A Framework for On-Line Learning of Plant Models and Control Policies for Restructurable Control (1995)
| Venue: | IEEE Transactions on Systems, Man and Cybernetics |
| Citations: | 2 - 2 self |
BibTeX
@ARTICLE{Reveliotis95aframework,
author = {Spiridon A. Reveliotis and Mieczyslaw M. Kokar},
title = {A Framework for On-Line Learning of Plant Models and Control Policies for Restructurable Control},
journal = {IEEE Transactions on Systems, Man and Cybernetics},
year = {1995},
volume = {25},
pages = {1502--1512}
}
OpenURL
Abstract
In this paper a learning framework to deal with restructurable control of a single-output dynamic plant is proposed. The central concept used to represent the restructurable behavior of the plant, and subsequently for the design of the framework, is the behavioral graph. The nodes of this graph correspond to possible local behaviors of the system while its edges model the switching scheme of the plant among its local behaviors. In the definition of this concept, General Dynamical System theory is used. The framework is able to learn the dynamics (models) of a reconfigurable system, select appropriate models, and ultimately control the plant according to given specifications. The framework design borrows concepts and techniques from the active fields of adaptive and learning control. The underlying ideas and the software prototype implementing the framework design are tested through a series of simulated experiments. The simulations demonstrate the feasibility of the approach for contro...







