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An intelligent approach to system identification.

机译:一种智能的系统识别方法。

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摘要

System identification methods are frequently used to obtain appropriate models for the purpose of control, fault detection, pattern recognition, prediction, adaptive filtering and other purposes. A number of techniques exist for the identification of linear systems. However, real-world and complex systems are often nonlinear and there exists no generic methodology for the identification of nonlinear systems with unknown structure. A recent approach makes use of highly interconnected networks of simple processing elements, which can be programmed to approximate nonlinear functions to identify nonlinear dynamic systems. This thesis takes a detailed look at identification of nonlinear systems with neural networks. Important questions in the application of neural networks for nonlinear systems are identified; concerning the excitation properties of input signals, selection of an appropriate neural network structure, estimation of the neural network weights, and the validation of the identified model. These questions are subsequently answered. This investigation leads to a systematic procedure for identification using neural networks and this procedure is clearly illustrated by modeling a complex nonlinear system; the components of the space shuttle main engine. Additionally, the neural network weights are determined by using a general purpose optimization technique known as evolutionary programming which is based on the concept of simulated evolution. The evolutionary programming algorithm is modified to include self-adapting step sizes. The effectiveness of the evolutionary programming algorithm as a general purpose optimization algorithm is illustrated on a test suite of problems including function optimization, neural network weight optimization, optimal control system synthesis and reinforcement learning control.
机译:系统识别方法通常用于获得适当的模型,以用于控制,故障检测,模式识别,预测,自适应滤波和其他目的。存在许多用于识别线性系统的技术。然而,现实世界中的复杂系统通常是非线性的,并且不存在用于识别结构未知的非线性系统的通用方法。最近的方法利用了简单处理元件的高度互连的网络,可以对这些网络进行编程,使其近似于非线性函数,从而识别出非线性动态系统。本文详细研究了用神经网络识别非线性系统的方法。确定了神经网络在非线性系统中的应用中的重要问题;有关输入信号的激励特性,适当的神经网络结构的选择,神经网络权重的估计以及所识别模型的验证。这些问题随后得到解答。这项研究导致了使用神经网络进行识别的系统程序,并且通过对复杂的非线性系统进行建模可以清楚地说明该程序。航天飞机主机的组件。此外,神经网络权重是通过使用通用的优化技术(称为进化规划)来确定的,该技术基于模拟进化的概念。修改了进化编程算法,使其包括自适应步长。进化编程算法作为通用优化算法的有效性在包括功能优化,神经网络权重优化,最优控制系统综合和强化学习控制等问题的测试套件中得到了说明。

著录项

  • 作者

    Saravanan, Natarajan.;

  • 作者单位

    Florida Atlantic University.;

  • 授予单位 Florida Atlantic University.;
  • 学科 Engineering Mechanical.;Computer Science.;Engineering Aerospace.
  • 学位 Ph.D.
  • 年度 1994
  • 页码 201 p.
  • 总页数 201
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:49:50

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