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A system reliability analysis method combining active learning Kriging model with adaptive size of candidate points

机译:一种系统可靠性分析方法,与候选点自适应大小相结合的主动学习kriging模型

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摘要

This paper investigates the improvement of system reliability analysis (SRA) methods which combine active learning Kriging (ALK) model with Monte Carlo simulation. In this kind of methods, a number of Monte Carlo samples are treated as the candidate points of the ALK models, and the size (or the number) of candidate points vitally affects the efficiency. However, the existing strategies fail to build the Kriging model with the optimal size of candidate points. Therefore, a certain quantity of training points was wasted. To circumvent this drawback, a strategy with an adaptive size of candidate points (ASCP) is exploited and seamlessly integrated into one of the recently proposed ALK model-based SRA method. In this strategy, the optimal size is iteratively predicted and updated according to the predicted information of component Kriging models. After several iterations, the optimal size can be approximately obtained, and the learning process can be executed with an optimal size of candidate points hereafter. Three numerical examples are investigated to demonstrate the efficiency and accuracy of the proposed method.
机译:本文调查了与蒙特卡罗模拟相结合的系统可靠性分析(SRA)方法的改进。在这种方法中,许多蒙特卡罗样品被视为ALK模型的候选点,候选点的尺寸(或数量)对效率影响效率。但是,现有的策略未能以候选点的最佳规模构建Kriging模型。因此,浪费了一定量的培训点。为了避免这种缺点,利用具有自适应候选点(ASCP)的策略并无缝地集成到最近提出的基于ALK模型的SRA方法之一中。在该策略中,根据组件Kriging模型的预测信息来迭代地预测和更新最佳大小。在几次迭代之后,可以大致获得最佳大小,并且可以以下文的最佳候选点的最佳大小执行学习过程。研究了三个数值例证以证明所提出的方法的效率和准确性。

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