Abstract

This paper addresses model checking based on SAT solvers and Craig interpolants. We tackle major scalability problems of state-of-the-art interpolation-based approaches, and we achieve two main results: (1) a novel model checking algorithm; (2) a new and flexible way to handle an incremental representation of (over-approximated) forward reachable states. The new model checking algorithm (IGR: Interpolation with Guided Refinement), partially takes inspiration from IC3 and interpolation sequences. It bases its robustness and scalability on incremental refinement of state sets, and guided unwinding/simplification of transition relation unrollings. State sets, the central data structure of our algorithm, are incrementally refined, and they represent a valuable information to be shared among related problems, either in concurrent or sequential (multiple-engine or multiple property) execution schemes. We provide experimental data, showing that IGR extends the capability of a state-of-the-art model checker, with a specific focus on hard-to-prove properties.

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