One of the core tasks in digital soil mapping (DSM) studies is the estimation of the spatial distribution of different soil variables. In addition, however, assessing the uncertainty of these estimations is equally important, something that a lot of current DSM studies lack. Machine learning (ML) methods are increasingly used in this scientific field, the majority of which do not have intrinsic uncertainty estimation capabilities. A solution to this is the use of specific ML methods that provide advanced prediction capabilities, along with innate uncertainty estimation metrics, like Quantile Regression Forests (QRF). In the current paper, the prediction and the uncertainty capabilities of QRF, Random Forests (RF) and geostatistical methods ...
Soil organic carbon (SOC) estimation is crucial to manage natural and anthropic ecosystems. Many mod...
This paper compares three models that use soil type information from point observations and a soil m...
Soil organic carbon (SOC) estimation is crucial to manage natural and anthropic ecosystems. Many mod...
Sustainable forest management needs fine-resolution and area-wide information about forest soil prop...
ABSTRACT: Different uses of soil legacy data such as training dataset as well as the selection of so...
In recent years, the environmental modeling community has moved away from kriging as the main mappin...
A goal of sustainable forest management using digital soil mapping (DSM) is to ensure that current a...
Machine learning models are now capable of delivering coveted digital soil mapping (DSM) benefits (e...
International audienceThe density of soil observations is a major determinant of digital soil mappin...
Spatial soil information is essential for informed decision-making in a wide range of fields. Digita...
Spatial soil information in forests is crucial to assess ecosystem services such as carbon storage, ...
Digital soil maps describe the spatial variation of soil and provide important information on spatia...
Graduation date: 2016Soil properties may hold the key to improved predictions of soils during digita...
Spatial modelling of analysis results such as grade, geochemical properties and density is required ...
Digital soil mapping (DSM) techniques are widely employed to generate soil maps. Soil properties are...
Soil organic carbon (SOC) estimation is crucial to manage natural and anthropic ecosystems. Many mod...
This paper compares three models that use soil type information from point observations and a soil m...
Soil organic carbon (SOC) estimation is crucial to manage natural and anthropic ecosystems. Many mod...
Sustainable forest management needs fine-resolution and area-wide information about forest soil prop...
ABSTRACT: Different uses of soil legacy data such as training dataset as well as the selection of so...
In recent years, the environmental modeling community has moved away from kriging as the main mappin...
A goal of sustainable forest management using digital soil mapping (DSM) is to ensure that current a...
Machine learning models are now capable of delivering coveted digital soil mapping (DSM) benefits (e...
International audienceThe density of soil observations is a major determinant of digital soil mappin...
Spatial soil information is essential for informed decision-making in a wide range of fields. Digita...
Spatial soil information in forests is crucial to assess ecosystem services such as carbon storage, ...
Digital soil maps describe the spatial variation of soil and provide important information on spatia...
Graduation date: 2016Soil properties may hold the key to improved predictions of soils during digita...
Spatial modelling of analysis results such as grade, geochemical properties and density is required ...
Digital soil mapping (DSM) techniques are widely employed to generate soil maps. Soil properties are...
Soil organic carbon (SOC) estimation is crucial to manage natural and anthropic ecosystems. Many mod...
This paper compares three models that use soil type information from point observations and a soil m...
Soil organic carbon (SOC) estimation is crucial to manage natural and anthropic ecosystems. Many mod...