Forecasting of Traffic Load for 3G Networks Using Conventional Technique

G. Galadanci, Z. A. B. S. Abdullahi
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Abstract

The degrading performance of network coverage, resource allocation, and utilization is due to the rapidly increasing number of cellular subscribers, which is immensely difficult to predict the traffic load in Nigeria. The available developed algorithms and models did not well consider the behavior of the traffic load using the adopted input variables of this research. This paper arguably constructs an Artificial Neural Network (ANN) as Conventional technique to forecast the instantaneous traffic load per cell or eNodeB of 3G networks in Kano Metropolis. Four Active 3G networks data was extracted and recorded with the aid of W995 TEMS Pocket Phone over thirty five cells. The forecasted models when tested apparently tracked the measured traffic load with RMSE of 0.148365%, 0.21878%, 0.3327% and 1.32220%, thus achieved MAPE of 0.00394%, 0.00696%, 0.00109% and 0.03978% for A, B, C and D networks respectively. These validated that the Conventional technique can be a valuable tool in forecasting traffic load in Nigeria and could also be adopted in forecasting of large-scale metropolis cellular networks.
基于常规技术的3G网络流量负荷预测
网络覆盖、资源分配和利用率的下降是由于蜂窝用户数量的迅速增加,这使得预测尼日利亚的流量负荷非常困难。现有的算法和模型没有很好地考虑本研究采用的输入变量的交通负载行为。本文将人工神经网络(Artificial Neural Network, ANN)作为传统的预测方法,对卡诺市3G网络的每小区瞬时流量负荷或eNodeB进行预测。利用W995 TEMS Pocket Phone提取35个小区的4个Active 3G网络数据并进行记录。预测模型的RMSE分别为0.148365%、0.21878%、0.3327%和1.32220%,对A、B、C和D网络的MAPE分别为0.00394%、0.00696%、0.00109%和0.03978%。这些结果验证了传统方法可以作为预测尼日利亚通信量负荷的一种有价值的工具,也可以用于预测大型城域网蜂窝网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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