用集覆盖公式选择基于sat的有界模型检验的关键含义

Mahmoud Elbayoumi, M. Hsiao, Mustafa ElNainay
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引用次数: 4

摘要

基于sat的有界模型检测(BMC)的有效性主要依赖于BMC实例的演绎能力。虽然暗示关系已经被用来帮助SAT解题者做出更多的推论,但经常使用过多的暗示。太多这样的含义可能会导致大量的子句,这些子句可能会降低底层SAT求解器的性能。在本文中,我们首先提出了一个并行推理引擎的框架,以减少隐含学习时间。其次,我们提出了一种新的约束子句最优选择的集合覆盖技术。该技术依赖于在BCP(布尔约束传播)操作期间,SAT求解器可以推导出的文字数量最大化。我们的并行推理引擎可以在36核机器上实现5.7倍的加速。此外,通过只选择那些关键含义,我们的策略比将所有扩展含义添加到BMC实例的情况又提高了1.74倍。与没有任何隐含条款的原始BMC相比,可实现高达55.32倍的加速。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Selecting critical implications with set-covering formulation for SAT-based Bounded Model Checking
The effectiveness of SAT-based Bounded Model Checking (BMC) critically relies on the deductive power of the BMC instance. Although implication relationships have been used to help SAT solver to make more deductions, frequently an excessive number of implications has been used. Too many such implications can result in a large number of clauses that could potentially degrade the underlying SAT solver performance. In this paper, we first propose a framework for a parallel deduction engine to reduce implication learning time. Secondly, we propose a novel set-cover technique for optimal selection of constraint clauses. This technique depends on maximizing the number of literals that can be deduced by the SAT solver during the BCP (Boolean Constraint Propagation) operation. Our parallel deduction engine can achieve a 5.7× speedup on a 36-core machine. In addition, by selecting only those critical implications, our strategy improves BMC by another 1.74× against the case where all extended implications were added to the BMC instance. Compared with the original BMC without any implication clauses, up to 55.32× speedup can be achieved.
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