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Structural reliability assessment through surrogate based importance sampling with dimension reduction

机译:通过基于代理的重要性抽样,具有维度减少的结构可靠性评估

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摘要

We present a method for reliability assessment in extreme conditions from a numerical simulator through surrogate based importance sampling. As proposed in recent works in the literature, a Kriging surrogate is used to build an approximation of the limit state function and the optimal importance density. Our contribution is then the use of a sufficient dimension reduction method which enables the construction of the limit state function metamodel in lower dimension. The so called augmented failure probability and correction factor are recast in this dimension reduction framework. Simple strategies for metamodel refinement in the dimension reduction subspace are described and, in the case of Gaussian inputs, a computationally efficient MCMC scheme aimed at sampling the quasi-optimal importance density is presented. The case of non-Gaussian inputs is also laid out and it is argued and demonstrated through simulations that this approach can reduce the number of calls to the computer model, which is a crucial factor in reliability analysis. Advantages of this method are also supported by numerical simulations carried on an industrial case study concerned with the extreme response prediction of a wind turbine under wind loading.
机译:我们通过基于代理的重要性采样,从数值模拟器提供了一种可靠性评估的方法。如在文献中最近的作品所提出的那样,使用Kriging代理用于构建极限状态功能的近似值和最佳重要性密度。我们的贡献是使用足够的尺寸减少方法,该方法使得能够在较低尺寸下构造极限状态功能元模型。所谓的增强故障概率和校正因子在该维度减少框架中是重量的。描述了尺寸减少子空间中元模型改进的简单策略,并且在高斯输入的情况下,呈现了一种旨在取样准优点重要性密度的计算上有效的MCMC方案。还制定了非高斯输入的情况,并通过模拟争论并证明了这种方法可以减少对计算机模型的呼叫次数,这是可靠性分析中的关键因素。该方法的优点也得到了在有关风力涡轮机的极端响应预测的工业案例研究中进行的数值模拟的支持。

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