Predicting the Spatial Distribution of Soil Organic Carbon in the Black Soil Area of Northeast Plain, China
Yunfeng Li,
Zhuo Chen (),
Yang Chen,
Taotao Li,
Cen Wang and
Chaoteng Li
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Yunfeng Li: Harbin Center for Integrated Natural Resources Survey China Geological Survey, Harbin 150000, China
Zhuo Chen: Harbin Center for Integrated Natural Resources Survey China Geological Survey, Harbin 150000, China
Yang Chen: Harbin Center for Integrated Natural Resources Survey China Geological Survey, Harbin 150000, China
Taotao Li: Harbin Center for Integrated Natural Resources Survey China Geological Survey, Harbin 150000, China
Cen Wang: Harbin Center for Integrated Natural Resources Survey China Geological Survey, Harbin 150000, China
Chaoteng Li: Harbin Center for Integrated Natural Resources Survey China Geological Survey, Harbin 150000, China
Sustainability, 2025, vol. 17, issue 2, 1-19
Abstract:
The accurate prediction of the spatial distribution of soil organic carbon (SOC) and the identification of the mechanisms underlying its spatial differentiation are of paramount significance for the conservation and utilization of land and regional sustainable development. A total of 512 soil samples were collected from Wuchang and Shuangcheng County in Harbin City, Heilongjiang Province, China, which served as the study area. Six machine learning models, including Random Forest (RF), AdaBoost, Support Vector Regression (SVR), weighted average, Stacking, and Blending, were utilized to predict the spatial distribution of SOC and analyze its spatial differentiation. The result reveals that 12 environmental variables, including soil type, bulk density, pH, average annual precipitation, average annual temperature, net primary productivity (NPP), land use type, normalized difference vegetation index (NDVI), slope, elevation, soil parent material, and distance to rivers, are effective influencing factors on SOC in the study area. It turns out that the Stacking model, with an R 2 of 0.4327, performed the best in this study, followed by the weighted average, Blending, RF, AdaBoost, and SVR models; a heterogeneous integrated learning model may be more robust than an individual learner. The predicted SOC content is generally lower in the northwestern arable land and higher in the southeastern forest land. In addition, SOC differentiation shows that forest land and grass land with dark brown soil or swamp soil, soil covering igneous and metamorphic rocks with various minerals, higher elevation and slope, and suitable water-thermal and soil intrinsic conditions for aerobic microbial activity benefit the enrichment of SOC in the study area. The enrichment and depletion of SOC are jointly influenced by pedogenesis, microbial activity, and biodiversity.
Keywords: soil organic carbon; spatial distribution prediction; heterogeneous integrated learning; Northeast Plain; Wuchang and Shuangcheng County (search for similar items in EconPapers)
JEL-codes: O13 Q Q0 Q2 Q3 Q5 Q56 (search for similar items in EconPapers)
Date: 2025
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