Traffic Prediction with Reservoir Computing for Mobile Networks

Pengpeng Yu, Wang Jian-min, Peng Xi-yuan
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引用次数: 1

Abstract

The accurate traffic model and prediction of mobile network plays an important role in network planning. It is particularly important for the performance analysis of mobile networks. The study in this paper concerns predicting the traffic of mobile network, which is essentially nonlinear, dynamic and affected by immeasurable parameters and variables. The accurate analytical model of the traffic of the mobile network can be hardly obtained. Therefore a predicting method based on history input-output using correlation analysis ideas and Reservoir Computing (RC) is proposed. Correlation analysis is used to select proper input variables of the model. Reservoir Computing is a recent research area, in which a random recurrent topology is constructed, and only the weights of connections in a linear output layer is trained. This make it possible to solve complex tasks using just linear post-processing techniques. The proposed model has been verified on the data from network monitoring system in China Mobile Heilongjiang Co. Ltd.
基于库计算的移动网络流量预测
准确的移动网络流量模型和预测在网络规划中起着重要的作用。这对于移动网络的性能分析尤为重要。本文研究的是移动网络流量的预测,其本质上是非线性的、动态的,受不可测量的参数和变量的影响。很难得到准确的移动网络流量分析模型。为此,提出了一种利用相关分析思想和储层计算(RC)的历史输入输出预测方法。通过相关分析选择合适的模型输入变量。油藏计算是近年来的一个研究领域,它构造一个随机循环拓扑,只训练线性输出层中连接的权值。这使得仅使用线性后处理技术就可以解决复杂的任务。该模型已在中国移动黑龙江有限公司网络监控系统的数据上进行了验证。
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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