Hybrid Statistical Model Checking Technique for Reliable Safety Critical Systems

Young Joo Kim, Moonzoo Kim
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引用次数: 10

Abstract

Reliability of safety critical systems such as nuclear power plants and automobiles has become a significant issue to our society. As more computing systems are utilized in these safety critical systems, there are high demands for verification and validation (V&V) techniques to assure the reliability of such complex computing systems. However, as the complexity of computing systems increases, conventional V&V techniques such as testing and model checking have limitations, since such systems often control highly complex continuous dynamics. To improve the reliability of such systems, statistical model checking (SMC) techniques have been proposed. SMC techniques can check if a target system satisfies given requirements through statistical methods. In this paper, we propose a new hybrid SMC technique that integrates sequential probability ratio test (SPRT) technique and Bayesian interval estimation testing (BIET) technique to achieve precise verification results quickly. In our experiment, the new hybrid SMC was up to 20% faster than BIET. In addition, we demonstrate the effectiveness and efficiency of this hybrid SMC technique by applying the hybrid SMC technique to three safety critical systems in the automobile domain.
可靠安全关键系统的混合统计模型检验技术
核电站、汽车等安全关键系统的可靠性已成为当今社会的一个重要问题。随着这些安全关键系统中使用的计算系统越来越多,对验证和验证(V&V)技术提出了很高的要求,以确保这些复杂计算系统的可靠性。然而,随着计算系统复杂性的增加,传统的V&V技术(如测试和模型检查)具有局限性,因为此类系统通常控制高度复杂的连续动态。为了提高这类系统的可靠性,统计模型检验(SMC)技术被提出。SMC技术可以通过统计方法检查目标系统是否满足给定的要求。本文提出了一种新的混合SMC技术,该技术将序列概率比测试(SPRT)技术和贝叶斯区间估计测试(BIET)技术相结合,可以快速获得精确的验证结果。在我们的实验中,新的混合SMC比BIET快20%。此外,通过将混合SMC技术应用于汽车领域的三个安全关键系统,验证了混合SMC技术的有效性和高效性。
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