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Time response of structure with interval and random parameters using a new hybrid uncertain analysis method

机译:区间和随机参数的结构的时间响应新的混合不确定性分析方法

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Practical structures often operate with some degree of uncertainties, and the uncertainties are often modelled as random parameters or interval parameters. For realistic predictions of the structures behaviour and performance, structure models should account for these uncertainties. This paper deals with time responses of engineering structures in the presence of random and/or interval uncertainties. Three uncertain structure models are introduced. The first one is random uncertain structure model with only random variables. The generalized polynomial chaos (PC) theory is applied to solve the random uncertain structure model. The second one is interval uncertain structure model with only interval variables. The Legendre metamodel (LM) method is presented to solve the interval uncertain structure model. The LM is based on Legendre polynomial expansion. The third one is hybrid uncertain structure model with both random and interval variables. The polynomial-chaos-Legendre-metamodel (PCLM) method is presented to solve the hybrid uncertain structure model. The PCLM is a combination of PC and LM. Three engineering examples are employed to demonstrate the effectiveness of the proposed methods. The uncertainties resulting from geometrical size, material properties or external loads are studied. (C) 2018 Elsevier Inc. All rights reserved.
机译:实际结构通常在一定程度上具有不确定性,并且不确定性通常被建模为随机参数或区间参数。对于结构行为和性能的真实预测,结构模型应考虑这些不确定性。本文研究了存在随机和/或区间不确定性的工程结构的时间响应。介绍了三种不确定的结构模型。第一个是只有随机变量的随机不确定结构模型。应用广义多项式混沌(PC)理论求解随机不确定结构模型。第二个是只有区间变量的区间不确定结构模型。提出了Legendre元模型(LM)方法来求解区间不确定结构模型。 LM基于Legendre多项式展开。第三个是具有随机变量和区间变量的混合不确定结构模型。为了解决混合不确定结构模型,提出了多项式混沌Legendre元模型(PCLM)方法。 PCLM是PC和LM的组合。三个工程实例被用来证明所提出的方法的有效性。研究了由几何尺寸,材料特性或外部载荷引起的不确定性。 (C)2018 Elsevier Inc.保留所有权利。

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