基于随机微分方程的软件可靠性增长模型置信区间估计

Chih-Chiang Fang, Chun-Wu Yeh
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引用次数: 4

摘要

该研究开发了一个具有置信区间的软件可靠性增长模型(SRGM),为软件开发人员决定最佳软件发布时间和改进软件测试任务的质量提供了有用的信息。本文发展的SRGM是基于随机演算来推导均值函数在不同置信水平下的置信区间。由于在大多数软件可靠性增长模型中对累积软件误差的均值函数的方差解释不清楚,它可能不能有效地推导关于均值函数的置信区间。因此,软件开发人员无法估计软件可靠性中可能存在的风险变化,这可能会降低实际应用的价值。本研究利用随机微分方程的方法,结合Goel和Okumoto的模型(1979)、Yamada的延迟s型模型(1983)、Ohba的Inflection s型模型(1984)、Yamada的指数模型(1992)、Chiu和Haung的学习效应模型(2008)等5个经典模型,构建具有置信区间的SRGM,帮助软件开发人员在不同置信水平下确定最优发布时间。对于软件故障现象,本文将其假设为非齐次泊松过程(Non-homogeneous Poisson Process, NHPP)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Confidence interval estimation of software reliability growth models derived from stochastic differential equations
The study develops a software reliability growth model (SRGM) with confidence intervals that provides software developers useful information to decide the optimal software release time and to refine the quality of software testing tasks. The developed SRGM of this study is based on stochastic calculus to deduce the confidence intervals of the mean value function at different confidence level. Owing to less clear explanation of the variance in the mean value function of cumulative software errors in most software reliability growth models, it might not be effective in deducing the confidence interval concerning the mean value function. Therefore, software developers cannot estimate the possible risk variation in software reliability, and it might diminish the value of practical applications. In this study, we utilize the method of stochastic differential equations and five classic models (Goel and Okumoto's model (1979), Yamada's Delayed S-shaped model (1983), Ohba's Inflection S-shaped model (1984), Yamada's exponential model (1992), Chiu and Haung's learning effect model (2008)) to build the SRGM with confidence intervals that can assist the software developers in determining the optimal release times at different confidence levels. With regard to the software failure phenomena, they were supposed as Non-homogeneous Poisson Process (NHPP) in this study.
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