增强认知无线电网络的能力:残差初始富集递归卷积神经网络驱动的 QOS 增强和能效策略

IF 1.7 4区 计算机科学 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC International Journal of Communication Systems Pub Date : 2024-09-11 DOI:10.1002/dac.5986
Chandra Mohan Dharmapuri, B. V. Ramana Reddy, Ashish Payal
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引用次数: 0

摘要

摘要由于信息速率前提条件和异构水平的提高,在即将到来的无线通信(WC)中,网络流量的变化给能源效率(EE)和频谱管理带来了新的挑战。为解决这一问题,人们采用了多种现有技术,但没有一种框架能提供与最新无线通信应用兼容的有效解决方案。本框架引入了一种创新的基于深度学习(DL)的分布式认知无线电网络(DCRN)。所提出的方案强调单基站(BS)管理,通过使用双匹配(BM)技术解决主动资源分配(RA)问题来提高资源效率。该方案强调使用残差初始富集递归卷积神经网络(R-InceptionRCNN)预测流量负载(TL)以实现有效的 EE 的 DL 方案。提出的方法在 Python 中实现,其性能指标包括上行链路 (UL) 每个二级用户 (SU) 的可实现容量、UL 每个 SU 的可实现容量、能耗成本、EE 和平均节能 (MES),并与传统技术进行了仔细研究和比较。在 CRN 平台上执行 RA 和 TL 预测时,拟议方案的总体成本、EE、MES 和 UL 容量分别为 14.33 C/J、149.99 J/MB、13.49% 和 22.33 Mbps。
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Empowering cognitive radio networks: residual inception–enriched recurrent convolutional neural network–driven QOS enhancement and energy efficiency strategy
SummaryDue to the rise in information rate prerequisite and the heterogeneity level, the modification in network traffic in the upcoming wireless communication (WC) encompasses innovative challenges in the case of energy efficiency (EE) and spectrum management. To tackle this issue, several existing techniques have been imposed but none of the frameworks provided effective solutions to compatible with recent WC applications. This framework introduces an innovative deep learning (DL)–based distributed cognitive radio network (DCRN). The proposed scheme emphasizes single base station (BS) management, where resource effectiveness is obtained by solving active resource allocation (RA) problems using a bipartite matching (BM) technique. A DL scheme is emphasized to predict the traffic load (TL) for effective EE using a residual inception‐enriched recurrent convolutional neural network (R‐InceptionRCNN). The proposed method is implemented in Python, and the performance metrics including uplink (UL) achievable capacity per secondary user (SU), UL achievable capacity per SU, cost of energy consumption, EE, and mean energy saving (MES) are scrutinized and compared with conventional techniques. The proposed scheme achieved the overall costs, EE, MES, and UL capacity of 14.33 C/J, 149.99 J/MB, 13.49%, and 22.33 Mbps, respectively, on performing RA and TL prediction in the CRN platform.
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来源期刊
CiteScore
5.90
自引率
9.50%
发文量
323
审稿时长
7.9 months
期刊介绍: The International Journal of Communication Systems provides a forum for R&D, open to researchers from all types of institutions and organisations worldwide, aimed at the increasingly important area of communication technology. The Journal''s emphasis is particularly on the issues impacting behaviour at the system, service and management levels. Published twelve times a year, it provides coverage of advances that have a significant potential to impact the immense technical and commercial opportunities in the communications sector. The International Journal of Communication Systems strives to select a balance of contributions that promotes technical innovation allied to practical relevance across the range of system types and issues. The Journal addresses both public communication systems (Telecommunication, mobile, Internet, and Cable TV) and private systems (Intranets, enterprise networks, LANs, MANs, WANs). The following key areas and issues are regularly covered: -Transmission/Switching/Distribution technologies (ATM, SDH, TCP/IP, routers, DSL, cable modems, VoD, VoIP, WDM, etc.) -System control, network/service management -Network and Internet protocols and standards -Client-server, distributed and Web-based communication systems -Broadband and multimedia systems and applications, with a focus on increased service variety and interactivity -Trials of advanced systems and services; their implementation and evaluation -Novel concepts and improvements in technique; their theoretical basis and performance analysis using measurement/testing, modelling and simulation -Performance evaluation issues and methods.
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