Predicting and Mapping of Soil Organic Carbon Using Machine Learning Algorithms in Northern Iran
Mostafa Emadi, Ruhollah Taghizadeh-Mehrjardi, Ali Cherati, Majid, Danesh, Amir Mosavi, Thomas Scholten

TL;DR
This study compares machine learning algorithms for predicting soil organic carbon in Northern Iran, finding deep neural networks most accurate and highlighting key environmental predictors like precipitation and vegetation indices.
Contribution
It introduces a novel application of deep neural networks for SOC prediction using extensive auxiliary data and feature selection, improving accuracy over traditional models.
Findings
Deep neural networks achieved the lowest prediction error.
Precipitation and vegetation indices are key predictors.
SOC varies significantly across soil moisture and land use classes.
Abstract
Estimation of the soil organic carbon content is of utmost importance in understanding the chemical, physical, and biological functions of the soil. This study proposes machine learning algorithms of support vector machines, artificial neural networks, regression tree, random forest, extreme gradient boosting, and conventional deep neural network for advancing prediction models of SOC. Models are trained with 1879 composite surface soil samples, and 105 auxiliary data as predictors. The genetic algorithm is used as a feature selection approach to identify effective variables. The results indicate that precipitation is the most important predictor driving 15 percent of SOC spatial variability followed by the normalized difference vegetation index, day temperature index of moderate resolution imaging spectroradiometer, multiresolution valley bottom flatness and land use, respectively.…
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Taxonomy
MethodsFeature Selection
