Enhanced Fronthaul Capacity in CRANs: Sum-Rate Maximization via Joint Optimal Design of STAR-RIS, Massive MIMO and Data Compression

IF 5.3 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Iqra Farhat;Umar Rashid;Omer Waqar
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引用次数: 0

Abstract

Cloud Radio Access Networks (CRAN) face a critical challenge due to the limited capacity of fronthaul links overwhelmed by massive data transmissions. This paper proposes a novel CRAN design that effectively tackles this challenge. Our approach combines three key elements: (1) Massive MIMO at the baseband unit to leverage large array gain and interference suppression; (2) a novel simultaneous transmitting and reflecting (STAR) reconfigurable intelligent surface (RIS) that can both transmit and reflect signals concurrently, improving fronthaul capacity through energy splitting technique by enabling communication with remote radio heads serving multiple user equipments; and (3) a data compression technique by optimizing the quantization noise covariance matrix across remote radio heads, significantly reducing the fronthaul traffic load. We formulate a problem to maximize the overall network sum-rate by jointly optimizing transmit power, fronthaul capacity, beamforming vectors at RRHs, data compression, and STAR-RIS transmission-reflection coefficients. To address the nonconvexity of the resulting joint optimization problem, successive convexification along with alternating optimization technique are used to develop an iterative algorithm. Simulations demonstrate that our STAR-RIS-aided CRAN design surpasses conventional reflecting-only RIS aided CRAN by providing full-space coverage and thus offering more degrees-of-freedom compared to traditional RIS.
基于STAR-RIS、大规模MIMO和数据压缩联合优化设计的CRANs前传容量增强和速率最大化
云无线接入网(CRAN)由于前传链路容量有限而被大量数据传输所淹没,面临着严峻的挑战。本文提出了一种新颖的CRAN设计,可以有效地解决这一挑战。我们的方法结合了三个关键要素:(1)基带单元的大规模MIMO,以利用大阵列增益和干扰抑制;(2)一种新型的同时发射和反射(STAR)可重构智能表面(RIS),它可以同时发射和反射信号,通过能量分裂技术,通过与服务于多个用户设备的远程无线电头通信来提高前传能力;(3)通过优化远程无线电头间量化噪声协方差矩阵的数据压缩技术,显著降低了前传通信负载。我们通过共同优化发射功率、前传容量、RRHs波束形成矢量、数据压缩和STAR-RIS传输反射系数,提出了一个最大化整体网络和速率的问题。为了解决联合优化问题的非凸性,采用连续凸化和交替优化技术开发了一种迭代算法。模拟表明,我们的star -RIS辅助CRAN设计超越了传统的仅反射RIS辅助CRAN,提供了全空间覆盖,因此与传统RIS相比提供了更多的自由度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
9.60
自引率
0.00%
发文量
25
审稿时长
10 weeks
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