Uniform Bounds with Difference Quotients for Proper Orthogonal Decomposition Reduced Order Models of the Burgers Equation

06/07/2022
by   Birgul Koc, et al.
0

In this paper, we work uniform error bounds for proper orthogonal decomposition reduced order modeling (POD-ROM) of Burgers equation, considering difference quotients (DQs), introduced in [23]. In particular, we study the optimality behavior of the DQ ROM error bounds by considering L^2(Ω) and H^1_0(Ω) POD spaces. We present some meaningful numerical tests checking the optimality error behavior. Based on our numerical observations, noDQ POD-ROM errors have an optimal behavior, while DQ POD-ROM errors demonstrate an optimality/super-optimality behavior. It is conjectured that this possibly occurs because the DQ inner products allow the time dependency in the ROM spaces to take into account.

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