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Forecasting formulation model for amount of fault of the CPE segment on broadband network PT. Telkom using ARIMA method

机译:宽带网络PT上CPE网段故障量的预测公式模型。电信公司使用ARIMA方法

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Currently, there is no forecasting activities undertaken within the PT. Telkom to predict Fault will occur in the broadband network, which prevents fault broadband networks are still focused on the process of correction, on the other hand, the accuracy of a prediction is the value that determines the quality of the model or algorithm is run that prediction. The results determine the accuracy of prediction and prevention process, this involves time and costs [1J. There are several methods for predicting fault will occur in broadband networks, among others; GARCH, ARM A, ARIMA [1], Kalman Filter and Hidden Markov [2J. These methods are methods autoregresi and nonlinear time series [1], the methods used in this research is the method ARIMA (Autoregressive Integrated Moving Average). This method was chosen because the CMSE (Cumulative Mean Square Error) value of this method is the most excellent [1] [2J. In the Broadband Network PT Telkom, 61.7% occurred in the segment disorders CPE (Customer Premise Equipment). Find a formulation to predict the amount of fault that would occur per type of disturbance in this segment with the aid of ARIMA method It will help to prepare a good resource skills, knowledge and cost in prevention activities, improving the quality of CPE devices and improve service quality PT Telkom. This research was conducted with the order or lag monthly data, run two scenarios, first; 24 observation data lag with 12 forecast lag, second; 30 observation data lag and 6 lag forecasts. This research resulted in the value of AR = 4, d = 1 and MA = 5. It appears that more observation data and the shorter lag forecast, then the results produced ARIMA will be more accurate. This can be seen in comparison error deviation and/or CMSE for each scenario.
机译:当前,PT中没有进行任何预测活动。 Telkom预测故障将在宽带网络中发生,这阻止了故障宽带网络仍然集中在校正过程上,另一方面,预测的准确性是决定模型或算法运行质量的值预言。结果决定了预测和预防过程的准确性,这涉及时间和成本[1J。有几种方法可以预测宽带网络中将发生的故障,其中包括: GARCH,ARM A,ARIMA [1],卡尔曼滤波器和隐马尔可夫[2J。这些方法是自动调整和非线性时间序列方法[1],本研究中使用的方法是ARIMA(自回归综合移动平均线)方法。选择该方法是因为该方法的CMSE(累积均方误差)值是最出色的[1] [2J]。在宽带网络PT Telkom中,有61.7%发生在网段疾病CPE(客户内部设备)中。借助ARIMA方法,找到一种公式来预测此段中每种干扰类型将发生的故障量。它将有助于在预防活动中准备好的资源技能,知识和成本,提高CPE设备的质量并改善服务质量PT Telkom。这项研究是使用有序或滞后的月度数据进行的,首先运行两个方案。 24个观测数据滞后,12个预测滞后,第二; 30个观测数据滞后和6个滞后预测。这项研究得出了AR = 4,d = 1和MA = 5的值。看来,更多的观测数据和更短的滞后预测,那么ARIMA产生的结果将更加准确。在每种情况下的比较误差偏差和/或CMSE中可以看出这一点。

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