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Statistical Learning-Based Dynamic Retransmission Mechanism for Mission Critical Communication: An Edge-Computing Approach

机译:基于统计学习的任务关键通信的动态重传机制:边缘计算方法

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Mission-critical machine type communication (MC-MTC) systems in which machines communicate to perform various tasks such as coordination, sensing, and actuation, require stringent requirements of ultra-reliable and low latency communications (URLLC). Edge computing being an integral part of future wireless networks, provides services that support URLLC applications. In this paper, we use the edge computing approach and present a statistical learning-based dynamic retransmission mechanism. The proposed approach meets the desired latency-reliability criterion in MC-MTC networks employing framed ALOHA. The maximum number of retransmissions Nr under a given latency-reliability constraint is learned statistically by the devices from the history of their previous transmissions and shared with the base station. Simulations are performed in MATLAB to evaluate a framed-ALOHA system's performance in which an active device can have only one successful transmission in one round composed of (Nr + 1) frames, and the performance is compared with the diversity transmission-based framed-ALOHA.
机译:在哪台机器通信以执行各种任务,例如协调,感测和致动关键任务机器类型通信(MC-MTC)系统,需要超可靠和低延迟通信(URLLC)的严格要求。边缘计算是未来无线网络的一个组成部分,提供的服务,支持URLLC应用。在本文中,我们使用边缘计算方法,并提出了一种基于统计学习动态重传机制。所提出的方法符合在采用成帧ALOHA MC-MTC网络所需的等待时间的可靠性标准。 N T个重传的一个给定的等待时间可靠性约束下的最大数量在统计学上由设备从它们的先前传输的历史经验和与该基站共享。仿真在MATLAB执行以评估框-ALOHA系统的性能,其中的有源器件只能有一个在(N T个+ 1)帧组成一个圆成功传输,以及性能与基于发送分集成帧ALOHA相比。

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