Intelligent Reflecting Surfaces Aided Millimetre Wave Blockage Prediction For Vehicular Communication

Fu Seong Woon, C. Leow
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Abstract

The ability of millimeter-wave (mmWave) to deliver gigabit throughput has led to its widespread adoption in Fifth Generation (5G) networks. However, mmWave links between Base Station (BS) and users can be easily obstructed by obstacles. In vehicular networks with dynamic environments and mobile users, the mmWave link blockage issue is even more pronounced. In order to preserve the mmWave link in the vehicular network, it is necessary to predict blockages. For blockage prediction, sensor information from Lidar, Radar, and cameras has been considered. Nonetheless, these non-radio frequency methods necessitate the use of additional equipment and signal processing, which raises the implementation cost and complexity. The existing literature also considers the use of BS and user’s Radio Frequency (RF) signatures to predict blockage. However, users’ mobility has not been taken into account. An Intelligent Reflecting Surface (IRS), on the other hand, has been viewed as a promising method for providing an alternate path by reflecting the mmWave signal between the BS and user in order to improve the reliability of vehicular networks. Therefore, this research investigates the IRS-assisted blockage prediction in order to determine the future link status in the vehicular environment with respect to user mobility. The proposed solution employs a number of active elements that are randomly distributed on the IRS to obtain the RF signatures. Furthermore, it utilises Machine Learning (ML) techniques to learn the pre-blockage wireless signatures, which can predict future blockages. The results indicate that the proposed method can predict blockages between a single IRS and a moving user with a greater than 98 percent accuracy up to one second before they occur.
基于智能反射面辅助的车载通信毫米波阻塞预测
毫米波(mmWave)提供千兆吞吐量的能力使其在第五代(5G)网络中得到广泛采用。然而,基站(BS)和用户之间的毫米波链路很容易被障碍物阻挡。在具有动态环境和移动用户的车载网络中,毫米波链路阻塞问题更加明显。为了保护车联网中的毫米波链路,有必要对阻塞进行预测。对于堵塞预测,考虑了来自激光雷达、雷达和摄像头的传感器信息。然而,这些非射频方法需要使用额外的设备和信号处理,这增加了实施成本和复杂性。现有文献也考虑使用BS和用户的射频(RF)特征来预测堵塞。然而,用户的移动性并没有被考虑在内。另一方面,智能反射面(IRS)被认为是一种很有前途的方法,它通过反射BS和用户之间的毫米波信号来提供替代路径,以提高车载网络的可靠性。因此,本研究研究了irs辅助的阻塞预测,以确定车辆环境中与用户移动性相关的未来链路状态。该解决方案采用随机分布在IRS上的多个有源元件来获取射频签名。此外,它利用机器学习(ML)技术来学习预阻塞无线签名,从而可以预测未来的阻塞。结果表明,所提出的方法可以预测单个IRS和移动用户之间的阻塞,准确率超过98%,最多可在阻塞发生前一秒。
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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