An adaptive model order reduction by proper snapshot selection for nonlinear dynamical problems

P. S. B. Nigro, M. Anndif, Y. Teixeira,P. M. Pimenta,P. Wriggers

Computational Mechanics(2016)

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摘要
Model Order Reduction (MOR) methods are employed in many fields of Engineering in order to reduce the processing time of complex computational simulations. A usual approach to achieve this is the application of Galerkin projection to generate representative subspaces (reduced spaces). However, when strong nonlinearities in a dynamical system are present and this technique is employed several times along the simulation, it can be very inefficient. This work proposes a new adaptive strategy, which ensures low computational cost and small error to deal with this problem. This work also presents a new method to select snapshots named Proper Snapshot Selection (PSS). The objective of the PSS is to obtain a good balance between accuracy and computational cost by improving the adaptive strategy through a better snapshot selection in real time (online analysis). With this method, it is possible a substantial reduction of the subspace, keeping the quality of the model without the use of the Proper Orthogonal Decomposition (POD).
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关键词
Model order reduction,PSS,Ritz vector,Nonlinear dynamic analysis,Galerkin projection,Adaptive strategy
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