Generalizing Multi-Context Systems for Reactive Stream Reasoning Applications
نویسنده
چکیده
In the field of artificial intelligence (AI), the subdomain of knowledge representation (KR) has the aim to represent, integrate, and exchange knowledge in order to do some reasoning about the given information. During the last decades many different KR-languages were proposed for a variety of certain applications with specific needs. The concept of a managed Multi-Context System (mMCS) was introduced to provide adequate formal tools to interchange and integrate knowledge between different KR-approaches. Another arising field of interest in computer science is the design of online applications, which react directly to (possibly infinite) streams of information. This paper presents a genuine approach to generalize mMCS for online applications with continuous streams of information. Our major goal is to find a good tradeoff between expressiveness and computational complexity. 1998 ACM Subject Classification 1.2.11 Distributed Artificial Intelligence
منابع مشابه
Reactive multi-context systems: Heterogeneous reasoning in dynamic environments
In this paper we introduce reactive multi-context systems (rMCSs), a framework for reactive reasoning in the presence of heterogeneous knowledge sources. In particular, we show how to integrate data streams into multi-context systems (MCSs) and how to model the dynamics of the systems, based on two types of bridge rules. We illustrate how several typical problems arising in the context of strea...
متن کاملKnowledge-intensive Stream Reasoning
Nonmonotonic reasoning is context-dependent [1]. For instance, Reiterstyle defaults capture patterns of inference of the form “in the absence of information to the contrary conclude” [2]. Thus, conclusions are tentative, and they may become retracted in view of further information (or changing contexts). In other words, conclusions are context-dependent and contexts change over time. Unlike thi...
متن کاملMulti-Context Systems for Reactive Reasoning in Dynamic Environments
We show in this paper how managed multi-context systems (mMCSs) can be turned into a reactive formalism suitable for continuous reasoning in dynamic environments. We extend mMCSs with (abstract) sensors and define the notion of a run of the extended systems. We then show how typical problems arising in online reasoning can be addressed: handling potentially inconsistent sensor input, modeling i...
متن کاملTowards Inconsistency Management in Reactive Multi-Context Systems
In this paper, we begin by introducing reactive multicontext systems (rMCSs), a framework for reactive reasoning in the presence of heterogeneous knowledge sources. In particular, we show how to integrate data streams into multi-context systems (MCSs) and how to model the dynamics of the systems, based on two types of bridge rules. We then discuss various methods for handling inconsistencies, a...
متن کاملSolution of Multi-Objective optimal reactive power dispatch using pareto optimality particle swarm optimization method
For multi-objective optimal reactive power dispatch (MORPD), a new approach is proposed where simultaneous minimization of the active power transmission loss, the bus voltage deviation and the voltage stability index of a power system are achieved. Optimal settings of continuous and discrete control variables (e.g. generator voltages, tap positions of tap changing transformers and the number of...
متن کامل