A methodology for fitting and validating metamodels in simulation

From MaRDI portal
Publication:1579457

DOI10.1016/S0377-2217(98)00392-0zbMath0985.65007OpenAlexW1529267578MaRDI QIDQ1579457

Robert G. Sargent, Jack P. C. Kleijnen

Publication date: 17 February 2002

Published in: European Journal of Operational Research (Search for Journal in Brave)

Full work available at URL: https://doi.org/10.1016/s0377-2217(98)00392-0



Lua error in Module:PublicationMSCList at line 37: attempt to index local 'msc_result' (a nil value).


Related Items (38)

A state-transition simulation model for the spread of Salmonella in the pork supply chainApplication of a Mode-based Meta-Model for the Reliability Assessment of Structures Subjected to Stochastic Ground AccelerationGlobal sensitivity analysis for a numerical model of radionuclide migration from the RRC ``Kurchatov Institute radwaste disposal siteModelling and optimization of average travel time for a metro line by simulation and response surface methodologySimulation metamodelling with neural networks: An experimental investigationA method for the updating of stochastic Kriging metamodelsAn overview of the design and analysis of simulation experiments for sensitivity analysisA fuzzy-neural resemblance approach to validate simulation modelsOptimal operation policy for a sustainable recirculation aquaculture system for ornamental fish: simulation and response surface methodologySecurity economics: an adversarial risk analysis approach to airport protectionA TOPSIS based design of experiment approach to assess company rankingRegression Models Augmented with Direct Stochastic Gradient EstimatorsTowards logistics systems parameter optimisation through the use of response surfacesComputationally and statistically efficient model fitting techniquesA metamodeling methodology involving both qualitative and quantitative input factors.Model calibration as a testing strategy for system dynamics models.Applicability and comparison of surrogate techniques for modeling of selected heating problemsImportance of verifying queue model assumptions before planning with simulation softwareFaster Kriging: Facing High-Dimensional SimulatorsNovel two-stage method for low-order polynomial modelA meta-model based simulation optimization using hybrid simulation-analytical modeling to increase the productivity in automotive industryMastering uncertainty in industry. II: A survey of physical and numerical statistical modelling methodsA simulation-based optimization approach to size manufacturing systemsRobustness of kriging when interpolating in random simulation with heterogeneous variances: some experimentsA similarity-based surrogate model for enhanced performance in genetic algorithmsA Metamodel Based Optimisation Algorithm for Metal Forming ProcessesIdentification of influence factors in a thermal model of a plasma-assisted chemical vapor deposition processAdaptive independent Metropolis-HastingsKriging metamodeling in simulation: a reviewOptimization using simulation and response surface methodology with an application on subway train schedulingAn efficient methodology for modeling complex computer codes with Gaussian processesEfficient Model Updating of the GOCE Satellite Based on Experimental Modal DataUsing subsystem linear regression metamodels in stochastic simulationValidation of regression metamodels in simulation: bootstrap approachStatistical Fitting and validation of nonlinear simulation metamodels: a case studyRobust prediction interval estimation for Gaussian processes by cross-validation methodSmall response surface designs for metamodel estimationSensitivity analysis by experimental design and metamodelling: case study on simulation in national animal disease control


Uses Software


Cites Work


This page was built for publication: A methodology for fitting and validating metamodels in simulation