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Optimal representation of multi-dimensional random fields with a moderate number of samples: Application to stochastic mechanics

Authors :
Manuel J. Miranda
Paolo Bocchini
Vasileios Christou
Source :
Probabilistic Engineering Mechanics. 44:53-65
Publication Year :
2016
Publisher :
Elsevier BV, 2016.

Abstract

A significant amount of problems and applications in stochastic mechanics and engineering involve multi-dimensional random functions. The probabilistic analysis of these problems is usually computationally very expensive if a brute-force Monte Carlo method is used. Thus, a technique for the optimal selection of a moderate number of samples effectively representing the entire space of sample realizations is of paramount importance. Functional Quantization is a novel technique that has been proven to provide optimal approximations of random functions using a predetermined number of representative samples. The methodology is very easy to implement and it has been shown to work effectively for stationary and non-stationary one-dimensional random functions. This paper discusses the application of the Functional Quantization approach to the domain of multi-dimensional random functions and the applicability is demonstrated for the case of a 2D non-Gaussian field and a two-dimensional panel with uncertain Young modulus under plane stress.

Details

ISSN :
02668920
Volume :
44
Database :
OpenAIRE
Journal :
Probabilistic Engineering Mechanics
Accession number :
edsair.doi...........7ceb0dba6501e2c124beaaf40d257fb1