Multi-Access Edge Computing-Assisted D2D Streaming for Proximity-Based Social Networking

Shun-Ren Yang, Chang-Jung Shih, P. Lin
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引用次数: 1

Abstract

The mobile data traffic produced by live streaming is expected to see an exploding growth in recent years. To offload live streaming traffic from mobile networks for proximitybased social networking, device-to-device (D2D) communication is considered a promising technology. Unfortunately, the D2D discovery process requires constant signaling and is energyconsuming. One way to improve this drawback of D2D discovery is to exploit the ETSI multi-access edge computing (MEC) technology, where the knowledge of devices in proximity can be maintained in an MEC server and used to simplify the discovery procedure. In this paper, we aim to implement an MEC-assisted D2D live streaming service that offloads data traffic from mobile networks hierarchically with MEC and D2D communication. Specifically, the service includes an MEC App and a User App. The MEC APP can assist D2D discovery and cache live streams in the MEC server to reduce network latency. The User App can establish D2D connections between devices and share live streams over a D2D network using Wi-Fi Direct, offloading data traffic from mobile networks. We further design a rate adaptation heuristic that is capable of determining a suitable quality level in adaptive streaming for a multi-hop D2D network to improve the overall quality of experience (QoE). The experiment results justify that our proposed architecture and rate adaptation heuristic can provide improved network performance and user QoE for the mobile live streaming service.
基于邻近性的社交网络的多访问边缘计算辅助D2D流
近年来,由流媒体直播产生的移动数据流量预计将呈爆炸式增长。为了从移动网络中卸载实时流流量,以实现基于邻近的社交网络,设备到设备(D2D)通信被认为是一种很有前途的技术。不幸的是,D2D发现过程需要不断地发送信号,并且消耗能量。改善D2D发现的这一缺点的一种方法是利用ETSI多访问边缘计算(MEC)技术,其中可以在MEC服务器中维护邻近设备的知识,并用于简化发现过程。在本文中,我们的目标是实现MEC辅助的D2D直播流媒体服务,该服务通过MEC和D2D通信分层地从移动网络中卸载数据流量。具体来说,该服务包括一个MEC应用程序和一个用户应用程序。MEC应用程序可以帮助发现D2D,并在MEC服务器中缓存直播流,以减少网络延迟。用户应用程序可以在设备之间建立D2D连接,并使用Wi-Fi Direct通过D2D网络共享实时流,从而卸载来自移动网络的数据流量。我们进一步设计了一种速率自适应启发式算法,能够为多跳D2D网络确定合适的自适应流质量水平,以提高整体体验质量(QoE)。实验结果证明,我们提出的架构和速率自适应启发式算法可以提高移动直播服务的网络性能和用户QoE。
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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