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Adaptive Gaussian process emulators for efficient reliability analysis

机译:适应性高斯工艺仿真器,用于高效可靠性分析

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This paper presents an approximation method for performing efficient reliability analysis with complex computer models. The computational cost of industrial-scale models can cause problems when performing sampling-based reliability analysis. This is due to the fact that the failure modes of the system typically occupy a small region of the performance space and thus require relatively large sample sizes to accurately estimate their characteristics. The sequential sampling method proposed in this article, combines Gaussian process-based optimisation and subset simulation. Gaussian process emulators construct a statistical approximation to the output of the original code, which is both affordable to use and has its own measure of predictive uncertainty. Subset simulation is used as an integral part of the algorithm to efficiently populate those regions of the surrogate which are likely to lead to the performance function exceeding a predefined critical threshold. The emulator itself is used to inform decisions about efficiently using the original code to augment its predictions. The iterative nature of the method ensures that an arbitrarily accurate approximation of the failure region is developed at a reasonable computational cost. The presented method is applied to an industrial model of a biodiesel filter. (C) 2019 Elsevier Inc. All rights reserved.
机译:本文介绍了具有复杂计算机模型进行高效可靠性分析的近似方法。工业规模模型的计算成本会在执行基于采样的可靠性分析时造成问题。这是由于系统的故障模式通常占据性能空间的小区域,因此需要相对大的样本尺寸来准确地估计它们的特性。本文提出的顺序采样方法结合了基于高斯进程的优化和子集仿真。高斯工艺仿真器构造了与原始代码的输出的统计近似,这两者都可以使用,并且具有自己的预测不确定性的衡量标准。子集模拟用作算法的积分部分,以有效地填充替代的那些可能导致性能函数超过预定义的临界阈值的那些区域。仿真器本身用于通过原始代码有效地通知决策以增加其预测。该方法的迭代性质确保以合理的计算成本开发故障区域的任意精确近似。所提出的方法应用于生物柴油过滤器的工业模型。 (c)2019 Elsevier Inc.保留所有权利。

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