Learning to be Autonomous: Intelligent
Supervisory Control
P. J. Antsaklis, M. D. Lemmon and J. A. Stiver
Intelligent Control: Theorv and Practice. Gupta M.M., Sinha N.K.,
eds., pp. 28-62, IEEE Press, 1995. Also released as Technical
Report isis-93-003, Department of Electrical Engineering,
University of Notre Dame, 1993.
Abstract -- A brief introduction to the main
ideas in Autonomous Control Systems is first given and certain
important issues in modeling, analysis and design are discussed.
Control systems with high degree of autonomy should perform well
under significant uncertainties in the system and environment for
extended periods of time, and they must be able to compensate for
certain system failures without external intervention. Highly
autonomous control systems evolve from conventional control
systems by adding intelligent components, and their development
requires interdisciplinary research. A working characterization
of intelligent controllers is introduced and it is argued that
the supervisory controller discussed here, which can learn
events, is indeed intelligent. There are problems in Autonomous
Control Hybrid control systems are of great importance in the
development of autonomous control and they are discussed
extensively. An appropriate hybrid system model is first
introduced and it is used to develop a DES model for the hybrid
control system. Logical DES theory is then extended to include
hybrid systems and a DES supervisory controller is designed. To
cope with changing complex systems, learning must be introduced.
Symbol/event bindings are discussed and the framework for an
intelligent supervisory controller is developed.
Technical Report [pdf
file]