猎户座:一种基于引导的形式化验证的状态空间搜索方向修剪技术

S. VineeshV., Binod Kumar, Rushikesh Shinde, Akshay Jaiswal, Harsh Bhargava, Virendra Singh
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引用次数: 2

摘要

由于不同的可扩展性问题,大型设计的模型检查是一项具有挑战性的任务。在本文中,我们的目标是利用引导状态空间遍历来解决这个问题。然而,为复杂设计的状态空间遍历提供指导也是一个同样具有挑战性的问题。我们采用基于仿真的策略结合贝叶斯建模方法来寻找状态空间遍历的有效引导提示。基于启发式的设计结构依赖会产生无效的引导提示,需要进一步过滤。为了剔除无效的指导提示,我们首先从设计的静态分析中生成模块级子属性。在约束随机试验台生成的仿真轨迹中,对这些子属性和基于结构依赖的制导提示进行了分析。这些子属性和引导提示的条件出现是贝叶斯模型的输入,然后贝叶斯模型可以为我们提供具有最高盈利能力的引导提示。利用所提出的方法,我们成功地修剪了无用的引导提示集,并获得了有效的搜索方向,然后用于辅助模型检查过程。在两种不同属性的复杂设计上进行的实验表明,该方法在减少模型检查时的CPU时间方面是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Orion: A Technique to Prune State Space Search Directions for Guidance-Based Formal Verification
Model checking of large designs is a challenging task because of different scalability issues. In this paper, we aim to utilize guided state space traversal to address this issue. However, providing guidance for state space traversal of complex designs is also an equally challenging problem. We adopt a simulation-based strategy combined with Bayesian modelling approach for finding effective guidance hints for state space traversal. A heuristic-based structural dependency of the design yields ineffective guidance hints which need further of filtering. To prune out the ineffective guidance hints, we first generate module-level sub-properties from static analysis of the design. These sub-properties and structural dependency-based guidance hints are analyzed in simulation traces generated from the constrained-random test benches. These conditional occurrence of sub-properties and guidance hints are inputs to a Bayesian model which can then provide us the guidance hints with the highest profitability. With the proposed methodology, we succeed in pruning out the set of unprofitable guidance hints and obtain effective search directions which are then used to assist the model checking procedure. Experiments on two complex designs for different properties show the effectiveness of the proposed methodology in reducing CPU time during model checking.
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