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AK-MCS: An active learning reliability method combining Kriging and Monte Carlo Simulation

机译:AK-MCS:一种结合了Kriging和Monte Carlo模拟的主动学习可靠性方法

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摘要

An important challenge in structural reliability is to keep to a minimum the number of calls to the numerical models. Engineering problems involve more and more complex computer codes and the evaluation of the probability of failure may require very time-consuming computations. Metamodels are used to reduce these computation times. To assess reliability, the most popular approach remains the numerous variants of response surfaces. Polynomial Chaos [1 ] and Support Vector Machine [2] are also possibilities and have gained considerations among researchers in the last decades. However, recently, Kriging, originated from geostatistics, have emerged in reliability analysis. Widespread in optimisation, Kriging has just started to appear in uncertainty propagation [3] and reliability [4,5] studies. It presents interesting characteristics such as exact interpolation and a local index of uncertainty on the prediction which can be used in active learning methods. The aim of this paper is to propose an iterative approach based on Monte Carlo Simulation and Kriging metamodel to assess the reliability of structures in a more efficient way. The method is called AK-MCS for Active learning reliability method combining Kriging and Monte Carlo Simulation. It is shown to be very efficient as the probability of failure obtained with AK-MCS is very accurate and this, for only a small number of calls to the performance function. Several examples from literature are performed to illustrate the methodology and to prove its efficiency particularly for problems dealing with high non-linearity, non-differentiability, non-convex and non-connex domains of failure and high dimensionality.
机译:结构可靠性方面的一个重要挑战是将对数值模型的调用次数保持在最少。工程问题涉及越来越复杂的计算机代码,并且评估故障概率可能需要非常耗时的计算。元模型用于减少这些计算时间。为了评估可靠性,最流行的方法仍然是响应面的众多变体。多项式混沌[1]和支持向量机[2]也是可能的,并且在最近几十年中已引起研究人员的重视。但是,最近,起源于地统计学的克里格(Kriging)出现在可靠性分析中。在最佳化方面,Kriging刚开始出现在不确定性传播[3]和可靠性[4,5]研究中。它呈现出有趣的特征,例如精确插值和预测中的局部不确定性指数,可用于主动学习方法。本文的目的是提出一种基于蒙特卡洛模拟和Kriging元模型的迭代方法,以更有效的方式评估结构的可靠性。该方法称为AK-MCS,是结合了Kriging和Monte Carlo模拟的主动学习可靠性方法。由于使用AK-MCS获得的故障概率非常准确,因此这被证明是非常有效的,并且这仅针对性能函数的少量调用。文献中的几个例子被用来说明该方法并证明其效率,特别是对于处理高非线性,非可微性,非凸和非凸的失效域和高维问题。

著录项

  • 来源
    《Structural Safety》 |2011年第2期|p.145-154|共10页
  • 作者

    B. Echard; N. Gayton; M. Lemaire;

  • 作者单位

    Clermont University Institut Francois de Micanique Avancee, EA 3867 Laboratoire de Micanique et Inginieries, BP 10448, 63000 Clermont-Ferrand. France;

    Clermont University Institut Francois de Micanique Avancee, EA 3867 Laboratoire de Micanique et Inginieries, BP 10448, 63000 Clermont-Ferrand. France;

    Clermont University Institut Francois de Micanique Avancee, EA 3867 Laboratoire de Micanique et Inginieries, BP 10448, 63000 Clermont-Ferrand. France;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    reliability; metamodel; kriging; active learning; monte carlo; failure probability;

    机译:可靠性;元模型;克里金法;主动学习;蒙特卡洛;失效概率;
  • 入库时间 2022-08-18 00:19:11

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