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Uncertainty quantification with experimental data and complex system models.

机译:利用实验数据和复杂的系统模型进行不确定性量化。

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摘要

This dissertation discusses uncertainty quantification as posed in the Data Collaboration framework. Data Collaboration is a methodology for combining experimental data and system models to induce constraints on a set of uncertain system parameters. The framework is summarized, including outlines of notation and techniques. The main techniques include polynomial optimization and surrogate modeling to ascertain the consistency of all data and models as well as propagate uncertainty in the form of a model prediction.;One of the main methods of Data Collaboration is using techniques of nonconvex quadratically constrained quadratic programming to provide both lower and upper bounds on the various objectives. The Lagrangian dual of the NQCQP provides both an outer bound to the optimal objective as well as Lagrange multipliers. These multipliers act as sensitivity measures relaying the effects of changes to the parameter constraint bounds on the optimal objective. These multipliers are rewritten to provide the sensitivity to uncertainty in the response prediction with respect to uncertainty in the parameters and experimental data.;It is often of interest to find a vector of parameters that is both feasible and representative of the current community work and knowledge. This is posed as the problem of finding the minimal number of parameters that must deviate from their literature value to achieve concurrence with all experimental data constraints. This problem is heuristically solved using the ℓ1 -norm in place of the cardinality function. A lower bound on the objective is provided through an NQCQP formulation.;In order to use the NQCQP techniques, the system models need to have quadratic forms. When they do not have quadratic forms, surrogate models are fitted. Surrogate modeling can be difficult for complex models with large numbers of parameters and long simulation times because of the amount of evaluation-time required to make a good fit. New techniques are developed for searching for an active subspace of the parameters, and subsequently creating an experiment design on the active subspace that adheres to the original parameter constraints. The active subspace can have a dimension significantly lower than the original parameter dimension thereby reducing the computational complexity of generating the surrogate model. The technique is demonstrated on several examples from combustion chemistry and biology.;Several other applications of the Data Collaboration framework are presented. They are used to demonstrate the complexity of describing a high dimensional feasible set of parameter values as constrained by experimental data. Approximating the feasible set can lead to a simple description, but the predictive capability of such a set is significantly reduced compared to the actual feasible set. This is demonstrated on an example from combustion chemistry.
机译:本文讨论了数据协作框架中提出的不确定性量化问题。数据协作是一种用于组合实验数据和系统模型以对一组不确定的系统参数产生约束的方法。对该框架进行了总结,包括符号和技术的概述。主要技术包括多项式优化和代理建模,以确保所有数据和模型的一致性,以及以模型预测的形式传播不确定性。数据协作的主要方法之一是使用非凸二次约束二次规划技术来进行预测。提供各种目标的上限和下限。 NQCQP的拉格朗日对偶提供了最佳目标的外部边界以及拉格朗日乘数。这些乘数充当敏感性度量,将更改的影响传递给最佳目标上的参数约束范围。重写这些乘数以提供对响应预测中参数和实验数据不确定性的不确定性的敏感性;通常有兴趣找到既可行又可以代表当前社区工作和知识的参数向量。这就构成了一个问题,即要找到最小数量的参数,这些参数必须偏离其文献价值才能实现与所有实验数据约束条件的一致。使用ℓ 1-范数代替基数函数来启发式地解决此问题。通过NQCQP公式提供了目标的下限。为了使用NQCQP技术,系统模型必须具有二次形式。当它们没有二次形式时,将安装代理模型。对于具有大量参数和较长仿真时间的复杂模型,由于要进行良好的拟合需要大量的评估时间,因此代理建模可能很困难。开发了新技术来搜索参数的活动子空间,然后在遵守原始参数约束的活动子空间上创建实验设计。活动子空间的维数可以明显低于原始参数维,从而降低生成替代模型的计算复杂度。在燃烧化学和生物学的几个例子中证明了该技术。提出了数据协作框架的其他几个应用。它们用于演示描述受实验数据约束的高维可行参数值集的复杂性。逼近可行集可以导致简单的描述,但是与实际可行集相比,此类集的预测能力会大大降低。燃烧化学的一个例子证明了这一点。

著录项

  • 作者

    Russi, Trent Michael.;

  • 作者单位

    University of California, Berkeley.;

  • 授予单位 University of California, Berkeley.;
  • 学科 Applied Mathematics.;Engineering Mechanical.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 176 p.
  • 总页数 176
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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