
arXiv: 1705.05589
It is of great concern to produce numerically efficient methods for moisture diffusion through porous media, capable of accurately calculate moisture distribution with a reduced computational effort. In this way, model reduction methods are promising approaches to bring a solution to this issue since they do not degrade the physical model and provide a significant reduction of computational cost. Therefore, this article explores in details the capabilities of two model-reduction techniques - the Spectral Reduced-Order Model (Spectral-ROM) and the Proper Generalised Decomposition (PGD) - to numerically solve moisture diffusive transfer through porous materials. Both approaches are applied to three different problems to provide clear examples of the construction and use of these reduced-order models. The methodology of both approaches is explained extensively so that the article can be used as a numerical benchmark by anyone interested in building a reduced-order model for diffusion problems in porous materials. Linear and non-linear unsteady behaviors of unidimensional moisture diffusion are investigated. The last case focuses on solving a parametric problem in which the solution depends on space, time and the diffusivity properties. Results have highlighted that both methods provide accurate solutions and enable to reduce significantly the order of the model around ten times lower than the large original model. It also allows an efficient computation of the physical phenomena with an error lower than 10^{-2} when compared to a reference solution.
42 pages, 14 figures, 1 table, 69 references. Other author's papers can be downloaded at http://www.denys-dutykh.com/. arXiv admin note: text overlap with arXiv:1704.07607
Proper Generalised Decomposition (PGD), 35R30 (primary), [PHYS.PHYS.PHYS-CLASS-PH]Physics [physics]/Physics [physics]/Classical Physics [physics.class-ph], 80A20, ACM: I.: Computing Methodologies/I.6: SIMULATION AND MODELING/I.6.5: Model Development/I.6.5.0: Modeling methodologies, FOS: Physical sciences, 65M32 (secondary)44.05.+e (primary), Physics - Classical Physics, [PHYS.PHYS.PHYS-COMP-PH]Physics [physics]/Physics [physics]/Computational Physics [physics.comp-ph], 44.10.+i, Mathematics - Analysis of PDEs, 35K05, ACM: G.: Mathematics of Computing/G.1: NUMERICAL ANALYSIS/G.1.8: Partial Differential Equations/G.1.8.11: Spectral methods, spectral methods, numerical methods, FOS: Mathematics, [MATH.MATH-AP]Mathematics [math]/Analysis of PDEs [math.AP], Mathematics - Numerical Analysis, reduced-order modelling, ACM: G.: Mathematics of Computing/G.1: NUMERICAL ANALYSIS/G.1.7: Ordinary Differential Equations/G.1.7.6: Initial value problems, 02.70.Bf (secondary), Classical Physics (physics.class-ph), ACM: G.: Mathematics of Computing/G.1: NUMERICAL ANALYSIS/G.1.7: Ordinary Differential Equations/G.1.7.9: Stiff equations, Numerical Analysis (math.NA), [INFO.INFO-NA]Computer Science [cs]/Numerical Analysis [cs.NA], Computational Physics (physics.comp-ph), [INFO.INFO-MO]Computer Science [cs]/Modeling and Simulation, 620, [SPI.MECA.THER]Engineering Sciences [physics]/Mechanics [physics.med-ph]/Thermics [physics.class-ph], Physics - Computational Physics, [MATH.MATH-NA]Mathematics [math]/Numerical Analysis [math.NA], moisture diffusion, 02.60.Cb, Analysis of PDEs (math.AP)
Proper Generalised Decomposition (PGD), 35R30 (primary), [PHYS.PHYS.PHYS-CLASS-PH]Physics [physics]/Physics [physics]/Classical Physics [physics.class-ph], 80A20, ACM: I.: Computing Methodologies/I.6: SIMULATION AND MODELING/I.6.5: Model Development/I.6.5.0: Modeling methodologies, FOS: Physical sciences, 65M32 (secondary)44.05.+e (primary), Physics - Classical Physics, [PHYS.PHYS.PHYS-COMP-PH]Physics [physics]/Physics [physics]/Computational Physics [physics.comp-ph], 44.10.+i, Mathematics - Analysis of PDEs, 35K05, ACM: G.: Mathematics of Computing/G.1: NUMERICAL ANALYSIS/G.1.8: Partial Differential Equations/G.1.8.11: Spectral methods, spectral methods, numerical methods, FOS: Mathematics, [MATH.MATH-AP]Mathematics [math]/Analysis of PDEs [math.AP], Mathematics - Numerical Analysis, reduced-order modelling, ACM: G.: Mathematics of Computing/G.1: NUMERICAL ANALYSIS/G.1.7: Ordinary Differential Equations/G.1.7.6: Initial value problems, 02.70.Bf (secondary), Classical Physics (physics.class-ph), ACM: G.: Mathematics of Computing/G.1: NUMERICAL ANALYSIS/G.1.7: Ordinary Differential Equations/G.1.7.9: Stiff equations, Numerical Analysis (math.NA), [INFO.INFO-NA]Computer Science [cs]/Numerical Analysis [cs.NA], Computational Physics (physics.comp-ph), [INFO.INFO-MO]Computer Science [cs]/Modeling and Simulation, 620, [SPI.MECA.THER]Engineering Sciences [physics]/Mechanics [physics.med-ph]/Thermics [physics.class-ph], Physics - Computational Physics, [MATH.MATH-NA]Mathematics [math]/Numerical Analysis [math.NA], moisture diffusion, 02.60.Cb, Analysis of PDEs (math.AP)
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