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Generalized probabilistic approach of uncertainties in computational dynamics using random matrices and polynomial chaos decompositions

机译:使用随机矩阵和多项式混沌分解的计算动力学不确定性的广义概率方法

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摘要

A new generalized probabilistic approach of uncertainties is proposed for computational model in structural linear dynamics and can be extended without difficulty to computational linear vibroacoustics and Computational non-linear structural dynamics. This method allows the prior probability model of each type of uncertainties (model-parameter uncertainties and modeling errors) to be separately constructed and identified. The modeling errors are not taken into account with the usual output-prediction-error method but with the nonparametric probabilistic approach of modeling errors recently introduced and based on the use of the random matrix theory. The theory an identification procedure and a numerical validation are presented. Then a chaos decomposition with random coefficients is proposed to represent the prior probabilistic model of, random responses. The random germ is related to the prior probability model of model-parameter uncertainties. The random coefficients arc related to the prior probability model of modeling errors and then depends on the random matrices introduced by the nonparametric probabilistic approach of modeling errors. A validation is presented. Finally. a future perspective is introduced when experimental data are available. The prior probability model of the random coefficients can be improved in constructing a posterior probability model Using the Bayesian approach. Copyright (C) 2009 John Wiley & Sons. Ltd.
机译:针对结构线性动力学中的计算模型,提出了一种新的广义不确定性概率方法,该方法可以毫无困难地扩展到计算线性振动声学和计算非线性结构动力学中。这种方法允许分别构造和识别每种不确定性(模型参数不确定性和建模误差)的先验概率模型。通常的输出预测误差方法没有考虑建模误差,而是最近引入并基于随机矩阵理论的建模误差的非参数概率方法。提出了理论上的识别程序和数值验证。然后提出了具有随机系数的混沌分解方法,以表示随机响应的先验概率模型。随机细菌与模型参数不确定性的先验概率模型有关。随机系数与建模误差的先验概率模型有关,然后取决于由建模误差的非参数概率方法引入的随机矩阵。进行验证。最后。当可获得实验数据时,将介绍未来的观点。在使用贝叶斯方法构造后验概率模型时,可以改进随机系数的先验概率模型。版权所有(C)2009 John Wiley&Sons。有限公司

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