利用级联智能反射面,通过基于离散傅里叶变换的信道估计优化多用户无线网络

IF 1.5 Q3 TELECOMMUNICATIONS
Sakhshra Monga, Nitin Saluja, Chander Prabha, Roopali Garg, Anupam Kumar Bairagi, Md. Mehedi Hassan
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引用次数: 0

摘要

无线通信系统本身受到衰减、路径损耗和阴影等因素的挑战,导致数据传输可能出现错误。缓解这些问题的传统方法包括功率控制、多样化、可变波束成形和调制技术。然而,无线介质的不可预测性往往限制了这些方法的有效性。应对这些挑战的新方法是采用级联智能反射面(IRS)。IRS 系统由多个无源元件组成,可智能地反射电磁波,从而提高信号质量。高级离散傅里叶变换(ADFT)矩阵方案在信道估计中进行了探索,这是一种特别适用于利用级联 IRS 的无线网络的新方法。高级离散傅里叶变换矩阵方案在管理级联信道系数的共同链路配置方面具有显著的效率,可有效减少先导开销。与最小平方、最大后验概率和线性最小均方误差等传统信道估计方法相比,ADFT 矩阵方案表现出卓越的性能。在信噪比(SNR)分别为 20 dB 和 15 dB 的情况下,它显著降低了归一化均方误差(NMSE)--分别为 66% 和 80%。此外,增加先导长度还能提高 NMSE 性能,随着基站距离的增加,NMSE 性能显著提高 33%。仿真结果表明,随着 IRS 元素数量和 SNR 的增加,ADFT 矩阵方案始终超越传统方法。这一进步代表了无线通信技术领域的重大飞跃。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Optimising multi-user wireless networks through discrete Fourier transform-based channel estimation with cascaded intelligent reflecting surfaces

Optimising multi-user wireless networks through discrete Fourier transform-based channel estimation with cascaded intelligent reflecting surfaces

Wireless communication systems are inherently challenged by factors such as fading, path loss, and shadowing, leading to potential errors in data transmission. Traditional methods to mitigate these issues include power control, diversification, variable beamforming, and modulation techniques. However, the unpredictable nature of the wireless medium often limits their effectiveness. A new approach to address these challenges is the implementation of cascaded intelligent reflecting surfaces (IRS). IRS systems consist of multiple passive elements that intelligently reflect electromagnetic waves, thereby enhancing signal quality. The Advanced Discrete Fourier Transform (ADFT) matrix scheme is explored in channel estimation, a novel method particularly suitable for wireless networks utilising cascaded IRS. The ADFT matrix scheme is significant for its efficiency in managing the common-link configuration of cascading channel coefficients, which effectively reduces pilot overhead. When compared to traditional channel estimation methods like the Least Square|least squares, Maximal a posteriori probability, and Linear Minimum Mean Square Error, the ADFT matrix scheme exhibits superior performance. It achieves a remarkable reduction in normalised mean squared error (NMSE) – 66% and 80% at 20 dB and 15 dB Signal to-Noise Ratios (SNR), respectively. Furthermore, increasing the pilot length correlates with enhanced NMSE performance, with a noted 33% improvement as the base station distance increases. Simulations demonstrate that with an escalation in the number of IRS elements and SNR, the ADFT matrix scheme consistently surpasses conventional methods. This advancement represents a significant leap in the field of wireless communication technology.

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来源期刊
IET Wireless Sensor Systems
IET Wireless Sensor Systems TELECOMMUNICATIONS-
CiteScore
4.90
自引率
5.30%
发文量
13
审稿时长
33 weeks
期刊介绍: IET Wireless Sensor Systems is aimed at the growing field of wireless sensor networks and distributed systems, which has been expanding rapidly in recent years and is evolving into a multi-billion dollar industry. The Journal has been launched to give a platform to researchers and academics in the field and is intended to cover the research, engineering, technological developments, innovative deployment of distributed sensor and actuator systems. Topics covered include, but are not limited to theoretical developments of: Innovative Architectures for Smart Sensors;Nano Sensors and Actuators Unstructured Networking; Cooperative and Clustering Distributed Sensors; Data Fusion for Distributed Sensors; Distributed Intelligence in Distributed Sensors; Energy Harvesting for and Lifetime of Smart Sensors and Actuators; Cross-Layer Design and Layer Optimisation in Distributed Sensors; Security, Trust and Dependability of Distributed Sensors. The Journal also covers; Innovative Services and Applications for: Monitoring: Health, Traffic, Weather and Toxins; Surveillance: Target Tracking and Localization; Observation: Global Resources and Geological Activities (Earth, Forest, Mines, Underwater); Industrial Applications of Distributed Sensors in Green and Agile Manufacturing; Sensor and RFID Applications of the Internet-of-Things ("IoT"); Smart Metering; Machine-to-Machine Communications.
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