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Decentralized adaptive resource-aware computation offloading & caching for multi-access edge computing networks

机译:分散的自适应资源感知计算卸载和缓存多接入边缘计算网络

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摘要

Decentralized computation offloading and caching in Multi-Access Edge Computing (MEC) is a promising approach to evolve the forthcoming network generation. MEC is the emerging technology that provides adaptive micro cloud services to the edge of proximity resource-constrained smart communication and Internet of Everything (IoE) devices for cellular subscribers. Nowadays, Massive IoE devices are exponentially connected to the global ecosystem. As a result, the backhaul network traffic grows enormously and users' ultra-reliable low latency communications are challenging as well. In this paper, we explored decentralized adaptive resourceaware communication, computing, & caching framework which can orchestrate the dynamic network environments based on Deep Reinforcement Learning (DRL). Subsequently, the framework can perform augmented decision-making capabilities to enhance users' connectivity and resource utilization requirements. Basically, every IoE device user are attempting to capitalize their own utilities. Hence, the problem is formulated using Non-cooperative game theory which is non-deterministic polynomial to solve the structural property of the MEC networks. We analyze and show that the game admits a Nash Equilibrium. Moreover, we have introduced a decentralized cognitive scheduling algorithm by exploiting DRL technology to leverage the utility of IoE & smart communication devices. Therefore, numerical results and theoretical analysis revealed that the proposed algorithm outperform, ultra-reliable low latency, and scalable than the baseline schemes.
机译:多访问边缘计算(MEC)中分散的计算卸载和缓存是一种有希望的方法来发展即将到来的网络生成。 MEC是新兴技术,为近距离资源受限的智能通信和蜂窝用户(IOE)设备的Internet(IOE)设备提供自适应微云服务。如今,大规模的IOE设备与全球生态系统指数相连。结果,回程网络流量大得多,用户的超可靠性低延迟通信也是具有挑战性的。在本文中,我们探讨了可根据深度加强学习(DRL)编排动态网络环境的分散式自适应resourceaware通信,计算和缓存框架。随后,该框架可以执行增强的决策能力以增强用户的连接和资源利用要求。基本上,每个IOE设备用户都试图利用自己的实用程序。因此,使用非协同博弈论制定了非确定性多项式来解决MEC网络的结构特性的问题。我们分析并表明游戏承认纳什均衡。此外,我们通过利用DRL技术引入了分散的认知调度算法,利用IOE和智能通信设备的效用。因此,数值结果和理论分析表明,所提出的算法优于,超可靠的低延迟,比基线方案可扩展。

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