A Bayesian Network Approach to Estimating Software Reliability of RSG-GAS Reactor Protection System

IF 0.6 Q4 NUCLEAR SCIENCE & TECHNOLOGY
S. Santoso, S. Bakhri, J. Situmorang
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引用次数: 3

Abstract

Reliability represents one of the most important attributes of software quality. Assessing the reliability of software embedded in the safety of high ly critical systems is essential. Unfortunately, there are many factors influencing software reliability that cannot be measured directly. Furthermore, the existing models and approaches for assessing software reliability have assumptions and limitations which are not directly acceptable for all systems, such as reactor protection systems. This paper presents the result of a study which aims to conduct quantitative assessment of the software reliability at the reactor protection system (RPS) of RSG-GAS based on software development life cycle. A Bayesian network (BN) is applied in this research and used to predict the software defect in the operation which represents the software reliability. The availability of operation failure data, characteristics of the RPS components and their operation features, prior knowledge on the software development and system reliability, as well as relevant finding from references were considered in the assessment and the construction of nodes on causal network model. The structure of causal model consists of eight nodes including design quality, problem complexity, and defect inserted in the software. The calculation result using Agenarisk software revealed that software defect in the operation of RPS follows binomial statistic distribution with the mean of 1 . 393. This number indicated the high software maturity level and high capability of the organization. T he improvement of software defect concentration range on the posterior distribution compared with the prior’s is also identified . The result achieved is valuable for further reliability estimation by introducing new evidence and experience data, and by setting up an appropriate plan in order to enhance software reliability in the RPS.
估算RSG-GAS反应堆保护系统软件可靠性的贝叶斯网络方法
可靠性是软件质量最重要的属性之一。评估嵌入高关键系统安全性的软件的可靠性至关重要。不幸的是,有许多影响软件可靠性的因素无法直接衡量。此外,用于评估软件可靠性的现有模型和方法具有并非所有系统(如反应堆保护系统)都能直接接受的假设和限制。本文介绍了一项研究的结果,该研究旨在基于软件开发生命周期对RSG-GAS反应堆保护系统(RPS)的软件可靠性进行定量评估。在本研究中,应用贝叶斯网络(BN)来预测操作中的软件缺陷,该缺陷代表了软件的可靠性。在因果网络模型节点的评估和构建中,考虑了运行故障数据的可用性、RPS组件的特性及其运行特性、软件开发和系统可靠性的先验知识以及参考文献中的相关发现。因果模型的结构由八个节点组成,包括设计质量、问题复杂性和软件中插入的缺陷。使用Agentarisk软件的计算结果表明,RPS操作中的软件缺陷遵循二项统计分布,平均值为1。393.这一数字表明该组织的软件成熟度高,能力强。与先前的相比,软件缺陷集中范围在后验分布上的改进也被确定。通过引入新的证据和经验数据,并通过制定适当的计划来提高RPS中的软件可靠性,所取得的结果对于进一步的可靠性估计是有价值的。
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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来源期刊
Atom Indonesia
Atom Indonesia NUCLEAR SCIENCE & TECHNOLOGY-
CiteScore
1.00
自引率
0.00%
发文量
20
审稿时长
16 weeks
期刊介绍: The focus of Atom Indonesia is research and development in nuclear science and technology. The scope of this journal covers experimental and analytical research in nuclear science and technology. The topics include nuclear physics, reactor physics, radioactive waste, fuel element, radioisotopes, radiopharmacy, radiation, and neutron scattering, as well as their utilization in agriculture, industry, health, environment, energy, material science and technology, and related fields.
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