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Efficient methods by active learning Kriging coupled with variance reduction based sampling methods for time-dependent failure probability

机译:有效的方法通过主动学习克里格与基于方差减少的采样方法耦合,采样方法进行时间依赖性故障概率

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摘要

For efficiently estimating the time-dependent failure probability, two new methods named as the active learning Kriging (AK) coupled with importance sampling (AK-co-IS) and AK coupled with subset simulation (AK-co-SS) are proposed. The proposed methods are based on the fact that the AK coupled with Monte Carlo simulation (AKMCS) method has been proved to be a very efficient method. However, for problem with small time-dependent failure probability or long service time, the size of candidate sample pool generated by MCS would be so large that the efficiency of AK-MCS is reduced. Therefore, the AK-co-IS and AK-co-SS are proposed to highly enhance the computational efficiency by greatly reducing the candidate sample pool size. And these two methods reduce the candidate sample pool size respectively by searching the optimal time-dependent design point to increase the ratio of failure samples and converting a rare event simulation problem into sequence of more frequent event ones. Through iteratively constructing the AK model to be convergent by the U-learning function in the IS and SS sample pools, respectively, the computational cost of estimating the time-dependent failure probability would reduce drastically compared with AK-MCS. Several examples are used to illustrate the efficiency and accuracy of the proposed methods.
机译:为了有效地估计时间依赖的故障概率,提出了两个名称为与重要性采样(AK-Co-IS)和AK耦合的Active Learning Kriging(AK)的新方法,并与子集模拟(AK-CO-SS)耦合。所提出的方法基于使得与蒙特卡罗模拟(AKMC)方法耦合的AK是一种非常有效的方法。然而,对于具有较小的时间依赖性故障概率或长期服务时间的问题,MCS产生的候选样本池的大小将如此之大,使得AK-MCS的效率降低。因此,提出了AK-Co-IS和AK-Co-SS以通过大大减少候选样本池大小来高度提高计算效率。这两种方法通过搜索最佳时间依赖的设计点来分别减少候选样本池大小,以增加故障样本的比率并将罕见的事件模拟问题转换为更频繁的事件序列。通过迭代地构造AS和SS样本池中的U-Learnal函数来融合AK模型,分别估计时间依赖性失效概率的计算成本将与AK-MCS相比大幅减少。几个例子用于说明所提出的方法的效率和准确性。

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