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Evaluating long-term predictive power of standard reliability growth models on automotive systems

机译:评估标准可靠性增长模型在汽车系统上的长期预测能力

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Software is today an integral part of providing improved functionality and innovative features in the automotive industry. Safety and reliability are important requirements for automotive software and software testing is still the main source of ensuring dependability of the software artifacts. Software Reliability Growth Models (SRGMs) have been long used to assess the reliability of software systems; they are also used for predicting the defect inflow in order to allocate maintenance resources. Although a number of models have been proposed and evaluated, much of the assessment of their predictive ability is studied for short term (e.g. last 10% of data). But in practice (in industry) the usefulness of SRGMs with respect to optimal resource allocation depends heavily on the long term predictive power of SRGMs i.e. much before the project is close to completion. The ability to reasonably predict the expected defect inflow provides important insight that can help project and quality managers to take necessary actions related to testing resource allocation on time to ensure high quality software at the release. In this paper we evaluate the long-term predictive power of commonly used SRGMs on four software projects from the automotive sector. The results indicate that Gompertz and Logistic model performs best among the tested models on all fit criterias as well as on predictive power, although these models are not reliable for long-term prediction with partial data.
机译:今天,软件已成为在汽车行业中提供改进的功能和创新功能的重要组成部分。安全性和可靠性是汽车软件的重要要求,并且软件测试仍然是确保软件工件可靠性的主要来源。软件可靠性增长模型(SRGM)长期以来一直用于评估软件系统的可靠性。它们还用于预测缺陷流入,以分配维护资源。尽管已经提出并评估了许多模型,但短期内(例如,数据的最后10%)研究了对它们的预测能力的许多评估。但是在实践中(工业界),SRGM在最佳资源分配方面的实用性在很大程度上取决于SRGM的长期预测能力,即在项目接近完成之前。合理地预测预期的缺陷流入的能力提供了重要的见解,可以帮助项目和质量经理及时采取与测试资源分配有关的必要措施,以确保发布时具有高质量的软件。在本文中,我们评估了常用SRGM在汽车领域四个软件项目上的长期预测能力。结果表明,在所有拟合标准以及预测能力上,Gompertz和Logistic模型在测试模型中表现最佳,尽管这些模型对于使用部分数据进行长期预测并不可靠。

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