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Expected Uncertainty Reduction for Sequential Kriging-Based Reliability Analysis

机译:顺序Kriging的可靠性分析预期降低了不确定性

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Several acquisition functions have been proposed to identify an optimal sequence of samples in sequential kriging-based reliability analysis. However, no single acquisition function provides better performance over the others in all cases. To address this problem, this paper proposes a new acquisition function, namely expected uncertainty reduction (EUR), that serves as a meta-criterion to select the best sample from a set of optimal samples, each identified from a large number of candidate samples according to the criterion of an acquisition function. EUR directly quantifies the expected reduction of the uncertainty in the prediction of limit-state function by adding an optimal sample. The uncertainty reduction is quantified by sampling over the kriging posterior. In the proposed EUR-based sequential sampling framework, a portfolio that consists of four acquisition functions is first employed to suggest four optimal samples at each iteration of sequential sampling. Then, EUR is employed as the meta-criterion to identify the best sample among those optimal samples. The results from two mathematical case studies show that (1) EUR-based sequential sampling can perform as well as or outperform the single use of any acquisition function in the portfolio, and (2) the best-performing acquisition function may change from one problem to another or even from one iteration to the next within a problem.
机译:已经提出了几种采集功能,以确定顺序Kriging的可靠性分析中的最佳样本序列。但是,在所有情况下,单个采集功能都没有为其他功能提供更好的性能。为了解决这个问题,本文提出了一种新的采集功能,即预期的不确定性减少(EUR),其用作从一组最佳样品中选择最佳样本的元标准,每个候选样本识别到采集功能的标准。 EUR通过添加最佳样品,直接量化预期限制状态功能的不确定性。通过在Kriging后部取样来量化不确定度。在拟议的欧元的顺序采样框架中,首先使用由四个采集功能组成的投资组合,以在顺序采样的每次迭代时提出四个最佳样本。然后,欧元受雇为元标准,以识别这些最佳样本中的最佳样本。两个数学案例研究的结果表明,(1)基于欧元的顺序采样可以执行或优于投资组合中的任何采集函数的单一使用,而(2)最佳的采集功能可能会从一个问题发生变化到另一个甚至从一个问题内到下一个迭代。

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