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Uncertainty quantification for unsteady fluid flow using adjoint-based approaches.

机译:使用基于伴随的方法对不稳定流体的不确定度进行量化。

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摘要

Uncertainty quantification of numerical simulations has raised significant interest in recent years. One of the main challenges remains the efficiency in propagating uncertainties from the sources to the quantities of interest, especially when there are many sources of uncertainties. The traditional Monte Carlo methods converge slowly and are undesirable when the required accuracy is high. Most modern uncertainty propagation methods such as polynomial chaos and collocation methods, although extremely efficient, suffer from the so called "curse of dimensionality". The computational resources required for these methods grow exponentially as the number of uncertainty sources increases.;The aim of this work is to address the challenge of efficiently propagating uncertainties in numerical simulations with many sources of uncertainties. Because of the large amount of information that can be obtained from adjoint solutions, we focus on using adjoint equations to propagate uncertainties more efficiently.;Unsteady fluid flow simulations are the main application of this work, although the uncertainty propagation methods we discuss are applicable to other numerical simulations. We first discuss how to solve the adjoint equations for time-dependent fluid flow equations. We specifically address the challenge associated with the backward time advance of the adjoint equation, requiring the solution of the primal equation in backward order. Two methods are proposed to address this challenge. The first method solves the adjoint equation forward in time, completely eliminating the need for storing the solution of the primal equation. The other method is a checkpointing algorithm specifically designed for dynamic time-stepping. The adjoint equation is still solved backward in time, but the present scheme retrieves the primal solution in reverse order. This checkpointing method is applied to an incompressible Navier-Stokes adjoint solver on unstructured mesh.;With the adjoint equation solved, we obtain a linear approximation of the quantities of interest as functions of the random variables describing the uncertainty sources in a probabilistic setting. We use this linear approximation to accelerate the convergence of the Monte Carlo method in calculating tail probabilities for estimating margins and risk. In addition, we developed a multivariate interpolation scheme that uses multiple adjoint solutions to construct an interpolant of the quantities of interest as functions of the uncertainty sources. This interpolation scheme converge exponentially to the true function, thus providing very accurate and efficient means of propagating of uncertainties and remains accurate independently of the locations of the available data.
机译:近年来,数值模拟的不确定性量化引起了人们的极大兴趣。主要挑战之一仍然是如何有效地将不确定性从来源传播到感兴趣的数量,尤其是在存在许多不确定性来源的情况下。传统的蒙特卡洛方法收敛缓慢,当所需的精度很高时是不希望的。大多数现代的不确定性传播方法(例如多项式混沌和并置方法)虽然非常有效,但它们遭受所谓的“维数诅咒”。这些方法所需的计算资源随着不确定性来源的数量呈指数增长。;这项工作的目的是解决在具有许多不确定性来源的数值模拟中有效传播不确定性的挑战。由于可以从伴随解中获取大量信息,因此,我们着重于使用伴随方程来更有效地传播不确定性。尽管本文讨论的不确定性传播方法适用于非稳态流体模拟,但非恒定流体模拟是这项工作的主要应用。其他数值模拟。我们首先讨论如何求解与时间有关的流体流动方程的伴随方程。我们专门解决与伴随方程的后退时间提前相关的挑战,要求按逆序求解原始方程。提出了两种方法来应对这一挑战。第一种方法可以及时解决伴随方程,从而完全消除了存储原始方程解的需要。另一种方法是专门为动态时间步设计的检查点算法。伴随方程仍然在时间上向后求解,但是本方案以相反的顺序检索原始解。这种检查点方法适用于非结构化网格上的不可压缩的Navier-Stokes伴随求解器。通过求解伴随方程,我们获得了感兴趣量的线性近似,该随机量是描述概率设置中不确定性源的随机变量的函数。在计算尾部概率以估计利润和风险时,我们使用此线性逼近来加速Monte Carlo方法的收敛。此外,我们开发了一种多元插值方案,该方案使用多个伴随解来构造作为不确定性源函数的目标量的插值。该插值方案以指数形式收敛到真实函数,从而提供了非常准确而有效的传播不确定性的方法,并且与可用数据的位置无关地保持准确。

著录项

  • 作者

    Wang, Qiqi.;

  • 作者单位

    Stanford University.;

  • 授予单位 Stanford University.;
  • 学科 Mathematics.;Physics Fluid and Plasma.;Computer Science.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 184 p.
  • 总页数 184
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 数学;等离子体物理学;自动化技术、计算机技术;
  • 关键词

  • 入库时间 2022-08-17 11:37:41

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