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A Volterra series approach to nonlinear process control and control-relevant identification.

机译:Volterra级数方法用于非线性过程控制和与控制相关的识别。

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摘要

This dissertation is on the topic of nonlinear process identification and control using Volterra series as the process model. The issues addressed cover the analysis of feedback Volterra series systems, input-output (I/O) linearization control design, robustness analysis, control-relevant identification, model parameter number reduction and multi-input multi-output (MIMO) Volterra series. To analyze the properties of a feedback Volterra series system as well as robustness with respect to modeling error, a local form of the small gain theorem is developed. The local gain is defined on a subset of the input signal and hence its approximation for a finite Volterra series can be obtained. The local small gain theorem is then used to analyze the properties of a feedback Volterra series and, in particular, an inverse Volterra series. An uncertainty description is proposed to account for the modeling errors arising from truncating high order terms and the corresponding robustness issue is addressed for a nonlinear Internal Model Control structure. To overcome some difficulties in inverting Volterra series, which is an essential part in control synthesis, an I/O linearization operator is constructed using a discrete-time formulation. This operator removes the causality requirement in an inverse Volterra series, and has a better tuning feature for the admissible signal range. Based on the closed-loop control requirement, a control-relevant Volterra model identification criterion is established, which puts the control design and the model identification in an interactive framework. Examples have displayed a larger stability range and better response performance in the resulting control system than using conventional model identification. To reduce the parameter number in a Volterra series, a so-called Volterra-Laguerre model and its orthogonal regression analysis are developed. Conditions under which a nonlinear process can be approximated by the Volterra-Laguerre model are derived. To make the Volterra series approach more applicable, a MIMO Volterra series is formulated and some results obtained for a SISO Volterra series are extended. Two case studies of a reversible exothermic CSTR and a Model IV FCCU are given to demonstrate the application of the proposed techniques to chemical process control problems. Some future research directions, such as the experiment design for nonlinear model identification, are also proposed.
机译:本文以Volterra级数为过程模型,对非线性过程进行辨识和控制。解决的问题包括反馈Volterra系列系统的分析,输入输出(I / O)线性化控制设计,鲁棒性分析,与控制相关的识别,模型参数数量减少和多输入多输出(MIMO)Volterra系列。为了分析反馈Volterra级数系统的属性以及相对于建模误差的鲁棒性,开发了局部形式的小增益定理。局部增益是在输入信号的子集上定义的,因此可以获得有限Volterra级数的近似值。然后使用局部小增益定理分析反馈Volterra级数,尤其是反Volterra级数的性质。提出了不确定性描述以解决由于截断高阶项而引起的建模误差,并且针对非线性内部模型控制结构解决了相应的鲁棒性问题。为了克服在反转Volterra级数(这是控制综合中必不可少的部分)中遇到的一些困难,使用离散时间公式构造了I / O线性化算子。该运算符消除了Volterra逆序列中的因果关系要求,并且对于允许的信号范围具有更好的调谐功能。基于闭环控制要求,建立了与控制相关的沃尔泰拉模型辨识准则,将控制设计和模型辨识置于一个交互的框架中。与使用常规模型识别相比,示例在所得的控制系统中显示出更大的稳定性范围和更好的响应性能。为了减少Volterra级数中的参数数量,开发了所谓的Volterra-Laguerre模型及其正交回归分析。得出了可以通过Volterra-Laguerre模型近似非线性过程的条件。为了使Volterra级数方法更加适用,制定了MIMO Volterra级数并扩展了SISO Volterra级数获得的一些结果。给出了可逆放热CSTR和IV型FCCU的两个案例研究,以证明所提出的技术在化学过程控制问题中的应用。还提出了一些未来的研究方向,例如非线性模型辨识的实验设计。

著录项

  • 作者

    Zheng, Qingsheng.;

  • 作者单位

    University of Maryland, College Park.;

  • 授予单位 University of Maryland, College Park.;
  • 学科 Engineering Chemical.;Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 1995
  • 页码 165 p.
  • 总页数 165
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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