2021
DOI: 10.3390/met11050738
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Data-Driven Modeling for Multiphysics Parametrized Problems-Application to Induction Hardening Process

Abstract: Data-driven modeling provides an efficient approach to compute approximate solutions for complex multiphysics parametrized problems such as induction hardening (IH) process. Basically, some physical quantities of interest (QoI) related to the IH process will be evaluated under real-time constraint, without any explicit knowledge of the physical behavior of the system. Hence, computationally expensive finite element models will be replaced by a parametric solution, called metamodel. Two data-driven models for t… Show more

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Cited by 13 publications
(9 citation statements)
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“…There is an exponential increase in the number of publications reporting that modeling route, in many technology domains: machining and drilling [17,25,68], additive manufacturing [143], reactive extrusion [16,63], induction hardening [28], chemical reactions [136], among many others.…”
Section: Data-driven Processesmentioning
confidence: 99%
“…There is an exponential increase in the number of publications reporting that modeling route, in many technology domains: machining and drilling [17,25,68], additive manufacturing [143], reactive extrusion [16,63], induction hardening [28], chemical reactions [136], among many others.…”
Section: Data-driven Processesmentioning
confidence: 99%
“…Then, an interpolation technique is applied to the set of POD modal coefficients { ki } N i=1 and for each k, a surrogate model is constructed using a regression method such as sparse proper generalized decomposition (sPGD) [31][32][33], support vector regressions (SVRs) [34], gaussian processes (GPs) [35], etc.…”
Section: Pod With Interpolation (Podi)mentioning
confidence: 99%
“…Using the approximated function, it is possible to evaluate any parameter value in the training intervals with a reasonable computational time. This method is already used for different applications, see [ 13 , 14 ].…”
Section: Introductionmentioning
confidence: 99%