集成基于CNF和BDD的SAT求解器

S. Gopalakrishnan, V. Durairaj, P. Kalla
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引用次数: 6

摘要

本文提出了一种基于CNF和基于BDD的工具的集成基础结构来解决布尔可满足性问题。我们使用CNF和bdd不仅作为一种表示手段,而且还可以有效地分析,修剪和指导搜索。我们描述了一种方法,以一种能够与bdd有效集成的方式成功地重新定位当代CNF工具的决策策略。考虑到bdd存在内存爆炸问题,我们描述了基于学习的搜索空间修剪技术,该技术增强了CNF工具已经使用的冲突分析过程。我们的基础设施旨在解决那些难以解决的实例,而当代CNF工具在这些实例中投入了大量的搜索时间。在广泛的基准上进行的实验证明了我们的方法的前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating CNF and BDD based SAT solvers
This paper presents an integrated infrastructure of CNF and BDD based tools to solve the Boolean Satisfiability problem. We use both CNF and BDDs not only as a means of representation, but also to efficiently analyze, prune and guide the search. We describe a method to successfully re-orient the decision making strategies of contemporary CNF tools in a manner that enables an efficient integration with BDDs. Keeping in mind that BDDs suffer from memory explosion problems, we describe learning-based search space pruning techniques that augment the already employed conflict analysis procedures of CNF tools. Our infrastructure is targeted towards solving those hard-to-solve instances where contemporary CNF tools invest significant search times. Experiments conducted over a wide range of benchmarks demonstrate the promise of our approach.
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