46 for soybean. The maps generated in this study are expected to contribute to the sustainable use of P in agriculture and environmental systems.
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关键词
Digital soil mapping,Sustainability,Remote sensing,Machine learning,Soil health
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