Cognitive Neural Network Delay Predictor for High Speed Mobility in 5G C-RAN Cellular Networks

A. M. Mahmood, A. Al-Yasiri, O. Alani
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引用次数: 8

Abstract

The future fifth Generation (5G) cellular network is expected to support one million connections per square kilometre with 1 ms end-to-end as a desired latency. The potential of this ultra-dense network motivated the researchers to develop a new architecture. Cloud Radio Access Network (C-RAN) technology was proposed to meet the demand of future networks, however, moving the baseband processing from multiple physical base stations on the ground within the cell site into the cloud brings many challenges. One of these challenges is how to acquire accurate Channel State Information (CSI) for a dense number of access points and User Equipment (UE), which are the future theme of 5G deployment. CSI reflects the instantaneous communication link status between the mobile user and the base station. Hence, the imperfect or delayed CSI can influence the performance of the whole network. In order to reduce the impact of this outdated CSI and to improve its accuracy in C-RAN architecture, a Cognitive Neural Network Delay Predictor (CNNDP) is proposed for compensating the transmission and acquisition delay of the CSI working simultaneously along with the conventional prediction technique for predicting the time variations of the communication channel. The results demonstrate a significant enhancement in the data throughput of the network with the proposed approach.
5G C-RAN蜂窝网络高速移动的认知神经网络延迟预测器
未来的第五代(5G)蜂窝网络预计将支持每平方公里100万个连接,端到端延迟为1毫秒。这种超密集网络的潜力促使研究人员开发了一种新的架构。云无线接入网(C-RAN)技术是为了满足未来网络的需求而提出的,然而,将基带处理从蜂窝站点内的多个地面物理基站转移到云中带来了许多挑战。其中一个挑战是如何为密集的接入点和用户设备(UE)获取准确的信道状态信息(CSI),这是5G部署的未来主题。CSI反映了移动用户与基站之间的瞬时通信链路状态。因此,不完善或延迟的CSI会影响整个网络的性能。为了减少这种过时的CSI的影响,提高其在C-RAN架构下的准确性,提出了一种认知神经网络延迟预测器(CNNDP)来补偿CSI同时工作的传输和采集延迟,并与传统的预测技术一起预测通信信道的时间变化。结果表明,该方法显著提高了网络的数据吞吐量。
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