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A Nonlinear Adaptive Controller: A Comparison between Fuzzy Logic Control and Neurocontrol

A Nonlinear Adaptive Controller: A Comparison between Fuzzy Logic Control and Neurocontrol
A Nonlinear Adaptive Controller: A Comparison between Fuzzy Logic Control and Neurocontrol
This paper explores, from a surface-fitting viewpoint, two algorithms which are often applied in the field of intelligent control: fuzzy self-organising controllers and neural networks. Both methodologies adapt internal model parameters in response to the plant's input-output mapping. However, while the convergence of single layer neural networks has been studied in great detail, very few theorems have been proved about self-organizing fuzzy logic controllers. In this paper, it is shown that B-splines can provide a framework for choosing the shape of the fuzzy sets. Then the operators chosen to implement the underlying fuzzy logic are examined, showing that they can produce 'smooth' control surfaces. It is now possible to make a direct comparison between fuzzy logic controllers and feedforward neural networks, demonstrating that, in a forward-chaining mode, storing the plant's behaviour in terms of weights or rule confidences is equivalent. Finally, three training rules for the self-organizing fuzzy controller are derived.
239--265
Brown, M.
52cf4f52-6839-4658-8cc5-ec51da626049
Harris, C.J.
c4fd3763-7b3f-4db1-9ca3-5501080f797a
Brown, M.
52cf4f52-6839-4658-8cc5-ec51da626049
Harris, C.J.
c4fd3763-7b3f-4db1-9ca3-5501080f797a

Brown, M. and Harris, C.J. (1991) A Nonlinear Adaptive Controller: A Comparison between Fuzzy Logic Control and Neurocontrol. IMA Jnl. of Mathematical Control and Information, 8 (3), 239--265.

Record type: Article

Abstract

This paper explores, from a surface-fitting viewpoint, two algorithms which are often applied in the field of intelligent control: fuzzy self-organising controllers and neural networks. Both methodologies adapt internal model parameters in response to the plant's input-output mapping. However, while the convergence of single layer neural networks has been studied in great detail, very few theorems have been proved about self-organizing fuzzy logic controllers. In this paper, it is shown that B-splines can provide a framework for choosing the shape of the fuzzy sets. Then the operators chosen to implement the underlying fuzzy logic are examined, showing that they can produce 'smooth' control surfaces. It is now possible to make a direct comparison between fuzzy logic controllers and feedforward neural networks, demonstrating that, in a forward-chaining mode, storing the plant's behaviour in terms of weights or rule confidences is equivalent. Finally, three training rules for the self-organizing fuzzy controller are derived.

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More information

Published date: 1991
Organisations: Southampton Wireless Group

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Local EPrints ID: 250246
URI: http://eprints.soton.ac.uk/id/eprint/250246
PURE UUID: fe4a21e1-f6e3-45ca-b9f4-3b2795fb9876

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Date deposited: 04 May 1999
Last modified: 10 Dec 2021 20:07

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Contributors

Author: M. Brown
Author: C.J. Harris

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