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Fast Numerical Approximation of Linear, Second-Order Hyperbolic Problems Using Model Order Reduction and the Laplace Transform (2405.19896v1)

Published 30 May 2024 in math.NA and cs.NA

Abstract: We extend our previous work [F. Henr\'iquez and J. S. Hesthaven, arXiv:2403.02847 (2024)] to the linear, second-order wave equation in bounded domains. This technique, referred to as the Laplace Transform Reduced Basis (LT-RB) method, uses two widely known mathematical tools to construct a fast and efficient method for the solution of linear, time-dependent problems: The Laplace transform and the Reduced Basis method, hence the name. The application of the Laplace transform yields a time-independent problem parametrically depending on the Laplace variable. Following the two-phase paradigm of the RB method, firstly in an offline stage we sample the Laplace parameter, compute the full-order or high-fidelity solution, and then resort to a Proper Orthogonal Decomposition (POD) to extract a basis of reduced dimension. Then, in an online phase, we project the time-dependent problem onto this basis and proceed to solve the evolution problem using any suitable time-stepping method. We prove exponential convergence of the reduced solution computed by the LT-RB method toward the high-fidelity one as the dimension of the reduced space increases. Finally, we present a set of numerical experiments portraying the performance of the method in terms of accuracy and, in particular, speed-up when compared to the full-order model.

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