Combining Software Quality Analysis with Dynamic Event/Fault Trees for High Assurance Systems Engineering

J. Dugan, Ganesh J. Pai, H. Xu
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引用次数: 11

Abstract

We present a novel approach for probabilistic risk assessment (PRA) of systems which require high assurance that they will function as intended. Our approach uses a new model i.e., a dynamic event/fault tree (DEFT) as a graphical and logical method to reason about and identify dependencies between system components, software components, failure events and system outcome modes. The method also explicitly includes software in the analysis and quantifies the contribution of the software components to overall system risk/ reliability. The latter is performed via software quality analysis (SQA) where we use a Bayesian network (BN) model that includes diverse sources of evidence about fault introduction into software; specifically, information from the software development process and product metrics. We illustrate our approach by applying it to the propulsion system of the miniature autonomous extravehicular robotic camera (mini-AERCam). The software component considered for the analysis is the related guidance, navigation and control (GN&C) component. The results of SQA indicate a close correspondence between the BN model estimates and the developer estimates of software defect content. These results are then used in an existing theory of worst-case reliability to quantify the basic event probability of the software component in the DEFT.
将软件质量分析与动态事件/故障树相结合用于高保证系统工程
我们提出了一种新的方法的概率风险评估(PRA)的系统,这需要高度保证,他们将发挥预期的作用。我们的方法使用了一种新的模型,即动态事件/故障树(DEFT)作为一种图形化和逻辑化的方法来推理和识别系统组件、软件组件、故障事件和系统结果模式之间的依赖关系。该方法还明确地将软件包括在分析中,并量化软件组件对整个系统风险/可靠性的贡献。后者通过软件质量分析(SQA)执行,其中我们使用贝叶斯网络(BN)模型,该模型包含有关软件故障引入的各种证据来源;特别是,来自软件开发过程和产品度量的信息。我们通过将其应用于微型自主舱外机器人相机(mini-AERCam)的推进系统来说明我们的方法。用于分析的软件组件是相关制导、导航和控制(GN&C)组件。SQA的结果表明,BN模型估计和开发人员对软件缺陷内容的估计之间存在密切的对应关系。然后将这些结果用于现有的最坏情况可靠性理论中,以量化DEFT中软件组件的基本事件概率。
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