Long-range pbkp_redictive adaptive fuzzy relational control


Abstract:

A class of long-range pbkp_redictive adaptive fuzzy relational controllers is presented. The plant behavior is described over an extended time horizon by a fuzzy relational model which is identified based on input-output closed-loop observations of the plant variables. In this class of adaptive controllers the control law attempts to minimize a quadratic cost over an extended control horizon. When used with linear models, this approach has revealed a significant potential for overcoming the limitations of one-step ahead schemes, such as the stabilization of non-minimum phase plants. Here, a uniform framework is adopted for implementing both the fuzzy model and the fuzzy controller, namely distributed fuzzy relational structures gaining from their massive parallel processing features and from the learning capabilities typical of the connectivist approaches. Issues such as maintenance during the adaptation process of the meaning of linguistic terms used at both fuzzy systems interfaces are addressed, namely by introducing a new design methodology for on-line fuzzy systems interface adaptation. The examples presented reinforce the claim of the usefulness of this new approach. © 1995.

Año de publicación:

1995

Keywords:

  • Long-range pbkp_rediction
  • adaptive control
  • Fuzzy relational structures, Fuzzy system interfaces
  • Fuzzy identification and modeling
  • Membership Functions

Fuente:

scopusscopus

Tipo de documento:

Article

Estado:

Acceso restringido

Áreas de conocimiento:

  • Inteligencia artificial
  • Sistema de control

Áreas temáticas:

  • Ciencias de la computación