The article of record as published may be found at http://dx.doi.org/10.5711/1082598318161Interval-based simulation (IBS) has been proposed to model input uncertainty in discrete-event simulation. The foundation of this new simulation paradigm is imprecise probability, which models systems under both aleatory and epistemic uncertainties. The statistical distribution parameters in IBS are represented by intervals instead of precise real numbers. This paper discusses how the IBS approach can be applied to stochastic Lanchester models that are used in combat simulation to better account for input parameter uncertainty. The advantages of this approach are explored in comparison with second-order Monte Carlo simulation. Using IBS, an improv...
Part 4: UQ PracticeInternational audienceThis paper illustrates how interval analysis can be used as...
Input modeling is the selection of a probability distribution to capture the uncertainty in the inpu...
Discrete-event stochastic simulation is a powerful tool for understanding and evaluating complex sys...
Uncertainty associated with input parameters and models in simulation has gained attentions in recen...
The objective of this research is to increase the robustness of discrete-event simulation (DES) when...
Stochastic simulation is an invaluable tool for operations-research practitioners for the performanc...
The need for expressing uncertainty in stochastic simulation systems is widely recognized. However, ...
When we use simulation to estimate the performance of a stochastic system, the simulation often cont...
A timeline in Discrete-Event Simulation (DES) is a sequence of events defined in a numerable subset ...
In stochastic simulation the input models used to drive the simulation are often estimated by collec...
We formulate and evaluate a Bayesian approach to probabilistic input modeling. Taking into account t...
This paper considers stochastic simulations with correlated input random variables having NORmal-To-...
One of the possible ways of dealing with interval uncertainty is to use Monte-Carlo simulations. A r...
Game theory has become an important tool in solving real-life decision making problems. Security gam...
Intervals are used to represent imprecise numerical values. Modelling uncertain values with precise ...
Part 4: UQ PracticeInternational audienceThis paper illustrates how interval analysis can be used as...
Input modeling is the selection of a probability distribution to capture the uncertainty in the inpu...
Discrete-event stochastic simulation is a powerful tool for understanding and evaluating complex sys...
Uncertainty associated with input parameters and models in simulation has gained attentions in recen...
The objective of this research is to increase the robustness of discrete-event simulation (DES) when...
Stochastic simulation is an invaluable tool for operations-research practitioners for the performanc...
The need for expressing uncertainty in stochastic simulation systems is widely recognized. However, ...
When we use simulation to estimate the performance of a stochastic system, the simulation often cont...
A timeline in Discrete-Event Simulation (DES) is a sequence of events defined in a numerable subset ...
In stochastic simulation the input models used to drive the simulation are often estimated by collec...
We formulate and evaluate a Bayesian approach to probabilistic input modeling. Taking into account t...
This paper considers stochastic simulations with correlated input random variables having NORmal-To-...
One of the possible ways of dealing with interval uncertainty is to use Monte-Carlo simulations. A r...
Game theory has become an important tool in solving real-life decision making problems. Security gam...
Intervals are used to represent imprecise numerical values. Modelling uncertain values with precise ...
Part 4: UQ PracticeInternational audienceThis paper illustrates how interval analysis can be used as...
Input modeling is the selection of a probability distribution to capture the uncertainty in the inpu...
Discrete-event stochastic simulation is a powerful tool for understanding and evaluating complex sys...