Learning from BDDs in SAT-based bounded model checking

Aarti Gupta, Malay K. Ganai, Chao Wang, Z. Yang, P. Ashar
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引用次数: 57

Abstract

Bounded Model Checking (BMC) based on Boolean Satisfiability (SAT) procedures has recently gained popularity as an alternative to BDD-based model checking techniques for finding bugs in large designs. In this paper, we explore the use of learning from BDDs, where learned clauses generated by BDD-based analysis are added to the SAT solver, to supplement its other learning mechanisms. We propose several heuristics for guiding this process, aimed at increasing the usefulness of the learned clauses, while reducing the overheads. We demonstrate the effectiveness of our approach on several industrial designs, where BMC performance is improved and the design can be searched up to a greater depth by use of BDD-based learning.
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基于sat的有界模型检验中的bdd学习
最近,基于布尔可满足性(SAT)过程的有界模型检查(BMC)作为一种替代基于bdd的模型检查技术在大型设计中发现bug的方法而流行起来。在本文中,我们探索了从bdd中学习的使用,将基于bdd的分析生成的学习子句添加到SAT求解器中,以补充其其他学习机制。我们提出了几种启发式方法来指导这一过程,旨在增加所学从句的有用性,同时减少开销。我们在几个工业设计中证明了我们的方法的有效性,其中BMC性能得到了改善,并且通过使用基于bdd的学习可以对设计进行更深入的搜索。
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