一种自适应小波网络预测框架

Srikant Nalatwad, M. Devetsikiotis
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引用次数: 3

摘要

本文提出了一种基于多分辨率分解的流量预测器,用于局部控制自规模网络的自适应带宽控制。自规模网络可以利用在线流量数据自动、自适应地分配链路/交换机容量,为流量聚合提供定量的包级QoS。在Internet等本地控制的网络中,资源分配决策是在节点级别做出的。我们证明了基于小波的自适应带宽控制方法比其他流行的方法如高斯预测器在这种应用中表现得更好。我们比较了不同正交正交小波的性能,发现哈尔小波最适合于交通预测。我们还研究了其他小波参数如窗口大小和滤波系数的数目对图像的影响。我们还提出了一种新的自适应小波预测器,它能很好地适应传入突发流量的变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A framework for adaptive wavelet prediction in self-sizing networks
In this paper, we propose a traffic predictor based on multiresolution decomposition for the adaptive bandwidth control in locally controlled self-sizing networks. A self-sizing network can provide quantitative packet-level QoS to aggregate traffic by allocating link/switch capacity automatically and adaptively using online traffic data. In a locally controlled network such as Internet, resource allocation decisions are made at the node level. We show that wavelet based adaptive bandwidth control method performs better than other popular methods like Gaussian predictor for such applications. We have compared the performance of different ortho-normal wavelets and found that Haar wavelet is best suited for traffic prediction. We have studied the effect of other wavelet parameters such as size of the window and number of filter coefficients. We also propose a novel adaptive wavelet predictor which can adapt very well to the changes of incoming bursty traffic.
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