4.7 Article

Scale-Specific Prediction of Topsoil Organic Carbon Contents Using Terrain Attributes and SCMaP Soil Reflectance Composites

期刊

REMOTE SENSING
卷 14, 期 10, 页码 -

出版社

MDPI
DOI: 10.3390/rs14102295

关键词

soil reflectance composites; digital soil modeling; soil organic carbon; GEOBIA; Landsat; terrain analysis

资金

  1. German Federal Ministry of Food and Agriculture (BMEL) [281B301816]

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There is an increasing demand for accurate prediction of SOC contents in agricultural soils for food security and monitoring long-term changes related to soil health and climate change. This study uses multi-scale terrain attributes and soil reflectance composites to predict SOC content, combining geographic object-based image analysis and machine learning. The results show that different scale levels have varying predictive power for SOC content.
There is a growing need for an area-wide knowledge of SOC contents in agricultural soils at the field scale for food security and monitoring long-term changes related to soil health and climate change. In Germany, SOC maps are mostly available with a spatial resolution of 250 m to 1 km(2). The nationwide availability of both digital elevation models at various spatial resolutions and multi-temporal satellite imagery enables the derivation of multi-scale terrain attributes and (here: Landsat-based) multi-temporal soil reflectance composites (SRC) as explanatory variables. In the example of a Bavarian test of about 8000 km(2), relations between 220 SOC content samples as well as different aggregation levels of the explanatory variables were analyzed for their scale-specific predictive power. The aggregation levels were generated by applying a region-growing segmentation procedure, and the SOC content prediction was realized by the Random Forest algorithm. In doing so, established approaches of (geographic) object-based image analysis (GEOBIA) and machine learning were combined. The modeling results revealed scale-specific differences. Compared to terrain attributes, the use of SRC parameters leads to a significant model improvement at field-related scale levels. The joint use of both terrain attributes and SRC parameters resulted in further model improvements. The best modeling variant is characterized by an accuracy of R-2 = 0.84 and RMSE = 1.99.

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