A Transcoding Task Offloading and Routing Decision-Making Scheme in Live Transmission Architecture Based on Computing Power Network

Zitong Li
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Abstract

In recent years, there has been a significant increase in the demand for high-bit-rate live broadcast services, which has led to the widespread use of edge transcoding technology. Edge transcoding can effectively reduce the throughput of streaming media transmission, making it a popular and extensively researched technology. However, due to the real-time requirements of live broadcasting, the edge server needs to have the sufficient computing power to ensure low-latency calculations, which makes computing power allocation and traffic distribution become quite difficult. Inspired by the real-time and flexible computing power scheduling ability of the Computing Power Network, this paper explores reasonable edge task offloading and efficient traffic routing path planning to ensure overall low latency. This paper proposes a live stream transmission architecture based on the computing power network to solve the problems mentioned above to some degree. The paper first models the computing power network in the scene and then designs a task offloading algorithm based on Deep Reinforcement Learning (DQN) to determine the device for executing the computing task. Furthermore, a hybrid Simulated Annealing Genetic Algorithm (SAGA) is proposed for routing decisions. The effectiveness and superiority of the scheme are validated through simulation experiments.
基于计算能力网络的实时传输体系结构转码任务分流与路由决策方案
近年来,对高比特率直播服务的需求显著增加,这导致了边缘转码技术的广泛使用。边缘转码可以有效地降低流媒体传输的吞吐量,使其成为一种流行和广泛研究的技术。然而,由于直播的实时性要求,边缘服务器需要有足够的计算能力来保证低延迟的计算,这使得计算能力的分配和流量的分配变得相当困难。受计算能力网络实时灵活的计算能力调度能力的启发,本文探索了合理的边缘任务卸载和高效的流量路由路径规划,以保证整体低时延。本文提出了一种基于计算能力网络的实时流传输体系结构,在一定程度上解决了上述问题。本文首先对场景中的计算能力网络进行建模,然后设计了一种基于深度强化学习(DQN)的任务卸载算法,以确定执行计算任务的设备。在此基础上,提出了一种用于路由决策的混合模拟退火遗传算法(SAGA)。仿真实验验证了该方案的有效性和优越性。
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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