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WEB SOFTWARE TRAFFIC CHARACTERISTICS AND FAILURE PREDICTION MODEL SELECTION

机译:Web软件流量特性和故障预测模型选择

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In this paper, we analyze web traffic characters and the relationship with software failures. Results indicate hourly web access traffic is the lowest from 3:00 to 4:00 am, while the traffic load gradually reaches peak between 14:00 and 16:00, before declining. In daily base, web traffic fluctuates in the 25 observed days. The hourly access hits appear in similar patterns to the software failures. The web site reliability is 0.9878. The mean time between failures is 82.03 hits. Five popular software reliability models are calibrated with real data. The validations show that Goel-Okumoto and Gompertz models have good predictions to describe web software failures. The coefficient variation analyses for the two selected models show that the models are stable when the values are less than 1.0. Further investigations indicate that both models have some deviations in prediction accuracy starting from the 20th day. Using similar approach to change-point solutions, we recalibrate the models with different parameter values after 20th day. The results appear that two sets of parameter values greatly improve model prediction accuracy.
机译:在本文中,我们分析了Web流量字符和软件故障的关系。结果表明,每小时Web访问流量从3:00到4:00的最低价,而流量负荷在下降之前逐渐达到峰值14:00至16:00之间。在日常基地中,在观察到的日子中,Web流量波动。每小时访问命中率在软件故障中以类似的模式出现。网站可靠性为0.9878。故障之间的平均时间是82.03次点击。五种流行的软件可靠性模型用真实数据校准。验证显示Goel-Okumoto和Gompertz模型具有良好的预测来描述Web软件故障。两个所选模型的系数变化分析表明,当值小于1.0时,模型是稳定的。进一步的调查表明,两种模型在20日开始的预测准确性中具有一些偏差。使用类似的方法来改变点解决方案,我们在第20天后重新校准具有不同参数值的模型。结果似乎两组参数值大大提高了模型预测精度。

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