2020
DOI: 10.3390/rs12071095
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Improving the Spatial Prediction of Soil Organic Carbon Content in Two Contrasting Climatic Regions by Stacking Machine Learning Models and Rescanning Covariate Space

Abstract: Understanding the spatial distribution of soil organic carbon (SOC) content over different climatic regions will enhance our knowledge of carbon gains and losses due to climatic change. However, little is known about the SOC content in the contrasting arid and sub-humid regions of Iran, whose complex SOC–landscape relationships pose a challenge to spatial analysis. Machine learning (ML) models with a digital soil mapping framework can solve such complex relationships. Current research focusses on ensemble ML m… Show more

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Cited by 110 publications
(27 citation statements)
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References 103 publications
(200 reference statements)
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“…The influence of land use type on SOC prediction and the importance of optical and radar data under different land use types were analyzed. The overall prediction result of the model is better than some existing researches based on satellite remote sensing data [16,21,[23][24][25]33], and is similar to the result of Taghizadeh-Mehrjardi et al [17]. Among the three land use types, the prediction results of orchard (R 2 = 0.86 and MSE = 0.004%) are better than dry land and paddy field.…”
Section: Discussionsupporting
confidence: 77%
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“…The influence of land use type on SOC prediction and the importance of optical and radar data under different land use types were analyzed. The overall prediction result of the model is better than some existing researches based on satellite remote sensing data [16,21,[23][24][25]33], and is similar to the result of Taghizadeh-Mehrjardi et al [17]. Among the three land use types, the prediction results of orchard (R 2 = 0.86 and MSE = 0.004%) are better than dry land and paddy field.…”
Section: Discussionsupporting
confidence: 77%
“…Six common performance indicators including: R 2 , mean absolute error (MAE), mean squared error (MSE), percent root mean square error (%RMSE), ratio of performance to interquartile range (RPIQ), and corrected akaike information criterion (AICc) were used to assess model performance under different land use types. R 2 varies between 0 and 1, which indicates the closeness between the observed value and the fitting regression line or the variance ratio explained by independent predictors [17]. The model has great fitting degree and stability when R 2 closes to 1.…”
Section: Xgboost Algorithmmentioning
confidence: 79%
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