6G网络中基于深度人工学习的高效设备间数据传输

V. Sridhar, S. Roslin
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引用次数: 1

摘要

-不断增加的无线服务限制和用户紧凑性必须引领现代6G通信的发展。6G相对于现有技术的优势是对混合应用程序和移动性维护的巨大支持。6G中的设备到设备(D2D)数据传输备受关注,因为它提供了更好的数据传输速率(DDR)。近年来,建立了几种D2D数据传输方法。然而,没有考虑能源消耗来提高网络吞吐量。为了解决这些问题,本研究引入了一种名为深度神经回归切线传输分类器(Deep Neural Regressive Tangent Transfer Classifier, DNRTTC)模型的人工智能技术,用于6G系统中的D2D数据传输。设计的方法包括多层,以实现节能的D2D数据传输。最主要的一层是输入层,它包括几个移动节点作为输入。节点被传输到隐藏层。对于每个节点,计算每个移动节点的能量、接收信号强度和连接速度。然后在下一层进行相似性分析,其中对每个节点进行阈值分析。结果被发送到输出层,在输出层中使用激活函数识别更好的资源移动节点。这可以在6G中实现节能的D2D数据传输。结果表明,与传统方法相比,DNRTTC具有更好的能效、数据包传输率和吞吐量。
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Energy Efficient Device to Device Data Transmission Based on Deep Artificial Learning in 6G Networks
– The rising wireless service constraints and user compactness have to lead the progress of 6G communication in the modern days. The benefit of 6G over the presented technologies is a huge support for mixed applications and mobility maintenance. Device to Device (D2D) data transmission in 6G has great attention since it gives a better data delivery rate (DDR). Recently, several methods were established for D2D data transmission. However, energy consumption was not considered to improve the network throughput. To handle such problems, an artificial intelligence technique called Deep Neural Regressive Tangent Transfer Classifier (DNRTTC) model is introduced in this research for D2D data transmission in a 6G system. The designed method includes several layers to attain energy-efficient D2D data transmission. The primary layer is the input layer and it includes several mobile nodes as input. Nodes are transmitted to the hidden layer one. For each node, energy, received signal strength, and connection speed of each mobile node is calculated. Then the similarity analysis is done in the following layer where each node is analyzed with its threshold value. The result is sent to the output layer where the better resource mobile nodes are identified by using the activation function. This leads to attaining energy-efficient D2D data transmission in 6G. Results illustrate that the DNRTTC outperformed compared to conventional methods with better energy efficiency, packet delivery ratio, throughput.
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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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