结合Kriging和重要抽样的改进可靠性近似方法

Zhan Liu, Jianguo Zhan, Chunlin Tan
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引用次数: 4

摘要

为了减轻结构可靠度分析的计算负担,近似方法被广泛应用。工程问题涉及越来越复杂的计算机代码,对故障概率的评估可能需要非常耗时的计算。为了评估可靠性,最流行的方法仍然是响应面的众多变体。Kriging算法广泛应用于优化领域,但在不确定性传播和可靠性研究中才刚刚出现。本文研究了一种基于人工蜂群算法和重要抽样相结合的结构可靠性优化Kriging方法。通过实例说明了该方法的准确性和高效性,特别适用于高非线性、高维数和隐式性能函数的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved reliability approximate method combining Kriging and importance sampling
Approximation methods are widely used to alleviate the computational burden of structural reliability analyses. Engineering problems involve more and more complex computer codes and the evaluation of the probability of failure may require very time-consuming computations. To assess reliability, the most popular approach remains the numerous variants of response surfaces. Widespread in optimization, Kriging has just started to appear in uncertainty propagation and reliability studies. This paper investigates an Optimized Kriging method by using the artificial bee colony algorithm combining importance sampling for structural reliability problems. An example is performed to illustrate the methodology to prove its high accuracy and efficiency, particularly for problems of high non-linearity, high dimensionality and implicit performance functions.
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