首页> 外文会议>International Conference on Computer Aided Verification(CAV 2005); 20050706-10; Edinburgh(GB) >Symbolic Systems, Explicit Properties: On Hybrid Approaches for LTL Symbolic Model Checking
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Symbolic Systems, Explicit Properties: On Hybrid Approaches for LTL Symbolic Model Checking

机译:符号系统,显式属性:关于LTL符号模型检查的混合方法

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In this work we study hybrid approaches to LTL symbolic model checking; that is, approaches that use explicit representations of the property automaton, whose state space is often quite manageable, and symbolic representations of the system, whose state space is typically exceedingly large. We compare the effects of using, respectively, (ⅰ) a purely symbolic representation of the property automaton, (ⅱ) a symbolic representation, using logarithmic encoding, of explicitly compiled property automaton, and (ⅲ) a partitioning of the symbolic state space according to an explicitly compiled property automaton. We apply this comparison to three model-checking algorithms: the doubly-nested fixpoint algorithm of Emerson and Lei, the reduction of emptiness to reachability of Biere et al., and the singly-nested fixpoint algorithm of Bloem et al. for weak automata. The emerging picture from our study is quite clear, hybrid approaches outperform pure symbolic model checking, while partitioning generally performs better than logarithmic encoding. The conclusion is that the hybrid approaches benefits from state-of-the-art techniques in semantic compilation of LTL properties. Partitioning gains further from the fact that the image computation is applied to smaller sets of states.
机译:在这项工作中,我们研究LTL符号模型检查的混合方法。也就是说,使用属性自动机的显式表示(其状态空间通常很容易管理)和系统的符号表示(其状态空间通常过大)的方法。我们分别比较使用(ⅰ)属性自动机的纯符号表示,(ⅱ)使用对数编码的显式编译的属性自动机的符号表示和(ⅲ)根据状态对符号状态空间进行分区的效果到显式编译的属性自动机。我们将此比较应用于三种模型检查算法:Emerson和Lei的双嵌套定点算法,Biere等人对可达性的空置减少和Bloem等人的单嵌套定点算法。对于弱自动机。我们研究中出现的新情况非常清楚,混合方法的性能优于纯符号模型检查,而分区的性能通常优于对数编码。结论是,混合方法得益于LTL属性语义编译中的最新技术。从图像计算应用于较小状态集这一事实进一步获得了分区收益。

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