Litcius/Paper detail

Parametric pod-galerkin model order reduction for unsteady-state heat transfer problems

Sokratia Georgaka, Giovanni Stabile, Gianluigi Rozza Gianluigi Rozza, Michael Bluck

2020CINECA IRIS Institutional Research information system (University of Urbino)39 citationsDOI

Abstract

A parametric reduced order model based on proper orthogonal decomposition with Galerkin projection has been developed and applied for the modeling of heat transport in T-junction pipes which are widely found in nuclear power reactor cooling systems. Thermal mixing of different temperature coolants in T-junction pipes leads to temperature fluctuations and this could potentially cause thermal fatigue in the pipe walls. The novelty of this paper is the development of a parametric ROM considering the three dimensional, incompressible, unsteady Navier-Stokes equations coupled with the heat transport equation in a finite volume regime. Two different parametric cases are presented in this paper: parametrization of the inlet temperatures and parametrization of the kinematic viscosity. Different training spaces are considered and the results are compared against the full order model. The first test case results to a computational speed-up factor of 374 while the second test case to one of 211.

Topics & Concepts

Parametric statisticsGalerkin methodParametrization (atmospheric modeling)MechanicsHeat transferCoolantProjection (relational algebra)CompressibilityModel order reductionReduction (mathematics)Finite element methodMathematicsPhysicsThermodynamicsGeometryStatisticsQuantum mechanicsRadiative transferAlgorithmModel Reduction and Neural NetworksNuclear Engineering Thermal-HydraulicsNuclear reactor physics and engineering