This thesis presents novel techniques for spatial prediction of soil carbon. Chapter 1 introduces a method to incorporate the local scale spatial variability of soil organic carbon into regional scale mapping. Different to the conventional approach of using globally calibrated single model for the entire region, this method uses a combination of locally and globally calibrated models to predict soil organic carbon at regional scale, using a moving widow approach. Chapter 2 studies how diverse spatial modelling techniques perform under varying training sample sizes, in terms of soil carbon predictions. The study explores the behaviour of various algorithms ranging from simple linear models to complex machine learning techniques trained under...
AbstractSoil organic carbon, the major component of soil organic matter, is very important in all so...
Digital mapping of soil organic carbon (SOC) is essential for visualizing the spatial distribution a...
Spatially enabled sensing technologies are now available for refining traditional methods of assessi...
Precise and accurate estimates of soil carbon stock (CS) at various scales are key to understanding ...
Precise and accurate estimates of soil carbon stock (CS) at various scales are key to understanding ...
[Abstract] Soil Organic Carbon (SOC) content is a key element for soil fertility and productivity, n...
Rapid and accurate mapping of soil organic carbon (SOC) is of great significance to understanding th...
We consider approaches for calculating and mapping statistical predictions of soil organic carbon (S...
High-resolution and continuous soil maps are an essential prerequisite for precision agriculture and...
We consider approaches for calculating and mapping statistical predictions of soil organic carbon (S...
Forest soil organic carbon (SOC) is the largest terrestrial pool of carbon, and its management plays...
Various approaches of differing mathematical complexities are being applied for spatial prediction o...
This thesis explores statistical methodologies for predicting maps of soil carbon levels from small ...
Various approaches of differing mathematical complexities are being applied for spatial prediction o...
This thesis explores statistical methodologies for predicting maps of soil carbon levels from small ...
AbstractSoil organic carbon, the major component of soil organic matter, is very important in all so...
Digital mapping of soil organic carbon (SOC) is essential for visualizing the spatial distribution a...
Spatially enabled sensing technologies are now available for refining traditional methods of assessi...
Precise and accurate estimates of soil carbon stock (CS) at various scales are key to understanding ...
Precise and accurate estimates of soil carbon stock (CS) at various scales are key to understanding ...
[Abstract] Soil Organic Carbon (SOC) content is a key element for soil fertility and productivity, n...
Rapid and accurate mapping of soil organic carbon (SOC) is of great significance to understanding th...
We consider approaches for calculating and mapping statistical predictions of soil organic carbon (S...
High-resolution and continuous soil maps are an essential prerequisite for precision agriculture and...
We consider approaches for calculating and mapping statistical predictions of soil organic carbon (S...
Forest soil organic carbon (SOC) is the largest terrestrial pool of carbon, and its management plays...
Various approaches of differing mathematical complexities are being applied for spatial prediction o...
This thesis explores statistical methodologies for predicting maps of soil carbon levels from small ...
Various approaches of differing mathematical complexities are being applied for spatial prediction o...
This thesis explores statistical methodologies for predicting maps of soil carbon levels from small ...
AbstractSoil organic carbon, the major component of soil organic matter, is very important in all so...
Digital mapping of soil organic carbon (SOC) is essential for visualizing the spatial distribution a...
Spatially enabled sensing technologies are now available for refining traditional methods of assessi...