2018
DOI: 10.1002/nme.5793
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Adaptive sparse grid based HOPGD: Toward a nonintrusive strategy for constructing space‐time welding computational vademecum

Abstract: Summary Simulation‐based engineering usually needs the construction of computational vademecum to take into account the multiparametric aspect. One example concerns the optimization and inverse identification problems encountered in welding processes. This paper presents a nonintrusive a posteriori strategy for constructing quasi‐optimal space‐time computational vademecum using the higher‐order proper generalized decomposition method. Contrary to conventional tensor decomposition methods, based on full grids (… Show more

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Cited by 27 publications
(16 citation statements)
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“…Other perspectives concern the case where more parameters are involved. Some solution strategies consist in switching from SVD to higher order SVG (HO‐SVD), 39 higher order proper generalized decomposition (HO‐PGD), 40,41 Candecomp/Parafac (CP), 42 or their gappy versions 43,44 . Other surrogate modelings can be considered, such as Kriging, 45 or even support vector regression (SVR) 46 .…”
Section: Discussionmentioning
confidence: 99%
“…Other perspectives concern the case where more parameters are involved. Some solution strategies consist in switching from SVD to higher order SVG (HO‐SVD), 39 higher order proper generalized decomposition (HO‐PGD), 40,41 Candecomp/Parafac (CP), 42 or their gappy versions 43,44 . Other surrogate modelings can be considered, such as Kriging, 45 or even support vector regression (SVR) 46 .…”
Section: Discussionmentioning
confidence: 99%
“…The separated character of F (h) means that it is a sum of rank-one terms, being each rank-one term the product of sectional modes (the adjective sectional is used to indicate that the mode depends only on one of the parameters). The algorithm employed to compute the SRS is based on the ideas of the leastsquares PGD approximations described in detail in [3,4,15,14].…”
Section: Separated Response Surface (Srs)mentioning
confidence: 99%
“…This form or concept is known as CD [29]. The so-called PGD method has adopted this concept for solving PDEs [10,30] and for data learning [14,15,31].…”
Section: Canonical Tensor Decompositionmentioning
confidence: 99%
“…It has gained increased popularity in recent years. For overcoming the intrusiveness and extending the applicability of the method, the a posteriori data-driven PGD [14][15][16][17] has also been developed more recently. In contrast to a priori PGD, the a posteriori method uses a database to learn the separated functions and thus can be used as regression for constructing reduced order surrogate models.…”
Section: Introductionmentioning
confidence: 99%