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The BDI architecture, where agents are modelled based on their beliefs, desires and intentions, provides a practical approach to develop large scale systems. However, it is not well suited to model complex Supervisory Control And Data Acquisition (SCADA) systems pervaded by uncertainty. In this paper we address this issue by extending the operational semantics of CAN(PLAN) into CAN(PLAN)+. We start by modelling the beliefs of an agent as a set of epistemic states where each state, possibly using a different representation, models part of the agent's beliefs. These epistemic states are stratified to make them commensurable and to reason about the uncertain beliefs of the agent. The syntax and semantics of a BDI agent are extended accordingly and we identify fragments with computationally efficient semantics. Finally, we examine how primitive actions are affected by uncertainty and we define an appropriate form of look ahead planning.
This research is supported by the UK EPSRC project EP/J012149/1.
Peer Reviewed
belief revision, Large scale systems, multi-agent programming, Primitive actions, SCADA systems, Computationally efficient, 004, AgentSpeak, BDI architecture, Model complexes, Operational semantics, BDI, Uncertain informations, Uncertain beliefs, uncertainty
belief revision, Large scale systems, multi-agent programming, Primitive actions, SCADA systems, Computationally efficient, 004, AgentSpeak, BDI architecture, Model complexes, Operational semantics, BDI, Uncertain informations, Uncertain beliefs, uncertainty
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