Modeling and Verification for Probabilistic Properties in Software Product Lines

G. Rodrigues, Vander Alves, Vinicius Nunes, André Lanna, Maxime Cordy, Pierre-Yves Schobbens, Amir Molzam Sharifloo, Axel Legay
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引用次数: 40

Abstract

We propose a model for feature-aware discrete-time Markov chains, called FDTMC, as a basis for verifying probabilistic properties, e.g., Reliability and availability, of product lines. To verify such properties on FDTMC, we compare three techniques. First, we experiment with two different parametric techniques to obtain this formula: the classical one builds it from the model as whole, and a new one that builds it compositionally from a sequence of modules. Finally, we propose a new technique that performs a bounded verification for the whole product line, and thus takes advantage of the high probability of common behaviors of the product line. It computes an approximate formula, represented as an arithmetic decision diagram. Experimental results on a vital signal monitoring system prototype are provided and compared for these techniques aiming at analysing them for scalability issues of size and computational time. They show complementary advantages, and we provide criteria to choose a technique depending on the characteristics of the model.
软件产品线中概率属性的建模与验证
我们提出了一个特征感知的离散时间马尔可夫链模型,称为FDTMC,作为验证产品线的概率属性(例如可靠性和可用性)的基础。为了在FDTMC上验证这些特性,我们比较了三种技术。首先,我们尝试了两种不同的参数化技术来得到这个公式:经典的从整体模型中构建它,而新的从一系列模块中组合构建它。最后,我们提出了一种对整个产品线执行有界验证的新技术,从而利用了产品线共同行为的高概率。它计算一个近似公式,表示为算术决策图。本文给出了一个生命信号监测系统原型的实验结果,并对这些技术进行了比较,旨在分析它们在大小和计算时间上的可扩展性问题。它们表现出互补的优势,我们提供了根据模型特征选择技术的标准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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