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Mapping and prediction of soil organic carbon by an advanced geostatistical technique using remote sensing and terrain data

Santanu Mallik, Tridip Bhowmik, Umesh Mishra, Niladri Paul

2020Geocarto International50 citationsDOIOpen Access PDF

Abstract

Prediction and accurate digital soil mapping (DSM) of soil organic carbon (SOC) at a local scale is a key factor for any agro-ecological modelling. This study aims to use remote sensing and terrain derivatives to provide a reliable method for SOC prediction. An advanced geostatistical-based empirical Bayesian Kriging regression (EBKR) method was used and performance was compared with the artificial neural network (ANN) and hybrid ANN, i.e. ANN-OK (ordinary kriging) and ANN-CK (cokriging). The result showed that the hybrid ANN model performs better than ANN, whereas the EBKR method outperforms all other methods with the highest R2 of 0.936. The DSM map shows that the highest SOC concentration was found in easternmost part of the study area with grass and agricultural land. This work shows the robustness of the EBKR prediction method over other techniques. The study will also aid the policymakers in adopting sustainable land use management.

Topics & Concepts

KrigingDigital soil mappingTerrainArtificial neural networkRobustness (evolution)Soil carbonEnvironmental scienceRandom forestComputer scienceData miningRemote sensingSoil mapSoil scienceMachine learningCartographyGeographySoil waterChemistryBiochemistryGeneSoil Geostatistics and MappingRemote Sensing in AgricultureSoil and Land Suitability Analysis
Mapping and prediction of soil organic carbon by an advanced geostatistical technique using remote sensing and terrain data | Litcius