[Abstract] Soil Organic Carbon (SOC) content is a key element for soil fertility and productivity, nutrient availability and potentially represents a measurement of the sink for greenhouse gas abatement. Improving our knowledge on the spatial distribution of SOC is hence essential for sustainable nutrient management and carbon storage capacity. The objective of this study was to evaluate the performance of six tree-based machine-learning models when using environmental variables (i.e., remote sensing and terrain attributes - scenario 1), Fourier Transform Infrared Spectroscopy (FTIR) data (scenario 2) and combination of environmental variables and FTIR data (scenario 3) as predictors in prediction of SOC content. The models included Random ...
The non-destructive and rapid estimation of soil total carbon (SOC) content with mid-infrared spectr...
Soil organic carbon stock plays a key role in the global carbon cycle and the precision agriculture....
Reforestation of agricultural lands with mixed-species environmental plantings can effectively seque...
The current research was directed at Lighvan watershed, northwest of Iran to investigate ETM+ data a...
Digital mapping of soil organic carbon (SOC) is essential for visualizing the spatial distribution a...
Rapid and accurate mapping of soil organic carbon (SOC) is of great significance to understanding th...
International audienceUnderstanding spatial and temporal variability in soil organic carbon (SOC) co...
This thesis presents novel techniques for spatial prediction of soil carbon. Chapter 1 introduces a ...
Resource-efficient techniques for accurate soil carbon estimation are necessary to satisfy the incre...
The rapid quantitative assessment of soil organic carbon (SOC) is essential for understanding SOC dy...
AbstractIn this study we present a methodology to estimate and map the content of Soil Organic Carbo...
Accurate mapping of soil organic carbon (SOC) and inorganic carbon (SIC) contents at regional scales...
International audienceMid-infrared reflectance spectroscopy (MIRS, 4000–400 cm−1) is being considere...
International audienceMid-infrared reflectance spectroscopy (MIRS, 4000–400 cm−1) is being considere...
Soil organic carbon stock plays a key role in the global carbon cycle and the precision agriculture....
The non-destructive and rapid estimation of soil total carbon (SOC) content with mid-infrared spectr...
Soil organic carbon stock plays a key role in the global carbon cycle and the precision agriculture....
Reforestation of agricultural lands with mixed-species environmental plantings can effectively seque...
The current research was directed at Lighvan watershed, northwest of Iran to investigate ETM+ data a...
Digital mapping of soil organic carbon (SOC) is essential for visualizing the spatial distribution a...
Rapid and accurate mapping of soil organic carbon (SOC) is of great significance to understanding th...
International audienceUnderstanding spatial and temporal variability in soil organic carbon (SOC) co...
This thesis presents novel techniques for spatial prediction of soil carbon. Chapter 1 introduces a ...
Resource-efficient techniques for accurate soil carbon estimation are necessary to satisfy the incre...
The rapid quantitative assessment of soil organic carbon (SOC) is essential for understanding SOC dy...
AbstractIn this study we present a methodology to estimate and map the content of Soil Organic Carbo...
Accurate mapping of soil organic carbon (SOC) and inorganic carbon (SIC) contents at regional scales...
International audienceMid-infrared reflectance spectroscopy (MIRS, 4000–400 cm−1) is being considere...
International audienceMid-infrared reflectance spectroscopy (MIRS, 4000–400 cm−1) is being considere...
Soil organic carbon stock plays a key role in the global carbon cycle and the precision agriculture....
The non-destructive and rapid estimation of soil total carbon (SOC) content with mid-infrared spectr...
Soil organic carbon stock plays a key role in the global carbon cycle and the precision agriculture....
Reforestation of agricultural lands with mixed-species environmental plantings can effectively seque...