Title of article :
A non-stationary covariance-based Kriging method for metamodelling in engineering design
Author/Authors :
Ying-Xiong Qiu، نويسنده , , Wei Chen، نويسنده , , Daniel Apley، نويسنده , , Xuru Ding، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2007
Abstract :
Metamodels are widely used to facilitate the analysis and optimization of engineering systems that
involve computationally expensive simulations. Kriging is a metamodelling technique that is well known
for its ability to build surrogate models of responses with non-linear behaviour. However, the assumption
of a stationary covariance structure underlying Kriging does not hold in situations where the level of
smoothness of a response varies significantly. Although non-stationary Gaussian process models have been
studied for years in statistics and geostatistics communities, this has largely been for physical experimental
data in relatively low dimensions. In this paper, the non-stationary covariance structure is incorporated into
Kriging modelling for computer simulations. To represent the non-stationary covariance structure, we adopt
a non-linear mapping approach based on parameterized density functions. To avoid over-parameterizing
for the high dimension problems typical of engineering design, we propose a modified version of the
non-linear map approach, with a sparser, yet flexible, parameterization. The effectiveness of the proposed
method is demonstrated through both mathematical and engineering examples. The robustness of the
method is verified by testing multiple functions under various sampling settings. We also demonstrate
that our method is effective in quantifying prediction uncertainty associated with the use of metamodels.
Copyright q 2006 John Wiley & Sons, Ltd
Keywords :
KRIGING , Gaussian process model , Metamodelling , non-stationary covariance , computerexperiments , Engineering design , prediction uncertainty
Journal title :
International Journal for Numerical Methods in Engineering
Journal title :
International Journal for Numerical Methods in Engineering