Please use this identifier to cite or link to this item: http://repositorio.ufla.br/jspui/handle/1/55340
Title: Influence of auxiliary soil variables to improve PXRF-based soil fertility evaluation in India
Keywords: Soil fertility
Entisols
Inceptisols
Random forest
Support vector regression
Fertilizer recommendation
Fertilidade do solo
Entissolos
Inceptissolos
Regressão de vetor de suporte
Recomendação de fertilizantes
Issue Date: Sep-2022
Publisher: Elsevier
Citation: DASGUPTA, S. et al. Influence of auxiliary soil variables to improve PXRF-based soil fertility evaluation in India. Geoderma Regional, [S. l.], v. 30, e00557, Sept. 2022. DOI: 10.1016/j.geodrs.2022.e00557.
Abstract: Portable X-ray fluorescence (PXRF)spectrometry has already been established as a rapid and cost-effective tool for predicting various soil physicochemical properties. This study used PXRF in combination with physiographic, agro-climatic, soil parent-material, and physicochemical attributes (pH, electrical conductivity (EC), loss on ignition organic matter, and organic carbon) as auxiliary properties to predict multiple soil fertility indicators [available K, Ca, Mg, Fe, Cu, Zn, Mn, B, K/Mg ratio, total exchangeable bases (TEB), and sulfur availability index (SAI)] via four machine-learning algorithms (random forest, support vector regression, stepwise multiple linear regression, and an averaged model). Principal component analysis (PCA) indicated the links between PXRF-reported elements, agro-climatic zones, and soil parent materials. Although no universal prediction model can be selected to suit all 11 soil fertility parameters, three parameters (available Ca, Fe, and TEB) produced reasonable model performance with an R2 > 0.50 for most prediction model-dataset combinations. Concatenation of auxiliary soil parameters with PXRF data showed relative improvement in model accuracy compared to PXRF in isolation. Notably, the agro-climatic zone appeared influential for predicting available K, Mg, Zn, Fe, Mn, B, K/Mg ratio, and TEB. For potential fertilizer recommendation, six parameters (available K, Ca, Mg, Cu, Mn, and B) produced reasonable classification performance via the averaged model using all auxiliary predictors (κ > 0.30). The same categorical model was used, as an instance, for delineating a conceptualized framework for (PXRF+ auxiliary properties)-based fertilizer recommendation facilitating site-specific nutrient management. More research is needed to enhance model prediction/classification accuracy by including a well-balanced dataset and other relevant auxiliary variables with PXRF. Nevertheless, the importance of adding auxiliary soil properties with PXRF elemental data for cost-effective and accessible nutrient management in resource-poor countries seems promising.
URI: https://doi.org/10.1016/j.geodrs.2022.e00557
http://repositorio.ufla.br/jspui/handle/1/55340
Appears in Collections:DCS - Artigos publicados em periódicos

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