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Advanced controller designs for synchronous generators using nonlinear transformations and neural networks.

机译:使用非线性变换和神经网络的同步发电机高级控制器设计。

摘要

The non-availability of a technique to handle all nonlinear problems necessitates a multitude of techniques be attempted to facilitate the solution for a particular problem. This dissertation investigates the development of advanced design techniques for nonlinear controllers and observers for a synchronous generator. The primary objective of the control system in this application is to asymptotically track the nominal terminal voltage and frequency, and to improve the stability and dynamic performance in the presence of both small and large disturbances. New schemes for designing nonlinear controllers and observers for the synchronous generator are introduced using the concepts and methods from differential geometry and neural network theory. Nonlinear transformation using differential geometry methods is a promising approach to the control of nonlinear systems. The differential geometry-based nonlinear controllers are developed for the synchronous generator and these control schemes are tested on different order models. The initial controller design is conducted based on a nominal load consideration. Later, on-line stabilization which consists of updating the controller parameters is conducted to compensate for the load variations. Differential geometry concepts are use to develop a new nonlinear observer for a synchronous generator that has the ability to handle large transients. The investigation conducted here also includes other kinds of nonlinear observers and compares them with their linear counterparts for different fault clearing times. A software program using symbolic manipulations is developed to help the user, who may not be familiar with differential geometry, to design a nonlinear observer for both single and multi-output models of the synchronous generator. Neural networks provide a solution to interesting identification and control problems. Their parallel nature assures a fast adaptation to the system under control. A new control scheme is developed to adaptively control the frequency and voltage of a synchronous generator using neural networks. Dynamic neural networks whose parameters are identified via a supervised learning procedure are used as approximators to the nonlinear map given by the system input-output data. The trained neural network is then used for the design of the adaptive control scheme. The performance of these newly developed controller and observer schemes are examined in detail for several different cases. It is shown that the presently designed controllers and the observer provide an improved performance when compared with the existing design procedures.
机译:由于无法使用一种技术来处理所有非线性问题,因此有必要尝试多种技术来促进对特定问题的解决。本文研究了同步发电机非线性控制器和观测器的先进设计技术的发展。在此应用中,控制系统的主要目的是渐近地跟踪标称终端电压和频率,并在存在小干扰和大干扰的情况下提高稳定性和动态性能。利用微分几何和神经网络理论的概念和方法,介绍了用于同步发电机的非线性控制器和观测器设计的新方案。使用微分几何方法进行非线性变换是控制非线性系统的一种有前途的方法。为同步发电机开发了基于差分几何的非线性控制器,并在不同阶次模型上测试了这些控制方案。初始控制器设计基于额定负载考虑进行。之后,进行包括更新控制器参数的在线稳定化,以补偿负载变化。微分几何概念被用于为同步发电机开发新的非线性观测器,该观测器具有处理大瞬态的能力。这里进行的调查还包括其他种类的非线性观测器,并将它们与线性观测器进行比较,以了解不同的故障清除时间。开发了使用符号操作的软件程序,以帮助可能不熟悉微分几何的用户为同步发电机的单输出和多输出模型设计非线性观测器。神经网络为有趣的识别和控制问题提供了解决方案。它们的并行特性确保了对受控系统的快速适应。开发了一种新的控制方案,以使用神经网络自适应地控制同步发电机的频率和电压。动态神经网络的参数是通过监督学习过程确定的,被用作系统输入输出数据给出的非线性映射的近似器。然后将训练后的神经网络用于自适应控制方案的设计。这些新开发的控制器和观察器方案的性能针对几种不同情况进行了详细检查。结果表明,与现有设计程序相比,当前设计的控制器和观察器可提供更高的性能。

著录项

  • 作者

    Muhsin Ismieal Shafiq.;

  • 作者单位
  • 年度 1992
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类

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