Calibration and improved prediction of computer models by universal kriging

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Abstract

This paper addresses the use of experimental data for calibrating a computer model and improving its predictions of the underlying physical system. A global statistical approach is proposed in which the bias between the computer model and the physical system is modeled as a realization of a Gaussian process. The application of classical statistical inference to this statistical model yields a rigorous method for calibrating the computer model and for adding to its predictions a statistical correction based on experimental data. This statistical correction can substantially improve the calibrated computer model for predicting the physical system on new experimental conditions. Furthermore, a quantification of the uncertainty of this prediction is provided. Physical expertise on the calibration parameters can also be taken into account in a Bayesian framework. Finally, the method is applied to the thermal-hydraulic code FLICA 4, in a single-phase friction model framework. It allows significant improvement of the predictions of FLICA 4.

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Bachoc, F., Bois, G., Garnier, J., & Martinez, J. M. (2014). Calibration and improved prediction of computer models by universal kriging. Nuclear Science and Engineering, 176(1), 81–97. https://doi.org/10.13182/NSE12-55

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