Efficient stochastic modal decomposition methods for structural stochastic static and dynamic analyses

Author:

Zheng Zhibao1ORCID,Beer Michael234,Nackenhorst Udo1

Affiliation:

1. Institute of Mechanics and Computational Mechanics & International Research Training Group 2657 Leibniz Universität Hannover Hannover Germany

2. Institute for Risk and Reliability Leibniz Universität Hannover Hannover Germany

3. Institute for Risk and Uncertainty and School of Engineering University of Liverpool Liverpool UK

4. International Joint Research Center for Resilient Infrastructure & International Joint Research Center for Engineering Reliability and Stochastic Mechanics Tongji University Shanghai China

Abstract

AbstractThis article presents unified and efficient stochastic modal decomposition methods to solve stochastic structural static and dynamic problems. We extend the idea of deterministic modal decomposition method for structural dynamic analysis to stochastic cases. Standard/generalized stochastic eigenvalue equations are adopted to calculate the stochastic subspaces for stochastic static/dynamic problems and they are solved by an efficient reduced‐order method. The stochastic solutions of both static and dynamic equations are approximated by stochastic bases of the stochastic subspaces. Original stochastic static/dynamic equations are then transformed into a set of single‐degree‐of‐freedom (SDoF) stochastic static/dynamic equations, which are efficiently solved by the proposed non‐intrusive methods. Specifically, a non‐intrusive stochastic Newmark method is developed for the solution of SDoF stochastic dynamic equations, and the element‐wise division of sample vectors is used to solve the SDoF stochastic static equations. All of these methods have low computational effort and are weakly sensitive to the stochastic dimension, thus the proposed methods avoid the curse of dimensionality successfully. Two numerical examples, including two‐ and three‐dimensional spatial problems with low and high stochastic dimensions, are given to show the efficiency and accuracy of the proposed methods.

Funder

Deutsche Forschungsgemeinschaft

Alexander von Humboldt Foundation

Publisher

Wiley

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