A New Paradigm for Software Reliability Modeling – From NHPP to NHGP

Tomotaka Ishii, T. Dohi
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引用次数: 11

Abstract

Non-homogeneous gamma process (NHGP) models with typical reliability growth patterns are developed for software reliability assessment in order to overcome a weak point of the usual non-homogeneous Poisson process (NHPP) models. Though the analytical treatment of NHGPs as stochastic point processes is not so easy in general, they have an advantage to involve the NHPPs as well as a gamma renewal process as special cases, and are rather tractable on parameter estimation by means of the method of maximum likelihood. We perform the goodness-of fit test for several NHGP-based software reliability models (SRMs) and compare them with the existing NHPP-based ones. Throughout a numerical example with a real software fault data, it is shown that the NHGP-based SRMs can provide the better goodness-of-fit performances in earlier testing phases than the NHPP-based ones, but approach to them gradually as the testing time goes on. This implies that our new software reliability modeling framework with flexibility can describe better the software-fault detection phenomenon when the less information on software fault data is available.
软件可靠性建模的新范式——从NHPP到NHGP
为了克服非齐次泊松过程(NHPP)模型的缺点,提出了具有典型可靠性增长模式的非齐次伽玛过程(NHGP)模型用于软件可靠性评估。虽然将nhgp作为随机点过程进行解析处理一般不太容易,但其优点是可以将nhgp和gamma更新过程作为特殊情况进行处理,并且使用极大似然方法进行参数估计也比较容易处理。本文对几种基于nhpp的软件可靠性模型进行了拟合优度检验,并与现有的基于nhpp的软件可靠性模型进行了比较。通过一个实际软件故障数据的数值算例表明,基于nhpp的SRMs在早期测试阶段具有比基于nhpp的SRMs更好的拟合优度,但随着测试时间的推移,两者的拟合优度逐渐接近。这意味着我们的软件可靠性建模框架具有灵活性,可以更好地描述软件故障数据信息较少时的软件故障检测现象。
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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