This paper demonstrates for the first time the use of Markov Chain Monte Carlo (MCMC) simulation for parameter inference in model-based soil geostatistics. We implemented the recently developed DiffeRential Evolution Adaptive Metropolis (DREAM) algorithm to jointly summarize the posterior distribution of variogram parameters and the coefficients of a linear spatial model, and derive estimates of predictive uncertainty. The DREAM method runs multiple different Markov chains in parallel and jumps in each chain are generated from a discrete proposal distribution containing a fixed multiple of the difference of the states of randomly chosen pairs of other chains. This approach automatically scales the orientation and scale of the proposal distr...
<p>A geostatistical model was developed and applied to predict six soil properties and soil horizon ...
Abstract. Assessing the uncertainties of simulation results of ecological models is becoming increas...
Thesis (Ph.D.), Department of Biological Systems Engineering, Washington State UniversityThe aims of...
Geotechnical models are usually associated with considerable amounts of model uncertainty. In this s...
We present an overview of Markov chain Monte Carlo, a sampling method for model inference and uncert...
International audienceWe present an overview of Markov chain Monte Carlo, a sampling method for mode...
International audienceWe present an overview of Markov chain Monte Carlo, a sampling method for mode...
Due to our imperfect knowledge of soil distributions acquired from field surveys, spatial uncertaint...
Due to our imperfect knowledge of soil distributions acquired from field surveys, spatial uncertaint...
This paper presents a practical and objective procedure for a Bayesian inversion of geophysical data...
Area-to-point kriging (ATPK) is a geostatistical method for creating high-resolution raster maps usi...
ABSTRACT. Natural resources models serve as important tools to support decision making by predicting...
Bayesian inference has found widespread application and use in science and engineering to reconcile ...
In previous chapters, the use of geostatistical modelling for soil mapping was addressed. We learnt ...
Unlike the traditional two-stage methods, a conditional and inverse-conditional simulation approach ...
<p>A geostatistical model was developed and applied to predict six soil properties and soil horizon ...
Abstract. Assessing the uncertainties of simulation results of ecological models is becoming increas...
Thesis (Ph.D.), Department of Biological Systems Engineering, Washington State UniversityThe aims of...
Geotechnical models are usually associated with considerable amounts of model uncertainty. In this s...
We present an overview of Markov chain Monte Carlo, a sampling method for model inference and uncert...
International audienceWe present an overview of Markov chain Monte Carlo, a sampling method for mode...
International audienceWe present an overview of Markov chain Monte Carlo, a sampling method for mode...
Due to our imperfect knowledge of soil distributions acquired from field surveys, spatial uncertaint...
Due to our imperfect knowledge of soil distributions acquired from field surveys, spatial uncertaint...
This paper presents a practical and objective procedure for a Bayesian inversion of geophysical data...
Area-to-point kriging (ATPK) is a geostatistical method for creating high-resolution raster maps usi...
ABSTRACT. Natural resources models serve as important tools to support decision making by predicting...
Bayesian inference has found widespread application and use in science and engineering to reconcile ...
In previous chapters, the use of geostatistical modelling for soil mapping was addressed. We learnt ...
Unlike the traditional two-stage methods, a conditional and inverse-conditional simulation approach ...
<p>A geostatistical model was developed and applied to predict six soil properties and soil horizon ...
Abstract. Assessing the uncertainties of simulation results of ecological models is becoming increas...
Thesis (Ph.D.), Department of Biological Systems Engineering, Washington State UniversityThe aims of...