DocumentCode
487227
Title
Rule-Based Mechanisms of Learning for Intelligent Adaptive Flight Control
Author
Handelman, David A. ; Stengel, Robert F.
Author_Institution
Graduate Student, Princeton University, Department of Mechanical & Aerospace Engineering, Princeton, New Jersey 08544
fYear
1988
fDate
15-17 June 1988
Firstpage
208
Lastpage
213
Abstract
This paper investigates how certain aspects of human learning can be used to characterize learning in intelligent adaptive control systems. Reflexive and declarative memory and learning are described. It is shown that model-based systems-theoretic adaptive control methods exhibit attributes of reflexive learning, whereas the problem-solving capabilities of knowledge-based systems of artificial intelligence are naturally suited for implementing declarative learnig. Issues related to learning in knowledge-based control systems are addressed, with particular attention given to rule-based systems. A mechanism for real-time rule-based knowledge acquisition is suggested, and utilization of this mechanism within the context of failure diagnosis for fault-tolerant flight control is demonstrated.
Keywords
Adaptive control; Aerospace control; Artificial intelligence; Humans; Intelligent control; Intelligent systems; Knowledge based systems; Learning; Problem-solving; Programmable control;
fLanguage
English
Publisher
ieee
Conference_Titel
American Control Conference, 1988
Conference_Location
Atlanta, Ga, USA
Type
conf
Filename
4789717
Link To Document