Digital map** of GlobalSoilMap soil properties at a broad scale: A review
Soils are essential for supporting food production and providing ecosystem services but are
under pressure due to population growth, higher food demand, and land use competition …
under pressure due to population growth, higher food demand, and land use competition …
Machine learning for digital soil map**: Applications, challenges and suggested solutions
The uptake of machine learning (ML) algorithms in digital soil map** (DSM) is
transforming the way soil scientists produce their maps. Within the past two decades, soil …
transforming the way soil scientists produce their maps. Within the past two decades, soil …
[LIVRE][B] Geocomputation with R
Geocomputation with R is for people who want to analyze, visualize and model geographic
data with open source software. It is based on R, a statistical programming language that …
data with open source software. It is based on R, a statistical programming language that …
Sampling design optimization for soil map** with random forest
Abstract Machine learning techniques are widely employed to generate digital soil maps.
The map accuracy is partly determined by the number and spatial locations of the …
The map accuracy is partly determined by the number and spatial locations of the …
[HTML][HTML] Spatial statistics and soil map**: A blossoming partnership under pressure
GBM Heuvelink, R Webster - Spatial statistics, 2022 - Elsevier
For the better part of the 20th century pedologists mapped soil by drawing boundaries
between different classes of soil which they identified from survey on foot or by vehicle …
between different classes of soil which they identified from survey on foot or by vehicle …
Predictive performance of machine learning model with varying sampling designs, sample sizes, and spatial extents
Using machine learning and earth observation data to capture real-world variability in
spatial predictive map** depends on sample size, design, and spatial extent …
spatial predictive map** depends on sample size, design, and spatial extent …
[HTML][HTML] Predictive soil map** with R
In this chapter we review the statistical theory for soil map**. We focus on models
considered most suitable for practical implementation and use with soil profile data and …
considered most suitable for practical implementation and use with soil profile data and …
[HTML][HTML] Estimating soil organic carbon stock change at multiple scales using machine learning and multivariate geostatistics
Many national and international initiatives rely on spatially explicit information on soil
organic carbon (SOC) stock change at multiple scales to support policies aiming at land …
organic carbon (SOC) stock change at multiple scales to support policies aiming at land …
Perspectives on validation in digital soil map** of continuous attributes—A review
We performed a systematic map** of validation methods used in digital soil map**
(DSM), in order to gain an overview of current practices and make recommendations for …
(DSM), in order to gain an overview of current practices and make recommendations for …
Towards spatially continuous map** of soil organic carbon in croplands using multitemporal Sentinel-2 remote sensing
Intensified human activities can augment soil organic carbon (SOC) losses from the world's
croplands, making SOC a highly dynamic parameter both in space and time. Sentinel-2 …
croplands, making SOC a highly dynamic parameter both in space and time. Sentinel-2 …