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Toward Smart and Cooperative Edge Caching for 5G Networks: A Deep Learning Based Approach

机译:面向5G网络的智能协作边缘缓存:一种基于深度学习的方法

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The emerging 5G mobile networking promises ultrahigh network bandwidth and ultra-low communication latency (<;1ms), benefiting a wide range of applications, including live video streaming, online gaming, virtual and augmented reality, and Vehicle-to-X, to name but a few. The backbone Internet, however, does not keep up, particularly in latency (>100ms), due to its store-and-forward design and the physical barrier from signal propagation speed, not to mention congestion that frequently happens. Caching is known to be effective to bridge the speed gap, which has become a critical component in the 5G deployment as well. Besides storage, 5G base stations (BSs) will also be powered with strong computing modules, offering mobile edge computing (MEC) capability. This paper explores the potentials of edge computing towards improving the cache performance, and we envision a learning-based framework that facilitates smart caching beyond simple frequency- and time-based replace strategies and cooperation among base stations. Within this framework, we develop DeepCache, a deep-learning-based solution to understand the request patterns in individual base stations and accordingly make intelligent cache decisions. Using mobile video, one of the most popular applications with high traffic demand, as a case, we further develop a cooperation strategy for nearby base stations to collectively serve user requests. Experimental results on real-world dataset show that using the collaborative DeepCache algorithm, the overall transmission delay is reduced by 14%~22%, with a backhaul data traffic saving of 15%~23%.
机译:新兴的5G移动网络承诺超高的网络带宽和超低的通信延迟(<; 1ms),使各种应用受益,包括实时视频流,在线游戏,虚拟和增强现实以及Vehicle-to-X等。但是一些。但是,骨干互联网由于其存储转发设计和信号传播速度的物理障碍而不能跟上,特别是在延迟(> 100ms)中,尤其是经常发生的拥塞。众所周知,缓存可以有效地弥合速度差距,而速度差距也已成为5G部署中的关键组成部分。除了存储,5G基站(BS)也将配备强大的计算模块,并提供移动边缘计算(MEC)功能。本文探讨了边缘计算在提高缓存性能方面的潜力,并且我们构想了一个基于学习的框架,该框架可促进智能缓存的发展,超越简单的基于频率和时间的替换策略以及基站之间的协作。在此框架内,我们开发了DeepCache,这是一种基于深度学习的解决方案,用于了解各个基站中的请求模式并做出明智的缓存决策。例如,使用移动视频这一流量需求最大的最受欢迎的应用之一,我们进一步开发了一种合作策略,使附近的基站可以共同满足用户的需求。在真实数据集上的实验结果表明,使用协作式DeepCache算法,整体传输延迟减少了14%〜22%,回程数据流量节省了15%〜23%。

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