Wireless mmWave Communication in 5G Network Slicing With Routing Model Based on IoT and Deep Learning Model

IF 2.5 4区 计算机科学 Q3 TELECOMMUNICATIONS
R. Suganya, L. R. Sujithra, Ramesh Kumar Ayyasamy, P. Chinnasamy
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引用次数: 0

Abstract

In fifth-generation (5G) radio access networks (RANs), network slicing makes it possible to serve large amounts of network traffic while meeting a variety of demanding quality of service (QoS) standards. Higher path loss and sparser multipath components (MPCs) are the primary distinctions, which lead to more notable time-varying characteristics in mmWave channels. Using statistical models, such as slope-intercept methods for path loss for delay spread and angular spread, is challenging to characterize the time-varying properties of mmWave channels. Therefore, adopting mmWave communication systems requires highly accurate channel modeling and prediction. This research proposes a novel technique in wireless mmWave communication 5G network slicing and routing protocol using IoT (Internet of things) and deep learning techniques. An adaptive software-defined reinforcement recurrent autoencoder model (ASDRRAE) slices the mmWave communication network. A dilated clustering-based adversarial backpropagation model (DCAB) then performs network routing. The experimental analysis evaluates throughput, packet delivery ratio, latency, training accuracy, and precision. The suggested hybrid model has a 97.21% overall recognition rate, illustrating that the suggested strategy is aptly applicable. A 10-fold stratified cross-validation is employed to evaluate the suitability of the proposed method.

Abstract Image

基于物联网路由模型和深度学习模型的5G网络切片无线毫米波通信
在第五代(5G)无线接入网络(ran)中,网络切片使得在满足各种苛刻的服务质量(QoS)标准的同时服务大量网络流量成为可能。更高的路径损耗和更稀疏的多径分量(mpc)是主要的区别,这导致毫米波信道中更显着的时变特性。使用统计模型,如延迟扩展和角扩展的路径损耗的斜率-截距方法,来表征毫米波信道的时变特性是具有挑战性的。因此,采用毫米波通信系统需要高度精确的信道建模和预测。本研究提出了一种利用物联网和深度学习技术的无线毫米波通信5G网络切片和路由协议的新技术。一种自适应软件定义强化循环自编码器模型(ASDRRAE)对毫米波通信网络进行切片。然后,基于扩展聚类的对抗反向传播模型(DCAB)执行网络路由。实验分析评估了吞吐量、数据包传送率、延迟、训练准确度和精度。混合模型的总体识别率为97.21%,说明所提策略的适用性。采用10倍分层交叉验证来评估所提出方法的适用性。
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来源期刊
CiteScore
8.90
自引率
13.90%
发文量
249
期刊介绍: ransactions on Emerging Telecommunications Technologies (ETT), formerly known as European Transactions on Telecommunications (ETT), has the following aims: - to attract cutting-edge publications from leading researchers and research groups around the world - to become a highly cited source of timely research findings in emerging fields of telecommunications - to limit revision and publication cycles to a few months and thus significantly increase attractiveness to publish - to become the leading journal for publishing the latest developments in telecommunications
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