Abstract-While being a de-facto standard for the modeling of software systems, the Unified Modeling Language (UML) is also increasingly used in the domain of hardware design and hardware/software co-design. To ensure the correctness of the specified systems, approaches have been presented which automatically verify whether a UML model is consistent, i.e. free of conflicts. However, if the model is inconsistent, these approaches do not provide further information to assist the designer in finding the error.In this work, we present an automatic debugging approach which determines contradiction candidates, i.e. a small subset of the original model explaining the conflict. These contradiction candidates aid the designer in finding the error faster and therefore accelerate the whole design process. The approach employs different satisfiability solvers as well as different debugging strategies. Experimental results demonstrate that, even for large UML models with up to 2500 classes and constraints, the approach determines a very small number of contradiction candidates to be inspected.
Abstract-Intensive research is performed to find post-CMOS technologies. A very promising direction based on reversible logic are quantum computers. While in the domain of reversible logic synthesis, testing, and verification have been investigated, debugging of reversible circuits has not yet been considered. The goal of debugging is to determine gates of an erroneous circuit that explain the observed incorrect behavior.In this paper we propose the first approach for automatic debugging of reversible Toffoli networks. Our method uses a formulation for the debugging problem based on Boolean satisfiability. We show the differences to classical (irreversible) debugging and present theoretical results. These are used to speed-up the debugging approach as well as to improve the resulting quality. Our method is able to find and to correct single errors automatically.
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