Abstract The typical modeling approach to groundwater management relies on the combination of optimization algorithms and subsurface simulation models. In the case of groundwater supply systems, the management problem may be structured into an optimization problem to identify the pumping scheme that minimizes the total cost of the system while complying with a series of technical, economical, and hydrological constraints. Since lack of data on the subsurface system most often reflects upon the development of groundwater flow models that are inherently uncertain, the solution to the groundwater management problem should explicitly consider the tradeoff between cost optimality and the risk of not meeting the management constraints. This work ...
[EN] In decision-making processes, reliability and risk aversion play a decisive role. This paper pr...
A methodology is developed for optimal remediation of groundwater aquifers under hydraulic conducti...
In decision-making processes, reliability and risk aversion play a decisive role. The aim of this st...
The question of managing groundwater resources is one of implementing institutions that regulate the...
Solving groundwater remediation optimization problems based on proxy simulators can usually yield op...
A new stochastic optimization model under modeling uncertainty (SOMUM) and parameter certainty is ap...
Combined simulation-optimization approaches have been used as tools to derive optimal groundwater ma...
AbstractA stochastic management tool is developed and applied in order to evaluate the worth of hydr...
Stochastic two-stage programming, a main branch of stochastic programming, offers models and methods...
Management of groundwater contamination is a very cost-intensive proposition filled with conflicting...
The primary purpose of this research project is to incorporate parameter uncertainty into the develo...
A stochastic analysis is made for a previously described groundwater contaminant management model {P...
We consider a complex dynamical system, which depends on decision variables and random parameters. T...
We propose a framework that combines simulation optimization with Bayesian decision analysis to eval...
It is accepted that digital models simplify the physical reality that is the object of the modeling....
[EN] In decision-making processes, reliability and risk aversion play a decisive role. This paper pr...
A methodology is developed for optimal remediation of groundwater aquifers under hydraulic conducti...
In decision-making processes, reliability and risk aversion play a decisive role. The aim of this st...
The question of managing groundwater resources is one of implementing institutions that regulate the...
Solving groundwater remediation optimization problems based on proxy simulators can usually yield op...
A new stochastic optimization model under modeling uncertainty (SOMUM) and parameter certainty is ap...
Combined simulation-optimization approaches have been used as tools to derive optimal groundwater ma...
AbstractA stochastic management tool is developed and applied in order to evaluate the worth of hydr...
Stochastic two-stage programming, a main branch of stochastic programming, offers models and methods...
Management of groundwater contamination is a very cost-intensive proposition filled with conflicting...
The primary purpose of this research project is to incorporate parameter uncertainty into the develo...
A stochastic analysis is made for a previously described groundwater contaminant management model {P...
We consider a complex dynamical system, which depends on decision variables and random parameters. T...
We propose a framework that combines simulation optimization with Bayesian decision analysis to eval...
It is accepted that digital models simplify the physical reality that is the object of the modeling....
[EN] In decision-making processes, reliability and risk aversion play a decisive role. This paper pr...
A methodology is developed for optimal remediation of groundwater aquifers under hydraulic conducti...
In decision-making processes, reliability and risk aversion play a decisive role. The aim of this st...