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Combining integral transform and a generalized probabilistic approach of uncertainties to quantify model-parameter and model uncertainties in computational structural dynamics:The stochastic GITT method

机译:结合整体变换和不确定性的广义概率方法来量化模型参数和计算结构动态中的模型不确定性:随机GITT方法

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The current work combines the generalized probabilistic approach of uncertainties recently developed by Soize (2010)-with the generalized integral transform technique in order to take into account two types of uncertainties: (ⅰ) model-parameter uncertainties and (ⅱ) model uncertainties induced by modelling errors. The generalized integral transform technique (or GITT) is a powerful meshless hybrid analytical-numerical approach based on eigenfunction expansions to solve systems of partial differential equations and has been progressively advanced during the last three decades. The current work advances the state-of-the-art of the GITT approach by rigorously taking into account both model-parameter uncertainties and model uncertainties to improve the predictive accuracy of computational models developed in the context of computational structural dynamics. The developed stochastic CITT method is flexible enough to handle parametric and non-parametric probabilistic methods to quantify both types of uncertainties. It is applied to the governing equations derived with the extended Hamilton's variational principle for predicting the in-plane and out-of-plane bending vibrations of a slender flexible structure connected to a rotating rigid shaft, resembling many complex engineered structures. Stochastic dynamic analyses in both time- and frequency-domains under both types of uncertainties are firstly carried out. Finally, stochastic model updating is carried out with the maximum likelihood and Bayesian statistical methods in order to construct both the optimum prior stochastic models of uncertainties and the posterior stochastic model of model-parameter uncertainties, using the first natural frequencies as observed data.
机译:目前的工作结合了最近由SOIZE(2010)最近开发的不确定性的广义概率方法 - 以推广的积分变换技术,以考虑两种类型的不确定性:(Ⅰ)模型参数不确定性和(Ⅱ)模型不确定性建模错误。广义整体变换技术(或GITT)是一种基于特征函数扩展的强大的无网格混合分析 - 数值方法,以解决部分微分方程的系统,并且在过去三十年中已经逐步推进。目前的工作通过严格考虑到模型参数的不确定性和模型不确定性来提高在计算结构动态的背景下开发的计算模型的预测精度来实现GITT方法的最先进的方法。发达的随机CITT方法足够灵活,可以处理参数和非参数概率方法来量化两种类型的不确定性。它应用于延伸汉密尔顿的变分原理的控制方程,用于预测连接到旋转刚性轴的细长柔性结构的平面内和面外弯曲振动,类似于许多复杂的工程结构。首先进行两种类型的不确定性下的时间和频域的随机动态分析。最后,随机模型更新是以最大可能性和贝叶斯统计方法进行的,以便使用作为观察到的数据的第一天然频率来构造不确定因素和模型参数不确定性的后随机模型的最佳事先随机模型。

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