SAFEST: Fault Tree Analysis Via Probabilistic Model Checking

Matthias Volk, Falak Sher, J. Katoen, M. Stoelinga
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Abstract

This paper presents SAFEST, a powerful tool for modelling and analyzing both static and dynamic fault trees. Dynamic fault trees (DFTs) extend standard fault trees by providing support for faithfully modelling spare management, functional dependencies, and order-dependent failures. The SAFEST tool provides efficient and powerful analysis of DFTs via probabilistic model checking – a rigorous, automated analysis technique for probabilistic systems. The backbone of the analysis is based on efficient state space generation. Several optimization techniques are incorporated, such as exploiting irrelevant failures, symmetries, and independent modules. Probabilistic model checking allows to analyze the resulting state space with respect to a wide range of measures of interest. In addition, an approximation approach is provided that builds only parts of the state space and allows to iteratively refine the computations up to the desired accuracy. The SAFEST tool provides a graphical user interface for creating, generating, simulating, and simplifying fault trees as well as visualizing the results from the fault tree analysis. SAFEST is state of the art for DFT analysis, as demonstrated by an experimental evaluation and comparison with existing tools. In addition, SAFEST and DFT models have been applied in a variety of case studies, including vehicle guidance systems, train operations in railway station areas, and energy systems such as (nuclear) power plants.
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SAFEST:通过概率模型检查进行故障树分析
本文介绍的 SAFEST 是一种功能强大的工具,用于建模和分析静态和动态故障树。动态故障树(DFT)对标准故障树进行了扩展,支持对备用管理、功能依赖性和顺序依赖性故障进行忠实建模。SAFEST 工具通过概率模型检查(一种针对概率系统的严格自动分析技术)对 DFT 进行高效而强大的分析。分析的基础是高效的状态空间生成。该系统采用了多项优化技术,如利用无关故障、对称性和独立模块。通过概率模型检查,可以对生成的状态空间进行分析,以衡量各种相关指标。此外,它还提供了一种近似方法,只构建部分状态空间,并允许迭代改进计算,以达到所需的精度。SAFEST 工具提供了一个图形用户界面,用于创建、生成、模拟和简化故障树,以及可视化故障树分析的结果。通过实验评估和与现有工具的比较,SAFEST 是目前最先进的 DFT 分析工具。此外,SAFEST 和 DFT 模型已应用于各种案例研究,包括车辆制导系统、火车站区域的列车运行以及(核)发电厂等能源系统。
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