2009
DOI: 10.1007/s00158-008-0350-4
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Structural analysis and optimization in the framework of reduced-basis method

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Cited by 10 publications
(16 citation statements)
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“…The reduced order method attempt to approximate high dimension system in a low dimension space. Most of ROMs project the high dimension system into a lower dimension space [11]. A simple example is the discrete system equation:…”
Section: Reduced Order Methodsmentioning
confidence: 99%
“…The reduced order method attempt to approximate high dimension system in a low dimension space. Most of ROMs project the high dimension system into a lower dimension space [11]. A simple example is the discrete system equation:…”
Section: Reduced Order Methodsmentioning
confidence: 99%
“…The performance of the modified methods proposed here is also presented. Additionally to the examples presented here, an application on structural MOP with three objective functions, was successfully solved in Motta (2009) using the proposed modification combined with a reduced order modeling approach called Reduced Basis Method (Afonso et al 2009). In the results of the present paper, the parameter n FC is the total number of function evaluations necessary for the Pareto solutions and n E Pp is the number of effective Pareto points (described previously).…”
Section: Numerical Examplesmentioning
confidence: 99%
“…The use of an affine decomposition and the separability concept to the stiffness matrix and load terms is the requirement to perform inexpensive calculations. Details of the methodology and how the RB governing equations is obtained for a class of 2D problems can be found elsewhere [13,17].…”
Section: Surrogate Model-rbmmentioning
confidence: 99%
“…Tables (1) and (2) summarizes the RBM algorithm for elasticity applications. As can been seen in [13,17], the final RB equations are written in terms of dependent/non dependent parameter (µ µ µ µ − − − − design variables), such that stiffness and load terms that do not depend on µ µ µ µ are computed only once. As a consequence of such subdivision, the computational implementation for reduced-basis output calculations is conducted following an off-line (µ µ µ µ-independent) / on-line (µ µ µ µ-dependent) algorithm as described respectively on Tables (1) and (2).…”
Section: Surrogate Model-rbmmentioning
confidence: 99%