Well-balanced POD-based reduced-order models for finite volume approximation of hyperbolic balance laws
By: I. Gómez-Bueno, E. D. Fernández-Nieto, S. Rubino
Potential Business Impact:
Makes computer simulations of water and air faster.
This paper introduces a reduced-order modeling approach based on finite volume methods for hyperbolic systems, combining Proper Orthogonal Decomposition (POD) with the Discrete Empirical Interpolation Method (DEIM) and Proper Interval Decomposition (PID). Applied to systems such as the transport equation with source term, non-homogeneous Burgers equation, and shallow water equations with non-flat bathymetry and Manning friction, this method achieves significant improvements in computational efficiency and accuracy compared to previous time-averaging techniques. A theoretical result justifying the use of well-balanced Full-Order Models (FOMs) is presented. Numerical experiments validate the approach, demonstrating its accuracy and efficiency. Furthermore, the question of prediction of solutions for systems that depend on some physical parameters is also addressed, and a sensitivity analysis on POD parameters confirms the model's robustness and efficiency in this case.
Similar Papers
POD-ROM methods: error analysis for continuous parametrized approximations
Numerical Analysis
Makes computer models of changing things more accurate.
Using BDF schemes in the temporal integration of POD-ROM methods
Numerical Analysis
Makes computer models of science problems faster.
POD-based reduced order modeling of global-in-time iterative decoupled algorithms for Biot's consolidation model
Numerical Analysis
Makes building simulations run much faster.