Title of article :
An adaptive algorithm to build up sparse polynomial chaos expansions for stochastic finite element analysis
Author/Authors :
Blatman، نويسنده , , Géraud and Sudret، نويسنده , , Bruno، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Abstract :
Polynomial chaos (PC) expansions are used in stochastic finite element analysis to represent the random model response by a set of coefficients in a suitable (so-called polynomial chaos) basis. The number of terms to be computed grows dramatically with the size of the input random vector, which makes the computational cost of classical solution schemes (may it be intrusive (i.e.of Galerkin type) or non-intrusive) unaffordable when the deterministic finite element model is expensive to evaluate.
ress such problems, this paper describes a non-intrusive method that builds a sparse PC expansion. An adaptive regression-based algorithm is proposed for automatically detecting the significant coefficients of the PC expansion. Besides the sparsity of the basis, the experimental design used at each step of the algorithm is systematically complemented in order to ensure the well-posedness of the various regression problems. The accuracy of the PC model is checked using classical tools of statistical learning theory (e.g. leave-one-out cross-validation). As a consequence, a rather small number of PC terms is eventually retained (sparse representation), which may be obtained at a reduced computational cost compared to the classical “full” PC approximation. The convergence of the algorithm is shown on an academic example. Then the method is illustrated on two stochastic finite element problems, namely a truss and a frame structure involving 10 and 21 input random variables, respectively.
Keywords :
Adaptive stochastic finite elements , Sequential Experimental Design , Sparse polynomial chaos expansion , structural reliability , Regression , Response surfaces
Journal title :
Probabilistic Engineering Mechanics
Journal title :
Probabilistic Engineering Mechanics