<?xml version="1.0" encoding="UTF-8"?><?xml-stylesheet type="text/xsl" href="static/style.xsl"?><OAI-PMH xmlns="http://www.openarchives.org/OAI/2.0/" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xsi:schemaLocation="http://www.openarchives.org/OAI/2.0/ http://www.openarchives.org/OAI/2.0/OAI-PMH.xsd"><responseDate>2026-05-05T20:44:06Z</responseDate><request verb="GetRecord" identifier="oai:uvadoc.uva.es:10324/54123" metadataPrefix="dim">https://uvadoc.uva.es/oai/request</request><GetRecord><record><header><identifier>oai:uvadoc.uva.es:10324/54123</identifier><datestamp>2025-02-07T12:56:59Z</datestamp><setSpec>com_10324_1191</setSpec><setSpec>com_10324_931</setSpec><setSpec>com_10324_894</setSpec><setSpec>col_10324_1379</setSpec></header><metadata><dim:dim xmlns:dim="http://www.dspace.org/xmlns/dspace/dim" xmlns:doc="http://www.lyncode.com/xoai" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xsi:schemaLocation="http://www.dspace.org/xmlns/dspace/dim http://www.dspace.org/schema/dim.xsd">
<dim:field mdschema="dc" element="contributor" qualifier="author" authority="afa157d3-7f2a-46b3-b7e7-89184d5115cd">Abadía Heredia, R.</dim:field>
<dim:field mdschema="dc" element="contributor" qualifier="author" authority="62ae581243920db3" confidence="600" orcid_id="">López Martín, Manuel</dim:field>
<dim:field mdschema="dc" element="contributor" qualifier="author" authority="3ed0e0c2a10252a4" confidence="600" orcid_id="0000-0001-7051-8479">Carro Martínez, Belén</dim:field>
<dim:field mdschema="dc" element="contributor" qualifier="author" authority="25df7221f705fcf7" confidence="600" orcid_id="0000-0002-7486-6152">Arribas Sánchez, Juan Ignacio</dim:field>
<dim:field mdschema="dc" element="contributor" qualifier="author" authority="3c704391-19f0-469c-b7bf-c40b9f5178c4">Pérez, José Miguel</dim:field>
<dim:field mdschema="dc" element="contributor" qualifier="author" authority="e31ed17d-bdc5-4b0d-81b5-3a714ddeec91" confidence="600" orcid_id="">Le Clainche, Soledad</dim:field>
<dim:field mdschema="dc" element="date" qualifier="accessioned">2022-07-20T11:29:38Z</dim:field>
<dim:field mdschema="dc" element="date" qualifier="available">2022-07-20T11:29:38Z</dim:field>
<dim:field mdschema="dc" element="date" qualifier="issued">2022</dim:field>
<dim:field mdschema="dc" element="identifier" qualifier="citation" lang="es">Expert Systems with Applications, 2022, vol. 187, p. 115910</dim:field>
<dim:field mdschema="dc" element="identifier" qualifier="issn" lang="es">0957-4174</dim:field>
<dim:field mdschema="dc" element="identifier" qualifier="uri">https://uvadoc.uva.es/handle/10324/54123</dim:field>
<dim:field mdschema="dc" element="identifier" qualifier="doi" lang="es">10.1016/j.eswa.2021.115910</dim:field>
<dim:field mdschema="dc" element="identifier" qualifier="publicationfirstpage" lang="es">115910</dim:field>
<dim:field mdschema="dc" element="identifier" qualifier="publicationtitle" lang="es">Expert Systems with Applications</dim:field>
<dim:field mdschema="dc" element="identifier" qualifier="publicationvolume" lang="es">187</dim:field>
<dim:field mdschema="dc" element="description" lang="es">Producción Científica</dim:field>
<dim:field mdschema="dc" element="description" qualifier="abstract" lang="es">Solving computational fluid dynamics problems requires using large computational resources. The computa-&#xd;
tional time and memory requirements to solve realistic problems vary from a few hours to several weeks with&#xd;
several processors working in parallel. Motivated by the need of reducing such large amount of resources&#xd;
(improving the industrial applications in which fluid dynamics plays a key role), this article introduces a new&#xd;
predictive Reduced Order Model (ROM) applied to solve fluid dynamics problems. The model is based on&#xd;
physical principles and combines modal decompositions with deep learning architectures. The hybrid ROM,&#xd;
reduces the dimensionality of a database via proper orthogonal decomposition (POD), extracting the dominant&#xd;
