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Exploiting Resolution Proofs to Speed Up LTL Vacuity Detection for BMC

机译:利用解决方案证明,以加快BMC的LTL真空检测

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When model-checking reports that a property holds on a model, vacuity detection increases user confidence in this result by checking that the property is satisfied in the intended way. While vacuity detection is effective, it is a relatively expensive technique requiring many additional model-checking runs. We address the problem of efficient vacuity detection for Bounded Model Checking (BMC) of LTL properties, presenting three partial vacuity detection methods based on the efficient analysis of the resolution proof produced by a successful BMC run. In particular, we define a characteristic of resolution proofs - peripherality - and prove that if a variable is a source of vacuity, then there exists a resolution proof in which this variable is peripheral. Our vacuity detection tool, VaqTree, uses these methods to detect vacuous variables, decreasing the total number of model-checking runs required to detect all sources of vacuity.
机译:当模型检查报告的属性保持在模型上时,真空检测通过检查属性以预期方式满足该结果来增加用户信心。虽然真空检测是有效的,但它是一种相对昂贵的技术,需要许多额外的模型检查运行。我们解决了LTL属性的有界模型检查(BMC)的有效阳性检测的问题,提出了三个部分真空检测方法,基于成功的BMC运行产生的分辨率证明的有效分析。特别是,我们定义了分辨率证明 - 外围的特性 - 并证明如果变量是真空的源,则存在该变量是外围设备的分辨率证明。我们的真空检测工具VAQTree使用这些方法来检测空缺变量,降低检测所有真空源所需的模型检查运行总数。

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