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Stochastic system design and applications to stochastically robust structural control.

机译:随机系统设计及其在随机鲁棒结构控制中的应用。

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摘要

The knowledge about a planned system in engineering design applications is never complete. Often, a probabilistic quantification of the uncertainty arising from this missing information is warranted in order to efficiently incorporate our partial knowledge about the system and its environment into their respective models. In this framework, the design objective is typically related to the expected value of a system performance measure, such as reliability or expected life-cycle cost. This system design process is called stochastic system design and the associated design optimization problem stochastic optimization. In this thesis general stochastic system design problems are discussed. Application of this design approach to the specific field of structural control is considered for developing a robust-to-uncertainties nonlinear controller synthesis methodology.;Initially problems that involve relatively simple models are discussed. Analytical approximations, motivated by the simplicity of the models adopted, are discussed for evaluating the system performance and efficiently performing the stochastic optimization. Special focus is given in this setting on the design of control laws for linear structural systems with probabilistic model uncertainty, under stationary stochastic excitation. The analysis then shifts to complex systems, involving nonlinear models with high-dimensional uncertainties. To address this complexity in the model description stochastic simulation is suggested for evaluating the performance objectives. This simulation-based approach addresses adequately all important characteristics of the system but makes the associated design optimization challenging. A novel algorithm, called Stochastic Subset Optimization (SSO), is developed for efficiently exploring the sensitivity of the objective function to the design variables and iteratively identifying a subset of the original design space that has high plausibility of containing the optimal design variables. An efficient two-stage framework for the stochastic optimization is then discussed combining SSO with some other stochastic search algorithm. Topics related to the combination of the two different stages for overall enhanced efficiency of the optimization process are discussed.;Applications to general structural design problems as well as structural control problems are finally considered. The design objectives in these problems are the reliability of the system and the life-cycle cost. For the latter case, instead of approximating the damages from future earthquakes in terms of the reliability of the structure, as typically performed in past research efforts, an accurate methodology is presented for estimating this cost; this methodology uses the nonlinear response of the structure under a given excitation to estimate the damages in a detailed, component level.
机译:在工程设计应用程序中有关计划系统的知识永远是不完整的。通常,需要对由于缺少信息而引起的不确定性进行概率量化,以便将我们对系统及其环境的部分知识有效地纳入各自的模型中。在此框架中,设计目标通常与系统性能指标的预期值有关,例如可靠性或预期的生命周期成本。该系统设计过程称为随机系统设计和相关的设计优化问题随机优化。本文讨论了一般的随机系统设计问题。考虑将这种设计方法应用于结构控制的特定领域,以开发一种具有不确定性的鲁棒非线性控制器综合方法。最初,讨论了涉及相对简单模型的问题。讨论了由于采用的模型简单而引起的分析近似值,用于评估系统性能并有效地执行随机优化。在这种情况下,特别关注静态随机激励下具有概率模型不确定性的线性结构系统的控制律设计。然后,分析转向复杂的系统,其中涉及具有高维不确定性的非线性模型。为了解决模型描述中的这种复杂性,建议使用随机模拟来评估性能目标。这种基于仿真的方法充分解决了系统的所有重要特征,但使相关的设计优化面临挑战。开发了一种称为随机子集优化(SSO)的新颖算法,以有效地探索目标函数对设计变量的敏感性,并迭代地识别原始设计空间的一个子集,该子集具有很高的合理性,可以包含最优设计变量。然后讨论了一种有效的两阶段随机优化框架,将SSO与其他随机搜索算法相结合。讨论了与两个不同阶段的组合有关的问题,以提高优化过程的整体效率。最后考虑了在一般结构设计问题以及结构控制问题中的应用。这些问题的设计目标是系统的可靠性和生命周期成本。对于后一种情况,不是按照结构的可靠性来估算未来地震造成的破坏,而是采用一种准确的方法估算这种成本,而这种结构通常是在过去的研究工作中进行的。该方法使用结构在给定激励下的非线性响应来估计详细的组件级损伤。

著录项

  • 作者

    Taflanidis, Alexandros.;

  • 作者单位

    California Institute of Technology.;

  • 授予单位 California Institute of Technology.;
  • 学科 Engineering Civil.;Operations Research.;Engineering Mechanical.
  • 学位 Ph.D.
  • 年度 2007
  • 页码 271 p.
  • 总页数 271
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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