Collaborative multi-bitrate video caching and processing in Mobile-Edge Computing networks

Tuyen X. Tran, Parul Pandey, Abolfazl Hajisami, D. Pompili
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引用次数: 155

Abstract

Recently, Mobile-Edge Computing (MEC) has arisen as an emerging paradigm that extends cloud-computing capabilities to the edge of the Radio Access Network (RAN) by deploying MEC servers right at the Base Stations (BSs). In this paper, we envision a collaborative joint caching and processing strategy for on-demand video streaming in MEC networks. Our design aims at enhancing the widely used Adaptive BitRate (ABR) streaming technology, where multiple bitrate versions of a video can be delivered so as to adapt to the heterogeneity of user capabilities and the varying of network condition. The proposed strategy faces two main challenges: (i) not only the videos but their appropriate bitrate versions have to be effectively selected to store in the caches, and (ii) the transcoding relationships among different versions need to be taken into account to effectively utilize the processing capacity at the MEC servers. To this end, we formulate the collaborative joint caching and processing problem as an Integer Linear Program (ILP) that minimizes the backhaul network cost, subject to the cache storage and processing capacity constraints. Due to the NP-completeness of the problem and the impractical overheads of the existing offline approaches, we propose a novel online algorithm that makes cache placement and video scheduling decisions upon the arrival of each new request. Extensive simulations results demonstrate the significant performance improvement of the proposed strategy over traditional approaches in terms of cache hit ratio increase, backhaul traffic and initial access delay reduction.
移动边缘计算网络中的协同多比特率视频缓存和处理
最近,移动边缘计算(MEC)作为一种新兴范例出现,通过在基站(BSs)部署MEC服务器,将云计算功能扩展到无线接入网(RAN)的边缘。在本文中,我们设想了一种用于MEC网络中点播视频流的协作联合缓存和处理策略。我们的设计旨在增强广泛使用的自适应比特率(ABR)流媒体技术,该技术可以传输视频的多个比特率版本,以适应用户能力的异质性和网络条件的变化。所提出的策略面临两个主要挑战:(i)不仅要选择视频,还要有效地选择合适的比特率版本来存储在缓存中;(ii)需要考虑不同版本之间的转码关系,以有效地利用MEC服务器的处理能力。为此,我们将协同联合缓存和处理问题表述为一个整数线性规划(ILP),该规划在受缓存存储和处理能力约束的情况下使回程网络成本最小化。由于问题的np完备性和现有离线方法的不切实际的开销,我们提出了一种新的在线算法,该算法在每个新请求到达时做出缓存放置和视频调度决策。大量的仿真结果表明,该策略在提高缓存命中率、减少回程流量和初始访问延迟方面比传统方法有显著的性能改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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