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Multistep ahead prediction for real-time VBR video traffic using deterministic echo state network

机译:使用确定性回波状态网络进行实时VBR视频流量的多步提前预测

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Variable bit rate (VBR) video traffic, exhibiting high self-similarity and burstiness, has been a major traffic component in high speed network. However, its complex bit rate distribution makes VBR video traffic prediction, especially multistep ahead prediction, very difficult. Recently, deterministic echo state network with adjacent-feedback loop reservoir structure (ALR) was proved to have high prediction accuracy, good memory capacity, and simple structure. In the paper, we apply ALR to real-time VBR video traffic prediction. The proposed scheme makes use of loop reservoir with identity activation function to conduct sample learning in high dimension states. Experimental results show that the simplified ALR scheme can effectively capture dynamic characteristics of VBR video traffic with less training time. Its multistep prediction accuracy is improved by 2% on average, compared with the neural network based on multi-resolution learning.
机译:具有高自相似性和突发性的可变比特率(VBR)视频流量已成为高速网络中的主要流量组成部分。但是,其复杂的比特率分布使VBR视频流量预测(尤其是多步提前预测)非常困难。近年来,具有相邻反馈回路库结构(ALR)的确定性回波状态网络被证明具有较高的预测精度,良好的存储容量和简单的结构。在本文中,我们将ALR应用于实时VBR视频流量预测。所提出的方案利用具有身份激活功能的循环容器在高维状态下进行样本学习。实验结果表明,简化的ALR方案可以在较少训练时间的情况下有效捕获VBR视频流量的动态特征。与基于多分辨率学习的神经网络相比,其多步预测准确性平均提高了2%。

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