Rough Control: A Perspective

  • Toshinori Munakata

Abstract

Observing the current state of commercial and industrial AI, control and hybrid systems are said to have the highest potentials for massive practical applications of rough set theory. After a brief description of the control problem and fuzzy systems, the principles of rough control and a scenario of fine temperature control are discussed.

Keywords

Convection Transportation 

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Copyright information

© Kluwer Academic Publishers 1997

Authors and Affiliations

  • Toshinori Munakata
    • 1
  1. 1.Computer and Information Science DepartmentCleveland State UniversityClevelandUSA

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