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A class of BDI agent architectures for autonomous control

A class of BDI agent architectures for autonomous control
A class of BDI agent architectures for autonomous control
A class of beliefs-desires-intentions (BDI) agent architecture is presented for control systems with a high degree of autonomy. The architecture contains agents for modelling, controller optimization, implementation and to monitor performance. The global convergence of performance of the agent system is proven under three mild assumptions. Relevant features of the agent structure are competing modellers and controllers. The benefit is an enhanced ability to learn new plant dynamics of varying complexity and controller adaptation. The new family of control agent architectures is called cautiously optimistic, a name to reflect the most important property of the new architecture: modelling results are applied with caution for control but current models are accepted until measurements do not contradict them with a margin. A cautiously optimistic control agent (COCA) is proven to have converging performance to a nearly optimal performance for stationary dynamics of a real plant under fairly general assumptions.
adaptive control, convergence, intelligent control, software agents
4746-4751
IEEE
Veres, S.M.
909c60a0-56a3-4eb6-83e4-d52742ecd304
Luo, J.
c3143e78-c638-4287-9900-e03d6ecaa448
Veres, S.M.
909c60a0-56a3-4eb6-83e4-d52742ecd304
Luo, J.
c3143e78-c638-4287-9900-e03d6ecaa448

Veres, S.M. and Luo, J. (2004) A class of BDI agent architectures for autonomous control. In Proceedings of the 43rd IEEE conference on decision and control. IEEE. pp. 4746-4751 . (doi:10.1109/CDC.2004.1429540).

Record type: Conference or Workshop Item (Paper)

Abstract

A class of beliefs-desires-intentions (BDI) agent architecture is presented for control systems with a high degree of autonomy. The architecture contains agents for modelling, controller optimization, implementation and to monitor performance. The global convergence of performance of the agent system is proven under three mild assumptions. Relevant features of the agent structure are competing modellers and controllers. The benefit is an enhanced ability to learn new plant dynamics of varying complexity and controller adaptation. The new family of control agent architectures is called cautiously optimistic, a name to reflect the most important property of the new architecture: modelling results are applied with caution for control but current models are accepted until measurements do not contradict them with a margin. A cautiously optimistic control agent (COCA) is proven to have converging performance to a nearly optimal performance for stationary dynamics of a real plant under fairly general assumptions.

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More information

Published date: 2004
Additional Information: ISSN: 0191-2216
Venue - Dates: 43rd IEEE Conference on Decision and Control, Atlantis, Paradise Island, Bahamas, 2004-12-14 - 2004-12-17
Keywords: adaptive control, convergence, intelligent control, software agents

Identifiers

Local EPrints ID: 22986
URI: http://eprints.soton.ac.uk/id/eprint/22986
PURE UUID: 6e4b500b-e778-4dd5-8959-225f7eb639d7

Catalogue record

Date deposited: 30 Mar 2006
Last modified: 15 Mar 2024 06:42

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Contributors

Author: S.M. Veres
Author: J. Luo

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