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Prediction of mobile networks traffic: enhancement of the NMLS technique

机译:移动网络流量的预测:NMLS技术的增强

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摘要

The today networks evolution requires the prediction of traffic demand in order to efficiently use the available resources. The traffic load prediction can be exploited to dynamically allocate the network resources among the different users that, in the 5G world, can be the different verticals. In this scenario, we analyse the application of classical time series predictors to the mobile network traffic in order to evaluate the performance of the considered approaches in terms of complexity and prediction accuracy. Furthermore, we propose an enhancement to the classical Normalized Least Mean Square (NMLS) in order to increase its prediction accuracy, with a negligible complexity increase. The enhancement is based on the application of the Chebyshev’s inequality to estimate the prediction error bound. This statistical bound is used to correct the prediction error. The simulation analysis shows the performance improvements given by the proposed scheme.
机译:当今的网络演进要求对流量需求进行预测,以便有效地使用可用资源。可以利用流量负载预测来在5G世界中可能是不同垂直行业的不同用户之间动态分配网络资源。在这种情况下,我们分析了经典时间序列预测器在移动网络流量中的应用,以便从复杂性和预测准确性方面评估所考虑方法的性能。此外,我们提出了对经典归一化最小均方(NMLS)的增强,以提高其预测精度,而复杂度的增加可以忽略不计。增强功能基于Chebyshev不等式的应用来估计预测误差范围。该统计界限用于校正预测误差。仿真分析表明,该方案可以提高性能。

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