This article surveys optimization of simulated systems. The simulation may be either deterministic or random. The survey reflects the author’s extensive experience with simulation-optimization through Kriging (or Gaussian process) metamodels, analysed through parametric bootstrapping for deterministic and random simulation and distribution-free bootstrapping (or resampling) for random simulation. The survey covers: (1) simulation-optimization through ‘efficient global optimization’ using ‘expected improvement’ (EI); this EI uses the Kriging predictor variance, which can be estimated through bootstrapping accounting for the estimation of the Kriging parameters; (2) optimization with constraints for multiple random simulation outputs and dete...
This paper investigates two related questions: (1) How to derive a confidence interval for the outpu...
Many scientific disciplines use mathematical models to describe complicated real systems. Often, ana...
This article uses a sequentialized experimental design to select simulation input com- binations for...
Abstract: This article surveys optimization of simulated systems. The simulation may be either deter...
This survey considers the optimization of simulated systems. The simulation may be either determinis...
Kriging (or Gaussian Process) metamodels may be analyzed through bootstrapping, which is a versatile...
This chapter surveys two methods for the optimization of real-world systems that are modelled throug...
This article uses a sequentialized experimental design to select simulation input combinations for g...
Optimization of simulated systems is the goal of many methods, but most methods assume known environ...
Kriging is a popular method for estimating the global optimum of a simulated system. Kriging approxi...
Most methods in simulation-optimization assume known environments, whereas this research accounts fo...
Most methods in simulation-optimization assume known environments, whereas this research accounts fo...
Kriging is a popular method for estimating the global optimum of a simulated system. Kriging approxi...
Kriging (Gaussian process, spatial correlation) metamodels approximate the Input/Output (I/O) functi...
Optimization of simulated systems is the goal of many methods, but most methods assume known environ...
This paper investigates two related questions: (1) How to derive a confidence interval for the outpu...
Many scientific disciplines use mathematical models to describe complicated real systems. Often, ana...
This article uses a sequentialized experimental design to select simulation input com- binations for...
Abstract: This article surveys optimization of simulated systems. The simulation may be either deter...
This survey considers the optimization of simulated systems. The simulation may be either determinis...
Kriging (or Gaussian Process) metamodels may be analyzed through bootstrapping, which is a versatile...
This chapter surveys two methods for the optimization of real-world systems that are modelled throug...
This article uses a sequentialized experimental design to select simulation input combinations for g...
Optimization of simulated systems is the goal of many methods, but most methods assume known environ...
Kriging is a popular method for estimating the global optimum of a simulated system. Kriging approxi...
Most methods in simulation-optimization assume known environments, whereas this research accounts fo...
Most methods in simulation-optimization assume known environments, whereas this research accounts fo...
Kriging is a popular method for estimating the global optimum of a simulated system. Kriging approxi...
Kriging (Gaussian process, spatial correlation) metamodels approximate the Input/Output (I/O) functi...
Optimization of simulated systems is the goal of many methods, but most methods assume known environ...
This paper investigates two related questions: (1) How to derive a confidence interval for the outpu...
Many scientific disciplines use mathematical models to describe complicated real systems. Often, ana...
This article uses a sequentialized experimental design to select simulation input com- binations for...