具有选择性细化功能的自适应多级子集模拟

IF 2.1 3区 工程技术 Q2 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Siam-Asa Journal on Uncertainty Quantification Pub Date : 2024-08-23 DOI:10.1137/22m1515240
D. Elfverson, R. Scheichl, S. Weissmann, F. A. Diaz De La O
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引用次数: 0

摘要

SIAM/ASA 不确定性量化期刊》第 12 卷第 3 期第 932-963 页,2024 年 9 月。 摘要在这项工作中,我们提出了一种子集模拟的自适应多级版本,用于估计复杂物理系统的罕见事件概率。给定一连串嵌套的故障域,故障域的大小依次增大,罕见事件概率表示为条件概率的乘积。拟议的新估算器在嵌套故障集的层次结构中使用不同的模型分辨率和不同数量的样本。为了大幅降低计算成本,我们构建的中间故障集只需要少量昂贵的高分辨率模型评估,而大部分样本可以从廉价的低分辨率模拟中获取。我们的新估计器的一个关键想法是使用后验误差估计器与选择性网格细化策略相结合,以保证临界子集特性,当从一个故障集到下一个故障集改变模型分辨率时,可能会违反临界子集特性。通过震动变换和数值计算,从理论上研究了估计器的增效和统计特性。在一个地下流动的模型问题上,新的多级估计器比标准子集模拟提高了 60 多倍,实际相对误差为 25%。
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Adaptive Multilevel Subset Simulation with Selective Refinement
SIAM/ASA Journal on Uncertainty Quantification, Volume 12, Issue 3, Page 932-963, September 2024.
Abstract. In this work we propose an adaptive multilevel version of subset simulation to estimate the probability of rare events for complex physical systems. Given a sequence of nested failure domains of increasing size, the rare event probability is expressed as a product of conditional probabilities. The proposed new estimator uses different model resolutions and varying numbers of samples across the hierarchy of nested failure sets. In order to dramatically reduce the computational cost, we construct the intermediate failure sets such that only a small number of expensive high-resolution model evaluations are needed, whilst the majority of samples can be taken from inexpensive low-resolution simulations. A key idea in our new estimator is the use of a posteriori error estimators combined with a selective mesh refinement strategy to guarantee the critical subset property that may be violated when changing model resolution from one failure set to the next. The efficiency gains and the statistical properties of the estimator are investigated both theoretically via shaking transformations, as well as numerically. On a model problem from subsurface flow, the new multilevel estimator achieves gains of more than a factor 60 over standard subset simulation for a practically relevant relative error of 25%.
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来源期刊
Siam-Asa Journal on Uncertainty Quantification
Siam-Asa Journal on Uncertainty Quantification Mathematics-Statistics and Probability
CiteScore
3.70
自引率
0.00%
发文量
51
期刊介绍: SIAM/ASA Journal on Uncertainty Quantification (JUQ) publishes research articles presenting significant mathematical, statistical, algorithmic, and application advances in uncertainty quantification, defined as the interface of complex modeling of processes and data, especially characterizations of the uncertainties inherent in the use of such models. The journal also focuses on related fields such as sensitivity analysis, model validation, model calibration, data assimilation, and code verification. The journal also solicits papers describing new ideas that could lead to significant progress in methodology for uncertainty quantification as well as review articles on particular aspects. The journal is dedicated to nurturing synergistic interactions between the mathematical, statistical, computational, and applications communities involved in uncertainty quantification and related areas. JUQ is jointly offered by SIAM and the American Statistical Association.
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