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Sample-based and sample-aggregated based Galerkin projection schemes for structural dynamics

机译:基于样本和基于样本聚合的Galerkin投影方案用于结构动力学

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A comparative study of two new Galerkin projection schemes to compute the response of discretised stochastic partial differential equations is presented for discretised structures subjected to static and dynamic loads. By applying an eigen-decomposition of a discretised system, the response of a discretised system can be expressed with a reduced basis of eigen-components. Computational reduction is subsequently achieved by approximating the random eigensolutions, and by only including dominant terms. Two novel error minimisation techniques have been proposed in order to lower the error introduced by the approximations and the truncations: (a) Sample-based Galerkin projection scheme, (b) Sample-aggregated based Galerkin projection scheme. These have been applied through introducing unknown multiplicative scalars into the expressions of the response. The proposed methods are applied to analyse the bending of a cantilever beam with stochastic parameters undergoing both a static and a dynamic load. For the static case the response is real, however the response for the case of a dynamic loading is complex and frequency-dependent. The results obtained through the proposed approaches are compared with those obtained by utilising a direct Monte Carlo approach. Crown Copyright (C) 2017 Published by Elsevier Ltd. All rights reserved.
机译:提出了两种新的Galerkin投影方案的比较研究,用于计算离散结构在静态和动态载荷下的响应。通过应用离散系统的特征分解,离散系统的响应可以减少特征分量的基础来表达。随后,通过近似随机特征解并仅包括主导项来实现计算简化。为了降低近似和截断引入的误差,已经提出了两种新颖的误差最小化技术:(a)基于样本的Galerkin投影方案,(b)基于样本聚集的Galerkin投影方案。通过将未知的乘法标量引入响应的表达式中来应用这些方法。所提出的方法被应用于分析具有随机参数的悬臂梁的弯曲,所述随机参数同时受到静态和动态载荷。对于静态情况,响应是真实的,但是对于动态负载情况,响应是复杂的并且与频率有关。通过提议的方法获得的结果与通过直接蒙特卡洛方法获得的结果进行比较。 Crown版权所有(C)2017,由Elsevier Ltd.出版。保留所有权利。

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