基于小波和样条外推的多媒体流量预测

I. Strelkovskaya, I. Solovskaya, A. Makoganiuk, T. Rodionova
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引用次数: 4

摘要

考虑了具有大量脉动和长期依赖特性的物联网网络对象的自相似流量预测任务,这给实际预测带来了困难。采用基于haar -小波、二次和b样条函数的小波和样条外推方法,对多媒体流量进行了预测。我们比较了基于haar小波的流量预测结果和基于小波和样条外推的二次和b样条函数的流量预测结果。这将允许选择一种或另一种外推方法来提高预测的准确性,同时确保可扩展性和将其用于各种物联网应用的能力,以防止网络过载。
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Multimedia Traffic Prediction Based on Wavelet-and Spline-extrapolation
The task of predicting self-similar traffic of IoT network objects with a significant number of pulsations and the property of long-term dependence is considered, which makes it difficult to predict in practice. Using the methods of wavelet- and spline-extrapolation based on Haar-wavelet, quadratic and B-spline function, the results of prediction of multimedia traffic are obtained. We compare the results of traffic prediction based on the Haar-wavelet and the quadratic and B-spline function using wavelet- and spline-extrapolation. This will allow the choice of one or another extrapolation method to improve the accuracy of the prediction, while ensuring scalability and the ability to use it for various IoT applications to prevent network overloads.
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