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Uncertainty propagation in dynamic sub-structuring by model reduction integrated domain decomposition

机译:通过模型减少集成域分解动态子结构中的不确定性传播

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摘要

This paper addresses computational aspects in dynamic sub-structuring of built-up structures with uncertainty. Component mode synthesis (CMS), which is a model reduction technique, has been integrated within the framework of domain decomposition (DD), so that reduced models of individual sub-systems can be solved with smaller computational cost compared to solving the full (unreduced) system by DD. This is particularly relevant for structural dynamics applications where the overall system physics can be captured by a relatively low number of modes. The theoretical framework of the proposed methodology has been extended for application in stochastic dynamic systems. To limit the number of eigen-value analyses to be performed corresponding to the random realizations of input parameters, a locally refined high dimensional model representation model with stepwise least squares regression is presented. Effectively, a bi-level decomposition is proposed, one in the physical space and the other in the stochastic space. The geometric decomposition in the physical space by the proposed model reduction-based DD reduces the computational cost of a single analysis of the system and the functional decomposition in the stochastic space by the proposed meta-model lowers the number of simulations to be performed on the actual system. The results achieved by solving a finite-element model of an assembled beam structure and a 3D space frame illustrate good performance of the proposed methodology, highlighting its potential for complex problems. (C) 2020 Elsevier B.V. All rights reserved.
机译:本文涉及具有不确定性的内置结构的动态子结构中的计算方面。组件模式合成(CMS)是模型还原技术,已经集成在域分解(DD)的框架内,从而与解决完整(未收录)相比,可以以较小的计算成本求解各个子系统的减少模型)通过DD系统。这对于结构动态应用特别重要,其中可以通过相对较低的模式捕获整个系统物理。该方法的理论框架已经延长了随机动态系统的应用。为了限制对应于输入参数的随机实现对应的特征值分析的数量,呈现了具有逐步最小二乘回归的本地精制的高维模型表示模型。有效地,提出了双级分解,在物理空间中,在随机空间中的另一个。通过所提出的基于模型的模型的DD在物理空间中的几何分解降低了系统的单个分析的计算成本,并且通过所提出的元模型在随机空间中的功能分解降低了要对的模拟数量实际系统。通过求解组装光束结构和3D空间框架的有限元模型实现的结果,说明了所提出的方法的良好性能,突出了其对复杂问题的潜力。 (c)2020 Elsevier B.v.保留所有权利。

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