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Conference Paper

Automatic Verification of Hybrid Systems with Large Discrete State Space

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Waldmann,  Uwe
Automation of Logic, MPI for Informatics, Max Planck Society;
Programming Logics, MPI for Informatics, Max Planck Society;

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Citation

Damm, W., Disch, S., Hungar, H., Pang, J., Pigorsch, F., Scholl, C., et al. (2006). Automatic Verification of Hybrid Systems with Large Discrete State Space. In S. Graf, & W. Zhang (Eds.), Automated Technology for Verification and Analysis, 4th International Symposium, ATVA 2006 (pp. 276-291). Berlin, Germany: Springer.


Cite as: https://hdl.handle.net/11858/00-001M-0000-000F-24BC-6
Abstract
We address the problem of model checking hybrid systems which exhibit nontrivial discrete behavior and thus cannot be treated by considering the discrete states one by one, as most currently available verification tools do. Our procedure relies on a deep integration of several techniques and tools. An extension of AND-Inverter-Graphs (AIGs) with first-order constraints serves as a compact representation format for sets of configurations which are composed of continuous regions and discrete states. Boolean reasoning on the AIGs is complemented by firstorder reasoning in various forms and on various levels. These include implication checks for simple constraints, test vector generation for fast inequality checks of boolean combinations of constraints, and an exact subsumption check for representations of two configurations.\par These techniques are integrated within a model checker for universal CTL. Technically, it deals with discrete-time hybrid systems with linear differentials. The paper presents the approach, its prototype implementation, and first experimental data.