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首页> 外文期刊>International Journal of Reliability, Quality and Safety Engineering >METAMODEL-BASED PROBABILISTIC DESIGN OPTIMIZATION OF STATIC SYSTEMS WITH AN EXTENSION TO DYNAMIC SYSTEMS
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METAMODEL-BASED PROBABILISTIC DESIGN OPTIMIZATION OF STATIC SYSTEMS WITH AN EXTENSION TO DYNAMIC SYSTEMS

机译:扩展到动态系统的静态模型的基于元模型的概率设计优化

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摘要

In design, much research deals with cases where design variables are deterministic thus ignoring possible uncertainties present in manufacturing or environmental conditions. When uncertainty is considered, the design variables follow a particular distribution whose parameters are defined. Probabilistic design aims to reduce the probability of failure of a system by moving the distribution parameters of the design variables. The most popular method to estimate the probability of failure is a Monte Carlo Simulation where, using the distribution parameters, many runs are generated and the number of times the system does not meet specifications is counted. This method, however, can become time-consuming as the mechanistic model developed to model a physical system becomes increasingly complex. From structural reliability theory, the First Order Reliability Method (FORM) is an efficient method to estimate probability and efficiently moves the parameters to reduce failure probability. However, if the mechanistic model is too complex FORM becomes difficult to use. This paper presents a methodology to use approximating functions, called 'metamodels', with FORM to search for a design that minimizes the probability of failure. The method will be applied to three examples and the accuracy and speed of this metamodel-based probabilistic design method will be discussed. The speed and accuracy of three popular metamodels, the response surface model, the Radial Basis Function and the Kriging model are compared. Later, some theory will be presented on how the method can be applied to systems with a dynamic performance measure where the response lifetime is required to computer another performance measure.
机译:在设计中,许多研究都处理设计变量具有确定性的情况,从而忽略了制造或环境条件中可能存在的不确定性。考虑不确定性时,设计变量遵循定义其参数的特定分布。概率设计旨在通过移动设计变量的分布参数来降低系统故障的可能性。估计故障概率的最流行方法是蒙特卡洛模拟,其中使用分布参数生成许多运行,并计算系统不符合规格的次数。但是,随着为物理系统建模的机械模型变得越来越复杂,此方法可能会变得很耗时。从结构可靠性理论来看,一阶可靠性方法(FORM)是一种估计概率并有效移动参数以减少失效概率的有效方法。但是,如果机械模型太复杂,则FORM变得难以使用。本文提出了一种使用近似函数(称为“元模型”)和FORM的方法,以寻找能够最大程度降低故障概率的设计。该方法将应用于三个示例,并将讨论这种基于元模型的概率设计方法的准确性和速度。比较了三种流行的元模型(响应面模型,径向基函数和克里格模型)的速度和准确性。稍后,将介绍一些有关该方法如何应用于具有动态性能指标的系统的理论,在该系统中,响应寿命是计算机另一性能指标所必需的。

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