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Multidimensional parallelepiped model-a new type of non-probabilistic convex model for structural uncertainty analysis

机译:多维平行六面体模型-一种用于结构不确定性分析的新型非概率凸模型

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摘要

Non-probabilistic convex models need to be provided only the changing boundary of parameters rather than their exact probability distributions; thus, such models can be applied to uncertainty analysis of complex structures when experimental information is lacking. The interval and the ellipsoidal models are the two most commonly used modeling methods in the field of non-probabilistic convex modeling. However, the former can only deal with independent variables, while the latter can only deal with dependent variables. This paper presents a more general non-probabilistic convex model, the multidimensional parallelepiped model. This model can include the independent and dependent uncertain variables in a unified framework and can effectively deal with complex multi-source uncertainty' problems in which dependent variables and independent variables coexist. For any two parameters, the concepts of the correlation angle and the correlation coefficient are defined. Through the marginal intervals of all the parameters and also their correlation coefficients, a multidimensional parallelepiped can easily be built as the uncertainty domain for parameters. Through the introduction of affine coordinates, the parallelepiped model in the original parameter space is converted to an interval model in the affine space, thus greatly facilitating subsequent structural uncertainty analysis. The parallelepiped model is applied to structural uncertainty propagation analysis, and the response interval of the structure is obtained in the case of uncertain initial parameters. Finally, the method described in this paper was applied to several numerical examples. Copyright (c) 2015 John Wiley & Sons, Ltd.
机译:非概率凸模型仅需要提供变化的参数边界,而不必提供其精确的概率分布。因此,当缺乏实验信息时,这种模型可以用于复杂结构的不确定性分析。区间模型和椭圆模型是非概率凸建模领域中最常用的两种建模方法。但是,前者只能处理自变量,而后者只能处理因变量。本文提出了一个更通用的非概率凸模型,即多维平行六面体模型。该模型可以在一个统一的框架中包含自变量和因变量,并可以有效地解决因变量和自变量共存的复杂多源不确定性问题。对于任何两个参数,定义了相关角和相关系数的概念。通过所有参数的边际间隔及其相关系数,可以轻松地构建多维平行六面体作为参数的不确定性域。通过引入仿射坐标,将原始参数空间中的平行六面体模型转换为仿射空间中的区间模型,从而极大地方便了后续的结构不确定性分析。将平行六面体模型应用于结构不确定性传播分析,并在初始参数不确定的情况下获得结构的响应区间。最后,将本文描述的方法应用于几个数值示例。版权所有(c)2015 John Wiley&Sons,Ltd.

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