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首页> 外文期刊>The Computing Science and Technology International Journal >Neueural-Network-Based Approach on Reliability Prediction of Software in the Maintenance Phase
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Neueural-Network-Based Approach on Reliability Prediction of Software in the Maintenance Phase

机译:基于神经网络的维护阶段软件可靠性预测方法

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摘要

Maintenance of software involves debugging of errors and implementations of enhancement requested by users, these both cause the reliability of software decreased. For the systems that have been used for a considerably long period of time, the various details concerning the initial development phase are usually not known to the users who are responsible for the maintenance of these systems. These cause the estimation of software reliability more difficult. In this paper, a prediction model based on Back-Propagation Neural Network (BPN) is proposed to estimate the failures of the software system in the maintaining phase. The "failure correction" records and the "enhancement" records are chosen as the input data of the prediction model, the future failure time is the output. A numerical example of a commercial Shop Floor Control system (SFC) is used to illustrate the validation and application of the proposed method.
机译:软件的维护涉及错误的调试和用户要求的增强功能的实施,这些都导致软件的可靠性下降。对于已经使用了相当长一段时间的系统,负责维护这些系统的用户通常不了解有关初始开发阶段的各种细节。这些使软件可靠性的估计更加困难。本文提出了一种基于反向传播神经网络的预测模型,以估计软件系统在维护阶段的故障。选择“故障校正”记录和“增强”记录作为预测模型的输入数据,将来的故障时间就是输出。商业车间控制系统(SFC)的数值示例用于说明所提出方法的验证和应用。

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