Modeling and Learning Interaction-based Accidents for Safety-Critical Software Systems

Tariq Mahmood, E. Kazmierczak, T. Kelly, Dennis Plunkett
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引用次数: 3

Abstract

Analyzing accidents is a vital exercise in the development of safety-critical software systems to prevent past accidents from reoccurring in the future. Current practices such as causal event analysis are insufficient in light of a growing trend of accidents involving complex interactions between components with and without the occurrence of failures. Furthermore, the reuse of accident knowledge in current practices relies heavily on human expert recall and interpretation. In this paper, we propose an ontological classification mechanism to acquire and reuse knowledge from past accidents that focuses on the interactions taking place in a system. A set of knowledge bases are constructed independently using a feature-based classification and a domain specific ontology to organize the term spaces of each feature. Similarity mechanisms are introduced to retrieve and integrate the acquired knowledge into the new system analyses. Our experiments show how our approach reuses accident knowledge to uncover potential safety concerns in future safety analysis that may otherwise have been incorrectly classified in traditional approaches.
安全关键软件系统中基于交互的事故建模与学习
分析事故是开发安全关键软件系统的一项重要工作,可以防止过去的事故在未来再次发生。目前的做法,如因果事件分析是不够的,鉴于事故的日益增长的趋势,涉及复杂的相互作用的组件,有或没有发生故障。此外,在目前的实践中,事故知识的重用严重依赖于人类专家的回忆和解释。在本文中,我们提出了一种本体论分类机制,以获取和重用来自过去事故的知识,重点关注系统中发生的交互。使用基于特征的分类和特定领域本体来组织每个特征的术语空间,独立构建一组知识库。引入相似机制来检索和整合获得的知识到新的系统分析中。我们的实验表明,我们的方法可以重用事故知识,在未来的安全分析中发现潜在的安全问题,否则传统方法可能会被错误地分类。
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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