Energy Efficient Multi Hop D2D Communication Using Deep Reinforcement Learning in 5G Networks

M. Khan, Ashish Adholiya
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Abstract

– One of the most potential 5G technologies for wireless networks is device-to-device (D2D) communication. It promises peer-to-peer consumers high data speeds, ubiquity, and low latency, energy, and spectrum efficiency. These benefits make it possible for D2D communication to be completely realized in a multi-hop communication scenario. However, the energy efficient multi hop routing is more challenging task. Hence, this research deep reinforcement learning based multi hop routing protocol is introduced. In this, the energy consumption is considered by the proposed double deep Q learning technique for identifying the possible paths. Then, the optimal best path is selected by the proposed Gannet Chimp optimization (GCO) algorithm using multi-objective fitness function. The assessment of the proposed method based on various measures like packet delivery ratio, latency, residual energy, throughput and network lifetime accomplished the values of 99.89, 1.63, 0.98, 64 and 99.69 respectively.
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5G网络中使用深度强化学习的高能效多跳D2D通信
无线网络中最有潜力的5G技术之一是设备对设备(D2D)通信。它向点对点消费者承诺了高数据速度、无处不在、低延迟、能源和频谱效率。这些优点使得在多跳通信场景中完全实现D2D通信成为可能。然而,高效节能的多跳路由是一项具有挑战性的任务。因此,本文研究了基于深度强化学习的多跳路由协议。在此,提出的双深度Q学习技术考虑了能量消耗来识别可能的路径。然后,采用多目标适应度函数的GCO算法选择最优路径;基于包投递率、延迟、剩余能量、吞吐量和网络寿命等多种指标对所提出方法的评估分别达到了99.89、1.63、0.98、64和99.69。
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来源期刊
International Journal of Computer Networks and Applications
International Journal of Computer Networks and Applications Computer Science-Computer Science Applications
CiteScore
2.30
自引率
0.00%
发文量
40
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