features leading the flow dynamics of the problem studied. The number of degrees of freedom are reduced&#xd;
from hundred thousands spatial points describing the database to a few (20–100) POD modes. Firstly, POD&#xd;
divides the spatio-temporal data into spatial modes and temporal coefficients (or temporal modes). Next, the&#xd;
temporal coefficients are integrated in time using convolutional or recurrent neural networks. The temporal&#xd;
evolution of the flow is approximated after combining the spatial modes with the new temporal coefficients&#xd;
computed. The model is tested in two complex problems of fluid dynamics, the three-dimensional wake of a&#xd;
circular cylinder and a synthetic jet. The hybrid ROM uses data from the initial transient stage of numerical&#xd;
simulations to predict the temporally converged solution of the flow with high accuracy. The speed-up factor&#xd;
comparing the time necessary to obtain the predicted solution using the hybrid ROM and the numerical solver&#xd;
is ∼140–348 in the synthetic jet and ∼2897–3818 in the three dimensional cylinder wake. The robustness shown&#xd;
in the results presented and the data-driven nature of this ROM, make it possible to extend its application to&#xd;
other fields (i.e. video and language processing, robotics, finances)</dim:field>
<dim:field mdschema="dc" element="description" qualifier="project" lang="es">Ministerio de Ciencia, Innovación y Universidades  Proyectos de I+D+i ‘‘Retos investigación’’, (grant RTI2018-098958- B-I00)</dim:field>
<dim:field mdschema="dc" element="description" qualifier="project" lang="es">Ministerio de Ciencia e Innovación y el Fondo Europeo de Desarrollo Regionales (FEDER) (grant PID2020-114173RB-I00)</dim:field>
<dim:field mdschema="dc" element="format" qualifier="mimetype" lang="es">application/pdf</dim:field>
<dim:field mdschema="dc" element="language" qualifier="iso" lang="es">eng</dim:field>
<dim:field mdschema="dc" element="publisher" lang="es">Elsevier</dim:field>
<dim:field mdschema="dc" element="rights" qualifier="accessRights" lang="es">info:eu-repo/semantics/openAccess</dim:field>
<dim:field mdschema="dc" element="rights" qualifier="uri" lang="*">http://creativecommons.org/licenses/by/4.0/</dim:field>
<dim:field mdschema="dc" element="rights" qualifier="holder" lang="es">© 2021 The Author(s)</dim:field>
<dim:field mdschema="dc" element="rights" lang="*">Atribución 4.0 Internacional</dim:field>
<dim:field mdschema="dc" element="subject" qualifier="classification" lang="es">Reduced order models</dim:field>
<dim:field mdschema="dc" element="subject" qualifier="classification" lang="es">Deep learning architectures</dim:field>
<dim:field mdschema="dc" element="subject" qualifier="classification" lang="es">POD</dim:field>
<dim:field mdschema="dc" element="subject" qualifier="classification" lang="es">Modal decompositions</dim:field>
<dim:field mdschema="dc" element="subject" qualifier="classification" lang="es">Neural networks</dim:field>
<dim:field mdschema="dc" element="subject" qualifier="classification" lang="es">Fluid dynamics</dim:field>
<dim:field mdschema="dc" element="subject" qualifier="unesco" lang="es">33 Ciencias Tecnológicas</dim:field>
<dim:field mdschema="dc" element="subject" qualifier="unesco" lang="es">12 Matemáticas</dim:field>
<dim:field mdschema="dc" element="title" lang="es">A predictive hybrid reduced order model based on proper orthogonal decomposition combined with deep learning architectures</dim:field>
<dim:field mdschema="dc" element="type" lang="es">info:eu-repo/semantics/article</dim:field>
<dim:field mdschema="dc" element="type" qualifier="hasVersion" lang="es">info:eu-repo/semantics/publishedVersion</dim:field>
<dim:field mdschema="dc" element="relation" qualifier="publisherversion" lang="es">https://www.sciencedirect.com/science/article/pii/S0957417421012653</dim:field>
<dim:field mdschema="dc" element="peerreviewed" lang="es">SI</dim:field>
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