SYSYDec 9, 2017

On Coparanormality in Distributed Supervisory Control of Discrete-Event Systems

arXiv:1703.010461.23 citationsh-index: 13
Originality Synthesis-oriented
AI Analysis

For researchers in discrete-event systems, this work provides a theoretical extension to existing decomposition and localization methods, but it is incremental as it builds on known properties.

The paper introduces coparanormality, a new coobservation property for decomposing supervisors in distributed discrete-event systems, and shows that relative observability is sufficient for decomposition. The method generalizes supervisor localization to any partition of controllable events, potentially easing industrial implementation.

Decomposition and localization of a supervisor both are reduction methods in distributed supervisory control of discrete-event systems.Decomposition is employed to reduce the number of events and localization is used to reduce the number of states of local controllers.In decomposition of a supervisor both observation and control scopes are restricted, whereas in localization only control authority is restricted to the corresponding local controller. In this paper, we propose a decomposition method by defining coparanormality property, and by using relative observability property of a monolithic supervisor. Coparanormality is a coobservation property defined based on paranormality property for a set of natural projections.It is shown that each supervisor can be coparanormal, provided a set of appropriate natural projections exist. Moreover, it is proved that relative observability is a sufficient condition for decomposition of a supervisor. Furthermore, the supervisor localization procedure is generalized to find a set of local controllers for any partition ofthe controllable events set. The implementation of such local controllers may become easier in industrial systems.

Foundations

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