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Fast reproduction of time-dependent diffusion calculations using the reduced order model based on the proper orthogonal and singular value decompositions

Kosuke Tsujita, Tomohiro Endo, Akio Yamamoto

2020Journal of Nuclear Science and Technology19 citationsDOI

Abstract

An efficient reduced order model (ROM) for time-dependent diffusion calculations using the proper orthogonal decomposition (POD) is proposed. Employing the singular value decomposition (SVD) and low-rank approximation (LRA) for the flux distributions sampled from the detail full order model (FOM) solutions, the orthogonal basis suitable for a target problem is numerically obtained. In the present ROM, flux distribution is expanded with an orthogonal basis on space. Then, the dimensionality reduction is performed for the neutron diffusion equation using the orthogonal basis, and the equation for the expansion coefficients is obtained. Since any flux distributions can be used to construct the orthogonal bases, different orthogonal bases calculated from different flux distribution sets are tested. The accuracy and computation time of the present ROM are verified in the TWIGL benchmark problem. The calculation results show that the present ROM is approximately 100 times faster than the FOM for kinetic calculations in the present conditions. The present method can be substituted as real-time FOM simulations when typical flux distributions of a target problem can be precalculated to represent the solution space with less degree of freedom (DOF).

Topics & Concepts

Orthogonal basisSingular value decompositionBasis (linear algebra)MathematicsSingular valueCurse of dimensionalityDiffusionOrthogonal matrixDiffusion equationApplied mathematicsComputationFlux (metallurgy)Distribution (mathematics)Mathematical analysisPhysicsAlgorithmEigenvalues and eigenvectorsGeometryChemistryQuantum mechanicsStatisticsEconomyOrganic chemistryEconomicsService (business)Nuclear reactor physics and engineeringModel Reduction and Neural NetworksProbabilistic and Robust Engineering Design