This tutorial reviews the design and analysis of simulation experiments. These experiments may have various goals: validation, prediction, sensitivity analysis, optimization (possibly robust), and risk or uncertainty analysis. These goals may be realized through metamodels. Two types of metamodels are the focus of this tutorial: (i) low-order polynomial regression, and (ii) Kriging or Gaussian processes). The type of metamodel guides the design of the experiment; this design .…xes the input combinations of the simulation model. However, before a regression or Kriging metamodel is applied, the many inputs of the underlying realistic simulation model should be screened; the tutorial focuses on sequential bifurcation. Optimization of the simul...
Simulation models are used in many fields to experiment with real-world systems to gain insight into...
Sensitivity analysis may serve validation, optimization, and risk analysis of simulation models. Thi...
This expository paper discusses the relationships among metamodels, simulation models, and problem e...
This article reviews the design and analysis of simulation experiments. It focusses on analysis via ...
This chapter surveys two methods for the optimization of real-world systems that are modelled throug...
This chapter gives a survey on the use of statistical designs for what-if analysis in simula- tion, ...
AbstractThis Invited Lecture covers classic and modern designs, and their metamodels. Classic resolu...
Many simulation practitioners can get more from their analyses by using the statistical theory on de...
This tutorial explains the basics of linear regression models. especially low-order polynomials. and...
This introductory tutorial gives a survey on the use of statistical designs for what if-or sensitivi...
This contribution presents an overview of sensitivity analysis of simulation models, including the e...
In the real world of engineering problems, in order to reduce optimization costs in ph...
This paper proposes a novel method to select an experimental design for interpolation in simulation....
Metamodels are often used in simulation-optimization for the design and management of complex system...
Sensitivity analysis may serve validation, optimization, and risk analysis of simulation models.This...
Simulation models are used in many fields to experiment with real-world systems to gain insight into...
Sensitivity analysis may serve validation, optimization, and risk analysis of simulation models. Thi...
This expository paper discusses the relationships among metamodels, simulation models, and problem e...
This article reviews the design and analysis of simulation experiments. It focusses on analysis via ...
This chapter surveys two methods for the optimization of real-world systems that are modelled throug...
This chapter gives a survey on the use of statistical designs for what-if analysis in simula- tion, ...
AbstractThis Invited Lecture covers classic and modern designs, and their metamodels. Classic resolu...
Many simulation practitioners can get more from their analyses by using the statistical theory on de...
This tutorial explains the basics of linear regression models. especially low-order polynomials. and...
This introductory tutorial gives a survey on the use of statistical designs for what if-or sensitivi...
This contribution presents an overview of sensitivity analysis of simulation models, including the e...
In the real world of engineering problems, in order to reduce optimization costs in ph...
This paper proposes a novel method to select an experimental design for interpolation in simulation....
Metamodels are often used in simulation-optimization for the design and management of complex system...
Sensitivity analysis may serve validation, optimization, and risk analysis of simulation models.This...
Simulation models are used in many fields to experiment with real-world systems to gain insight into...
Sensitivity analysis may serve validation, optimization, and risk analysis of simulation models. Thi...
This expository paper discusses the relationships among metamodels, simulation models, and problem e...