Computer Science > Logic in Computer Science
[Submitted on 18 Jun 2015]
Title:A CEGAR-like Approach for Cost LTL Bounds
View PDFAbstract:Qualitative formal verification, that seeks boolean answers about the behavior of a system, is often insufficient for practical purposes. Observing quantitative information is of interest, e.g. for the proper calibration of a battery or a real-time scheduler. Historically, the focus has been on quantities in a continuous domain, but recent years showed a renewed interest for discrete quantitative domains.
Cost Linear Temporal Logic (CLTL) is a quantitative extension of classical LTL. It integrates into a nice theory developed in the past few years that extends the qualitative setting, with counterparts in terms of logics, automata and algebraic structure. We propose a practical usage of this logics for model-checking purposes. A CLTL formula defines a function from infinite words to integers. Finding the bounds of such a function over a given set of words can be seen as an extension of LTL universal and existential model-checking. We propose a CEGAR-like algorithm to find these bounds by relying on classical LTL model-checking, and use Büchi automata with counters to implement it. This method constitutes a first step towards the practical use of such a discrete quantitative logic.
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