基于有效的预定义时间自适应神经网络波束训练提高毫米波大规模MIMO信号覆盖

IF 1.8 4区 计算机科学 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Balasubramani Ramesh, Jampani Chandra Sekhar, Thangam Marimuthu, Abdul Satar Shri Vindhya
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引用次数: 0

摘要

本文提出了一种先进的深度学习框架,用于毫米波(mmWave)大规模多输入多输出(MIMO)系统的有效波束训练。针对传统波束训练方法开销大、对动态环境适应慢、可扩展性差等缺点,提出了一种基于高效预定义时间自适应神经网络的毫米波大规模MIMO波束训练(isc - mmimo - eptan - bt)模型。该模型利用深度神经网络(DNN)学习通道功率泄漏(CPL)中的复杂非线性,并利用高效的预定义时间自适应神经网络(EPTANN)提供波束训练的实时响应性和时间同步性。采用火鹰优化算法(FHOA)对模型参数进行优化,以获得更好的收敛速度和信号覆盖。该方法在MATLAB中实现。仿真结果表明,该方法通过显著减少波束训练开销,在成功率下获得了更好的性能,并增加了信号覆盖。与现有的毫米波大规模MIMO波束训练深度学习方法(BT-MMIMO-DNN)、大规模MIMO系统联合反馈和信道预测深度学习方法(CNN-JCS-MMIMO)和毫米波极大规模MIMO三精细化混合场波束训练方法(TR-FBT-MIMO)相比,所提出的isc - mmimo - eptan - bt方法的成功率分别提高了26.15%、21.08%和33.75%,归一化均方误差分别降低了16.32%、28.94%和20.24%。分别。isc - mmimo - eptan - bt技术降低了波束训练开销,增强了信号覆盖,并确定了在毫米波大规模MIMO方案中成功进行波束训练的有希望的候选方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Improving Signal Coverage in Millimeter-Wave Massive MIMO via Efficient Predefined-Time Adaptive Neural Network–Based Beam Training

Improving Signal Coverage in Millimeter-Wave Massive MIMO via Efficient Predefined-Time Adaptive Neural Network–Based Beam Training

This paper proposes an advanced deep learning framework for efficient beam training in millimeter wave (mmWave) massive multiple-input multiple-output (MIMO) systems. To overcome the limitations of conventional beam training approaches such as high overhead, slow adaptation to dynamic environments, and poor scalability, an Improving Signal Coverage in Millimeter Wave Massive MIMO via Efficient Predefined Time Adaptive Neural Network based Beam Training (ISC-MMIMO-EPTANN-BT) model is proposed. The proposed model used deep neural network (DNN) to learn complicated nonlinearities in channel power leakage (CPL) and used an efficient predefined time adaptive neural network (EPTANN) to provide real-time responsiveness and temporal synchronism in beam training. The parameters of the model are also optimized using fire hawk optimization algorithm (FHOA) to get better convergence speed and signal coverage. The proposed technique is executed in MATLAB. The proposed approach attains better performance under successful rate by significantly less beam training overhead and also increases signal coverage based on simulation results. The proposed ISC-MMIMO-EPTANN-BT method attains 26.15%, 21.08%, and 33.75% higher successful rates and 16.32%, 28.94%, and 20.24% lower normalized mean square error compared with existing methods such as deep learning for beam training in millimeter wave massive MIMO schemes (BT-MMIMO-DNN), deep learning for combined feedback and channel prediction in large-scale MIMO systems (CNN-JCS-MMIMO), and triple-refined hybrid-field beam training in mmWave extremely large-scale MIMO (TR-FBT-MIMO), respectively. The ISC-MMIMO-EPTANN-BT technique reduced beam training overhead, enhanced signal coverage, and identified a promising candidate for successful beam training in mmWave massive MIMO schemes.

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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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