SYSYSep 8, 2016

Characterizations and Effective Computation of Supremal Relatively Observable Sublanguages

arXiv:1609.022515 citations
Originality Incremental advance
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This work provides a computationally effective method for a known problem in supervisory control of discrete-event systems under partial observation.

The paper presents a new characterization of relative observability for discrete-event systems, enabling effective computation of the supremal relatively observable sublanguage and its controllable counterpart for regular languages.

Recently we proposed relative observability for supervisory control of discrete-event systems under partial observation. Relative observability is closed under set unions and hence there exists the supremal relatively observable sublanguage of a given language. In this paper we present a new characterization of relative observability, based on which an operator on languages is proposed whose largest fixpoint is the supremal relatively observable sublanguage. Iteratively applying this operator yields a monotone sequence of languages; exploiting the linguistic concept of support based on Nerode equivalence, we prove for regular languages that the sequence converges finitely to the supremal relatively observable sublanguage, and the operator is effectively computable. Moreover, for the purpose of control, we propose a second operator that in the regular case computes the supremal relatively observable and controllable sublanguage. The computational effectiveness of the operator is demonstrated on a case study.

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