A Novel Software Reliability Growth Model of Safety-critical Software Considering Fault Severity Classification

Chao Guo, Shuqiao Zhou, Jianghai Li, Fan Chen, Duo Li, Xiaojin Huang
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引用次数: 2

Abstract

The safety-critical software of Reactor Protection System (RPS) plays a significant role for the safe operation of the nuclear power plant (NPP). However, it also brings challenges both to the reliability analysis of the RPS and to the Probabilistic Risk Assessment of the NPPs. The reliability analysis of safety-critical software is also expected by the nuclear regulation agencies and the software development groups for test evaluation and optimization. The detected faults during the software test process are regarded to have close connection with the software reliability and there have been hundreds of test-based software reliability models. Due to the particularity of its function, the safety-critical software of an NPP is especially sensitive to the faults with higher severity levels which should be paid special attention to. Severity levels of faults are commonly taken into account during software reliability modelling. In this paper, a novel software reliability growth model considering actual severity data was built based on a non-homogeneous Poisson process. Ratio of fatal faults with highest severity level to all accumulated faults was modelled with logistic curve. Then the mean value functions of both fatal and general faults were derived. A belief factor was employed to describe the trend of severity classification. In the end, the test data of a practical project was used to verify this model. The analysis results showed that this model had better prediction effect than Goel-Okumoto model and Inflection S-shaped model even when limited test data were collected. This novel model can be used as a helpful tool to evaluate both the reliability and the release time of the safety-critical software of an NPP.
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一种考虑故障严重性分类的安全关键型软件可靠性增长模型
反应堆保护系统(RPS)的安全关键软件对核电厂的安全运行起着重要的作用。然而,这也给核电厂的可靠性分析和概率风险评估带来了挑战。核管理机构和软件开发小组也期望对安全关键软件进行可靠性分析,以进行测试评估和优化。软件测试过程中检测到的故障被认为与软件的可靠性有着密切的联系,基于测试的软件可靠性模型已有数百种。核电厂安全关键软件由于其功能的特殊性,对严重程度较高的故障尤为敏感,应引起高度重视。在软件可靠性建模过程中,通常要考虑故障的严重程度。本文基于非齐次泊松过程,建立了一种考虑实际严重性数据的软件可靠性增长模型。用logistic曲线对严重程度最高的致命故障与所有累积故障的比值进行建模。然后分别推导了致命故障和一般故障的均值函数。采用信念因子描述严重程度分类的趋势。最后,通过一个实际工程的测试数据对该模型进行了验证。分析结果表明,在有限的试验数据下,该模型的预测效果优于Goel-Okumoto模型和Inflection s型模型。该模型可作为评价核电站安全关键软件可靠性和发布时间的有用工具。
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