Performance Analysis and Deep Learning Evaluation of URLLC Full-Duplex Energy Harvesting IoT Networks over Nakagami-m Fading Channels

Toan-Van Nguyen, Thien Huynh-The, Vo Nguyen Quoc Bao
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Abstract

This paper studies full-duplex (FD) energy-harvesting Internet-of-Things (IoT) networks, where multiple FD IoT devices are deployed to assist short-packet communications between a source and a robot used in automation factories. Taking into account two residual interference models for FD relays, we propose a full relay selection (FRS) scheme that maximizes the end-to-end signal-to-noise ratio of packet transmissions aiming at improving the block error rate (BLER) and system throughput. Towards real-time settings, we design a deep learning framework based on the FRS scheme to accurately predict the average BLER and throughput via a short inference process. Simulation results show the significant effects of RSI models on the performance of FD IoT networks. Importantly, the DL framework can estimate similar BLER and throughput values as the FRS scheme, but with significantly reduced complexity and execution time, showing the potential of DL design in dealing with complex scenarios of heterogeneous IoT networks.
基于Nakagami-m衰落信道的URLLC全双工能量采集物联网性能分析与深度学习评估
本文研究了全双工(FD)能量收集物联网(IoT)网络,其中部署了多个FD物联网设备,以协助自动化工厂中使用的源和机器人之间的短包通信。考虑到FD中继的两种剩余干扰模型,我们提出了一种完整的中继选择(FRS)方案,该方案最大限度地提高了分组传输的端到端信噪比,旨在提高分组错误率(BLER)和系统吞吐量。对于实时设置,我们设计了一个基于FRS方案的深度学习框架,通过较短的推理过程准确预测平均BLER和吞吐量。仿真结果表明,RSI模型对FD物联网网络性能有显著影响。重要的是,DL框架可以估计与FRS方案相似的BLER和吞吐量值,但显著降低了复杂性和执行时间,显示了DL设计在处理异构物联网复杂场景方面的潜力。
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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