Accelerating structural dynamics simulations with localised phenomena through matrix compression and projection‐based model order reduction

Author:

Agathos Konstantinos1,Vlachas Konstantinos2,Garland Anthony3,Chatzi Eleni2

Affiliation:

1. Department of Engineering University of Exeter Exeter UK

2. Department of Civil, Environmental, and Geomatic Engineering ETH Zurich Zurich Switzerland

3. Applied Machine Intelligence Sandia National Laboratories Albuquerque New Mexico USA

Abstract

AbstractIn this work, a novel approach is introduced for accelerating the solution of structural dynamics problems in the presence of localised phenomena, such as cracks. For this category of problems, conventional projection‐based Model Order Reduction (MOR) methods are either limited with respect to the range of system configurations that can be represented or require frequent solutions of the Full Order Model (FOM) to update the low‐dimensional spaces, in which solutions are represented. In the proposed approach, low‐dimensional spaces, constructed for the healthy structure, are enriched with appropriately selected columns of the flexibility matrix of the system. It can be shown that these spaces contain the solution to the original problem for the static case, while their dimension is much smaller. In order to allow their online construction for arbitrary localised features, the full flexibility matrix of the system should be available. To this end, a hierarchical representation is used for the matrices involved, allowing to compute the flexibility matrix efficiently and with reduced memory requirements. The resulting method offers significant speedups, without sacrificing the flexibility and accuracy of the full order model. The performance and limitations of the approach are studied through a series of examples in structural dynamics.

Funder

Sandia National Laboratories

Publisher

Wiley

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