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Discussion: the design and analysis of the Gaussian process model

Journal Article · · Quality and Reliability Engineering International
 [1];  [2]
  1. Los Alamos National Laboratory
  2. UNIV OF BC-OKANAGAN

The investigation of complex physical systems utilizing sophisticated computer models has become commonplace with the advent of modern computational facilities. In many applications, experimental data on the physical systems of interest is extremely expensive to obtain and hence is available in limited quantities. The mathematical systems implemented by the computer models often include parameters having uncertain values. This article provides an overview of statistical methodology for calibrating uncertain parameters to experimental data. This approach assumes that prior knowledge about such parameters is represented as a probability distribution, and the experimental data is used to refine our knowledge about these parameters, expressed as a posterior distribution. Uncertainty quantification for computer model predictions of the physical system are based fundamentally on this posterior distribution. Computer models are generally not perfect representations of reality for a variety of reasons, such as inadequacies in the physical modeling of some processes in the dynamic system. The statistical model includes components that identify and adjust for such discrepancies. A standard approach to statistical modeling of computer model output for unsampled inputs is introduced for the common situation where limited computer model runs are available. Extensions of the statistical methods to functional outputs are available and discussed briefly.

Research Organization:
Los Alamos National Laboratory (LANL)
Sponsoring Organization:
DOE
DOE Contract Number:
AC52-06NA25396
OSTI ID:
964980
Report Number(s):
LA-UR-08-06101; LA-UR-08-6101
Journal Information:
Quality and Reliability Engineering International, Journal Name: Quality and Reliability Engineering International; ISSN QREIE5; ISSN 0748-8017
Country of Publication:
United States
Language:
English

References (8)

Combining Field Data and Computer Simulations for Calibration and Prediction journal January 2004
The Design and Analysis of Computer Experiments book January 2003
Bayesian calibration of computer models journal August 2001
Design and Analysis of Computer Experiments journal November 1989
Model of plastic deformation for extreme loading conditions journal January 2003
Orthogonal Array-Based Latin Hypercubes journal December 1993
Combining experimental data and computer simulations, with an application to flyer plate experiments journal December 2006
Probabilistic sensitivity analysis of complex models: a Bayesian approach journal August 2004

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