On proactive caching with demand and channel uncertainties

L. S. Muppirisetty, John Tadrous, A. Eryilmaz, H. Wymeersch
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引用次数: 14

Abstract

Mobile data traffic has surpassed that of voice to become the main component of the system load of today's wireless networks. Recent studies indicate that the data demand patterns of mobile users are predictable. Moreover, the channel quality of mobile users along their navigation paths is predictable by exploiting their location information. This work aims at fusing the statistically predictable demand and channel patterns in devising proactive caching strategies that alleviate network congestion. Specifically, we establish a fundamental bound on the minimum possible cost achievable by any proactive scheduler under time-invariant demand and channel statistics as a function of their prediction uncertainties, and develop an asymptotically optimal proactive service policy that attains this bound as the prediction window grows. In addition, the established bound yields insights on how the demand and channel statistics affect proactive caching decisions. We reveal some of these insights through numerical investigations.
关于需求和通道不确定的主动缓存
移动数据流量已经超过语音流量,成为当今无线网络系统负载的主要组成部分。最近的研究表明,移动用户的数据需求模式是可预测的。此外,利用移动用户的位置信息,可以预测其导航路径上的信道质量。这项工作旨在融合统计上可预测的需求和通道模式,以设计缓解网络拥塞的主动缓存策略。具体地说,我们建立了在定常需求和信道统计的情况下,任何主动调度器可实现的最小可能成本的基本界,作为其预测不确定性的函数,并开发了一个随着预测窗口的增长而达到该界的渐近最优主动服务策略。此外,已建立的绑定可以深入了解需求和通道统计信息如何影响主动缓存决策。我们通过数值研究揭示了其中的一些见解。
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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