利用深度学习改进5G网络的D2D毫米波通信

A. Abdelreheem, Ahmed S. A. Mubarak, O. Omer, Hamada Esmaiel, U. S. Mohamed
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引用次数: 1

摘要

在5G网络中,模式选择通常与设备到设备(D2D)毫米波(mmWave)通信结合使用,以克服毫米波传输的覆盖面积小、可靠性差和容易受到路径阻塞的问题。因此,基于低复杂度选择最优模式的模式选择产生高效的D2D毫米波成为无处不在的D2D毫米波通信的一大挑战。本文利用人工智能技术,介绍了基于深度学习的D2D毫米波通信中低复杂度、高效率的模式选择。其中,利用深度学习估计毫米波传输受阻或毫米波通信覆盖面积小的情况下的最优模式y。然后,本文提出的深度学习模型基于离线阶段几乎用例模型的训练,预测在线阶段数据中继高可靠性通信的最优模式。在模式选择过程中,潜在的D2D发射机根据若干标准,要么基于专用的D2D通信,要么通过使用基站(BS)作为中继的蜂窝上行链路,选择传输数据的模式。提出的深度学习模型是为了克服选择低复杂度和高效率的最优模式的挑战。仿真分析表明,所提出的模式选择算法在频谱效率、能量效率和覆盖概率方面都优于传统的D2D毫米波通信技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved D2D Millimeter Wave Communications for 5G Networks Using Deep Learning
Mode selection is normally used in conjunction with Device-to-Device (D2D) millimeter wave (mmWave) communications in 5G networks to overcome the low coverage area, poor reliability and vulnerable to path blocking of mmWave transmissions. Thus, producing a high-efficient D2D mmWave using mode selection based on select the optimal mode with low complexity turns to be a big challenge towards ubiquitous D2D mmWave communications. In this paper, low complexity and high-efficient mode selection in D2D mmWave communications based on deep learning is introduced utilizing the artificial intelligence. In which, deep learning is used to estimate the optimal mode y in the case of blocking of mmWave transmission or low coverage area of mmWave communications. Then, the proposed deep learning model is based on training the model with almost use cases in offline phase to predict the optimal mode for data relaying high-reliability communication in online phase. In mode selection process, the potential D2D transmitter select the mode to transmit the data either based on dedicated D2D communication or through the cellular uplink using the base station (BS) as a relay based on several criteria. The proposed deep learning model is developed to overcome the challenges of selected the optimal mode with low complexity and high efficiency. The simulation analysis show that the proposed mode selection algorithms outperform the conventional techniques in D2D mmWave communication in the spectral efficiency, energy efficiency and coverage probability.
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