现代蒙特卡罗方法的有效不确定性量化和传播:综述

IF 4.4 2区 数学 Q1 STATISTICS & PROBABILITY
Jiaxin Zhang
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引用次数: 39

摘要

不确定性量化(UQ)包括自然世界中随机变化和缺乏知识或数据导致的不确定性的表征、整合和传播。蒙特卡罗(MC)方法是一种基于采样的方法,广泛用于不确定性的量化和传播。然而,如果基于模拟的模型计算密集,则标准MC方法通常是耗时的。本文概述了现代MC方法,以解决UQ背景下标准MC的现有挑战。具体而言,扩展了控制变量概念的多级蒙特卡罗(MLMC)通过以低精度和相应的低成本执行大多数评估,以及以高精度和相应高成本执行相对较少的评估,实现了计算成本的显著降低。高保真度蒙特卡罗(MFMC)通过将控制变量推广到具有不同保真度和不同计算成本的不同模型来加速标准蒙特卡罗的收敛。多模型蒙特卡罗方法(MMMC)具有不同的MLMC和MFMC设置,旨在解决用于表征概率分布的数据有限时的UQ和传播问题。为了量化和有效传播小数据集产生的不确定性,提出了将多模型推理与重要性抽样相结合的方法。所有这三种现代MC方法都显著提高了概率UQ的计算效率,特别是不确定性传播。为每种现代MC方法提供了算法摘要和相应的代码实现。详细讨论了这些方法的推广和应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modern Monte Carlo methods for efficient uncertainty quantification and propagation: A survey
Uncertainty quantification (UQ) includes the characterization, integration, and propagation of uncertainties that result from stochastic variations and a lack of knowledge or data in the natural world. Monte Carlo (MC) method is a sampling‐based approach that has widely used for quantification and propagation of uncertainties. However, the standard MC method is often time‐consuming if the simulation‐based model is computationally intensive. This article gives an overview of modern MC methods to address the existing challenges of the standard MC in the context of UQ. Specifically, multilevel Monte Carlo (MLMC) extending the concept of control variates achieves a significant reduction of the computational cost by performing most evaluations with low accuracy and corresponding low cost, and relatively few evaluations at high accuracy and corresponding high cost. Multifidelity Monte Carlo (MFMC) accelerates the convergence of standard Monte Carlo by generalizing the control variates with different models having varying fidelities and varying computational costs. Multimodel Monte Carlo method (MMMC), having a different setting of MLMC and MFMC, aims to address the issue of UQ and propagation when data for characterizing probability distributions are limited. Multimodel inference combined with importance sampling is proposed for quantifying and efficiently propagating the uncertainties resulting from small data sets. All of these three modern MC methods achieve a significant improvement of computational efficiency for probabilistic UQ, particularly uncertainty propagation. An algorithm summary and the corresponding code implementation are provided for each of the modern MC methods. The extension and application of these methods are discussed in detail.
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CiteScore
6.20
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