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Adaptive Input Reconstruction with Application to Model Refinement, State Estimation, and Adaptive Control.

机译:自适应输入重构及其在模型细化,状态估计和自适应控制中的应用。

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摘要

Input reconstruction is the process of using the output of a system to estimate its input. In some cases, input reconstruction can be accomplished by determining the output of the inverse of a model of the system whose input is the output of the original system. Inversion, however, requires an exact and fully known analytical model, and is limited by instabilities arising from nonminimum-phase zeros.;The main contribution of this work is a novel technique for input reconstruction that does not require model inversion. This technique is based on a retrospective cost, which requires a limited number of Markov parameters. Retrospective cost input reconstruction (RCIR) does not require knowledge of nonminimum-phase zero locations or an analytical model of the system.;RCIR provides a technique that can be used for model refinement, state estimation, and adaptive control. In the model refinement application, data are used to refine or improve a model of a system. It is assumed that the difference between the model output and the data is due to an unmodeled subsystem whose interconnection with the modeled system is inaccessible, that is, the interconnection signals cannot be measured and thus standard system identification techniques cannot be used. Using input reconstruction, these inaccessible signals can be estimated, and the inaccessible subsystem can be fitted. We demonstrate input reconstruction in a model refinement framework by identifying unknown physics in a space weather model and by estimating an unknown film growth in a lithium ion battery. The same technique can be used to obtain estimates of states that cannot be directly measured.;Adaptive control can be formulated as a model-refinement problem, where the unknown subsystem is the idealized controller that minimizes a measured performance variable. Minimal modeling input reconstruction for adaptive control is useful for applications where modeling information may be difficult to obtain. We demonstrate adaptive control of a seeker-guided missile with unknown aerodynamics.
机译:输入重建是使用系统的输出来估计其输入的过程。在某些情况下,可以通过确定输入为原始系统输出的系统模型的逆输出来完成输入重构。然而,反演需要一个精确且广为人知的分析模型,并受到非最小相位零点引起的不稳定性的限制。这项工作的主要贡献是一种不需要模型反演的输入重构新技术。该技术基于追溯成本,这需要有限数量的马尔可夫参数。回顾性成本输入重建(RCIR)不需要了解非最小相位零位置或系统分析模型。RCIR提供了可用于模型优化,状态估计和自适应控制的技术。在模型细化应用程序中,数据用于细化或改进系统模型。假定模型输出和数据之间的差异是由于未建模的子系统导致的,该子系统无法与建模系统进行互连,也就是说,互连信号无法测量,因此无法使用标准的系统识别技术。使用输入重建,可以估计这些不可访问的信号,并可以安装不可访问的子系统。我们通过识别太空天气模型中的未知物理学并估算锂离子电池中的未知薄膜生长,在模型优化框架中展示了输入重构。可以使用相同的技术来获取无法直接测量的状态的估计值;可以将自适应控制公式化为模型细化问题,其中未知子系统是使测量的性能变量最小化的理想化控制器。用于自适应控制的最小建模输入重构对于可能难以获得建模信息的应用很有用。我们演示了具有未知空气动力学的导引制导导弹的自适应控制。

著录项

  • 作者

    D'Amato, Anthony M.;

  • 作者单位

    University of Michigan.;

  • 授予单位 University of Michigan.;
  • 学科 Engineering Aerospace.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 300 p.
  • 总页数 300
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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