Early Software Reliability Prediction with ANN Models

Q. Hu, M. Xie, S. Ng
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引用次数: 14

Abstract

It is well-known that accurate reliability estimates can be obtained by using software reliability models only in the later phase of software testing. However, prediction in the early phase is important for cost-effective and timely management. Also this requirement can be achieved with information from previous releases or similar projects. This basic idea has been implemented with nonhomogeneous Poisson process (NHPP) models by assuming the same testing/debugging environment for similar projects or successive releases. In this paper we study an approach to using past fault-related data with artificial neural network (ANN) models to improve reliability predictions in the early testing phase. Numerical examples are shown with both actual and simulated datasets. Better performance of early prediction is observed compared with original ANN model with no such historical fault-related data incorporated. Also, the problem of optimal switching point from the proposed approach to original ANN model is studied, with three numerical examples
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基于人工神经网络模型的早期软件可靠性预测
众所周知,只有在软件测试的后期阶段才能通过使用软件可靠性模型获得准确的可靠性估计。然而,早期阶段的预测对于具有成本效益和及时的管理很重要。这个需求也可以通过以前的版本或类似项目的信息来实现。这一基本思想已经在非同构泊松过程(NHPP)模型中实现,它假定对类似的项目或连续的版本使用相同的测试/调试环境。在本文中,我们研究了一种利用过去的故障相关数据与人工神经网络(ANN)模型来提高早期测试阶段可靠性预测的方法。给出了实际数据集和模拟数据集的数值算例。与未纳入此类历史故障相关数据的原始神经网络模型相比,早期预测的性能更好。同时,通过三个数值算例,研究了从所提方法到原神经网络模型的最优切换点问题
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