Asymptotic estimates of hierarchical modeling

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Asymptotic estimates of hierarchical modeling

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2003-10

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In this paper we propose a way to analyze certain classes of dimension reduction models for elliptic problems in thin domains. We develop asymptotic expansions for the exact and model solutions, having the thickness as small parameter. The modeling error is then estimated by comparing the respective expansions, and the upper bounds obtained make clear the influence of the order of the model and the thickness on the convergence rates. The techniques developed here allows for estimates in several norms and semi-norms, and also interior estimates (which disregards boundary layers).

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Arnold, Douglas N.; Madureira, Alexandre L.. (2003). Asymptotic estimates of hierarchical modeling. Retrieved from the University Digital Conservancy, https://hdl.handle.net/11299/3952.

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