Scaglioni, A., An, X., Dick, J., Feischl, M., & Tran, T. (2024, March 21). Sparse grid approximation of nonlinear SPDEs: The Landau–Lifshitz–Gilbert problem [Presentation]. Annaul retreat CRC Wave phenomena, Bad Herrenalb, Germany. http://hdl.handle.net/20.500.12708/196648
Stochastic and parametric PDEs; stochastic Landau-Lifshitz-Gilbert problem; Doss-Sussmann transform; Lévy-Ciesielski expansion; regularity of sample paths solution; curse of dimensionality; implicit function theorem; holomorphy and sparsity of parameter-to-solution map; piecewise polynomials; sparse high-dimensional approximation; sparse grid; stochastic collocation; dimension independent convergence; multilevel sparse grid
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Abstract:
We show convergence rates for a sparse grid approximation of the distribution of solutions of the stochastic Landau-Lifshitz-Gilbert equation. Beyond being a frequently studied equation in engineering and physics, the stochastic Landau-Lifshitz-Gilbert equation poses many interesting challenges that do not appear simultaneously in previous works on uncertainty quantification: The equation is strongly non-linear, time-dependent, and has a non-convex side constraint. Moreover, the parametrization of the stochastic noise features countably many unbounded parameters and low regularity compared to other elliptic and parabolic problems studied in uncertainty quantification. We use a novel technique to establish uniform holomorphic regularity of the parameter-to-solution map based on a Gronwall-type estimate and the implicit function theorem. This method is very general and based on a set of abstract assumptions. Thus, it can be applied beyond the Landau-Lifshitz-Gilbert equation as well. We demonstrate numerically the feasibility of approximating with sparse grid and show a clear advantage of a multi-level sparse grid scheme.
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Additional information:
Presentation of results obtained in the last year in the context of the CRC wave phenomena
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Research Areas:
Mathematical and Algorithmic Foundations: 40% Modeling and Simulation: 40% Computational Materials Science: 20%