Uncertainty quantification is very much needed to support decision making related to e.g. environmental impact assessment for waste disposal sites. A probabilistic result provides a much stronger basis for decision making compared to a single deterministic outcome. Accurate posterior exploration of high-dimensional and CPU-intensive models, which are often used for environmental impact assessment, is however a challenging task. To quantify the uncertainty associated with solute transport in the framework of a near surface radioactive waste disposal in Mol/Dessel, Belgium, we investigate combining the adaptive Metropolis (AM) McMC algorithm for updating the global model parameters, and adaptive spatial resampling (ASR) for updating of the sp...
171 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.Real-world optimization probl...
Assessment of the environmental fate and behavior of constituents that have the potential to leach f...
In this work, a computationally efficient Bayesian framework for the reduction and characterization ...
Uncertainty is endemic in geospatial data due to the imperfect means of recording, processing, and r...
Highly parameterized and CPU-intensive groundwater models are increasingly being used to understand ...
Management of groundwater contamination is a very cost-intensive proposition filled with conflicting...
Groundwater flow and solute transport modelling are affected by different kinds of uncertainty inclu...
Abstract The typical modeling approach to groundwater management relies on the combination of optimi...
A new stochastic optimization model under modeling uncertainty (SOMUM) and parameter certainty is ap...
In heavily urbanised areas, groundwater diffuse pollution is recognised as one of the most insidious...
In Belgium, the Boom Clay is being considered as a potential host formation for the disposal of nucl...
Solving groundwater remediation optimization problems based on proxy simulators can usually yield op...
Although about 2 billion people worldwide rely on groundwater for their drinking water, our knowledg...
It is accepted that digital models simplify the physical reality that is the object of the modeling....
My first paper shows the importance of numerical modeling and post-calibration uncertainty analyses ...
171 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.Real-world optimization probl...
Assessment of the environmental fate and behavior of constituents that have the potential to leach f...
In this work, a computationally efficient Bayesian framework for the reduction and characterization ...
Uncertainty is endemic in geospatial data due to the imperfect means of recording, processing, and r...
Highly parameterized and CPU-intensive groundwater models are increasingly being used to understand ...
Management of groundwater contamination is a very cost-intensive proposition filled with conflicting...
Groundwater flow and solute transport modelling are affected by different kinds of uncertainty inclu...
Abstract The typical modeling approach to groundwater management relies on the combination of optimi...
A new stochastic optimization model under modeling uncertainty (SOMUM) and parameter certainty is ap...
In heavily urbanised areas, groundwater diffuse pollution is recognised as one of the most insidious...
In Belgium, the Boom Clay is being considered as a potential host formation for the disposal of nucl...
Solving groundwater remediation optimization problems based on proxy simulators can usually yield op...
Although about 2 billion people worldwide rely on groundwater for their drinking water, our knowledg...
It is accepted that digital models simplify the physical reality that is the object of the modeling....
My first paper shows the importance of numerical modeling and post-calibration uncertainty analyses ...
171 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.Real-world optimization probl...
Assessment of the environmental fate and behavior of constituents that have the potential to leach f...
In this work, a computationally efficient Bayesian framework for the reduction and characterization ...