Software reliability growth model of reactor protection system based on ratio analysis of critical faults

Chao Guo, Shuqiao Zhou, Duo Li
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引用次数: 2

Abstract

The application of digital instrumentation and control systems in Nuclear Power Plants (NPPs) provides a series of advantages, but it also raises challenges in the reliability analysis of safety-critical systems in the NPPs. Software testing is one of the most significant processes to assure software reliability, and the safety-critical systems of NPPs are sensitive to the severity of software faults, especially the critical faults that infect the system function greatly. Previous software reliability models related to the analysis of fault severity were mostly based on the assumption of different severities. In this paper, the fault severity data collected during the software test process were used for modeling the test process with a Software Reliability Growth Model based on a non-homogeneous Poisson process. The mean value function was derived by considering the ratios of critical and non-critical faults and was named as “Ratio of Critical-Faults model” (RCF model). The fault data collected while developing the safety-critical system were used to validate this model. According to the analysis, RCF model had fitting abilities similar to that of the Goel-Okumoto model and Inflection S-shaped model whereas the prediction effect of the RCF model was better than that of these two models, especially when little data were collected, which could be used to determine the release time of the software.
基于临界故障比率分析的电抗器保护系统软件可靠性增长模型
数字仪表与控制系统在核电站中的应用带来了一系列优势,但也对核电站安全关键系统的可靠性分析提出了挑战。软件测试是保证软件可靠性的重要环节之一,核电站安全关键型系统对软件故障的严重程度非常敏感,尤其是对系统功能影响较大的关键故障。以往与故障严重程度分析相关的软件可靠性模型大多基于不同严重程度的假设。本文利用软件测试过程中收集的故障严重程度数据,建立了基于非齐次泊松过程的软件可靠性增长模型,对测试过程进行建模。通过考虑临界故障与非临界故障的比例,推导出该模型的均值函数,并将其命名为“临界故障比模型”(RCF模型)。在开发安全关键系统过程中收集的故障数据用于验证该模型。分析表明,RCF模型的拟合能力与Goel-Okumoto模型和Inflection s型模型相似,但RCF模型的预测效果优于这两种模型,特别是在数据采集较少的情况下,可以用来确定软件的发布时间。
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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