基于腋窝- ARIMA的自适应码率流预测模型

Sankalp Naik, Osama Khan, Ashay Katre, A. Keskar
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引用次数: 2

摘要

随着互联网的蓬勃发展,像自适应比特率流这样的在线流媒体算法已经得到了重视。自适应比特率(ABR)方案使用模型预测控制(MPC)来确定给定网络条件下可能的最佳比特率。该方法虽然效果良好,但其主要缺点是严重依赖吞吐量预测误差,难以在拥塞网络条件下发挥良好的性能。本文还探讨了使用深度学习算法预测带宽的其他方法,如DeepMPC。这些方法比普通的谐波预测器效果更好,但需要较高的计算能力。本文提出了利用自回归综合移动平均技术(ARIMA)预测未来带宽的胳肢窝算法。通过跟踪驱动的实验,我们已经在数学上和实践上证明了腋窝可以在预测和计算方面为我们提供改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ARMPC - ARIMA based prediction model for Adaptive Bitrate Scheme in Streaming
With the boom of the internet, online streaming algorithms such as Adaptive bitrate streaming have gained prominence. The Adaptive Bitrate (ABR) scheme uses the Model Predictive Control (MPC) to determine the best possible bitrate for the given network conditions. Though this method works well, the major disadvantage is its heavy reliance on the throughput prediction error which makes it difficult to perform well in congested network conditions. Other methods such as DeepMPC have also been explored in this paper which use the Deep Learning algorithms to predict the bandwidth. These work better than the trivial harmonic predictor but demand high computational power. This paper proposes ARMPC which uses the Auto-Regressive Integrated Moving Average Technique (ARIMA) to predict the future bandwidth. Using trace-driven experiments, we have shown both mathematically and practically that the ARMPC can provide us with improvements in both the prediction and the computational points of view.
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