802.11 ad/ay网络中基于波束特征的物理层识别实用框架

Shreya Gupta, Zhi Sun, Pu Wang, Arupjyoti Bhuyan
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引用次数: 1

摘要

毫米波(mmWave)技术可以显著提高未来无线网络的吞吐量和用户容量。在设备认证方面,由于使用了高度定向的通信链路,基于时空波束特征的新的物理层识别机制成为可能。然而,如何在无线网络的多客户端场景中使用商用设备实现新的PLI机制尚不清楚。为此,本文提出了与802.11ad/ay标准兼容的新的基于波束特征的PLI的实用操作框架。这些商品设备的低成本导致更宽的波束,多个主瓣和高侧瓣,这反过来导致频繁的扇区电平扫描(SLS),即使是最小程度的收发不对准。高迁移灵敏度也触发了SLS。关键思想是利用毫米波设备的移动性来收集足够的测量数据,波束模式特征值,从不同的观测角度提取波束特征。这种移动效应利用了特征丰富的时空信息来防止系统被欺骗。我们还提出了一种新的特征库改进算法,以增强数据库的抗误接受/拒绝率,提高识别精度。该算法对在多个客户端存在的情况下收集的噪声数据进行过滤。提议的操作框架在商用802.11ad/ay设备中实现。我们的研究表明,在实时场景中,即使使用最小的特征向量数据库,所提出的方案也可以达到接近100%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Practical Framework for Beam Feature-based Physical Layer Identification in 802.11 ad/ay Networks
The millimeter wave (mmWave) technologies can significantly increase the throughput and user capacity in the future wireless networks. In term of device authentication, due to the usage of highly directional communication link, new physical layer identification (PLI) mechanism based on the spatial-temporal beam features becomes available. However, it is not known how to implement the new PLI mechanism using commodity devices in multiple client scenario in wireless networks. To this end, this paper presents a practical operational framework for the new beam feature-based PLI that is compatible with 802.11ad/ay standards. The low cost of these commodity devices leads to much wider beams, multiple main lobes, and high side lobes which in turn results in frequent sector level sweep (SLS) even for a minimal level of the transmitter-receiver misalignment. The high mobility sensitivity also triggers SLS. The key idea is to utilize the mobility of the mmWave device to collect enough measurements, the beam pattern feature values, from different observation angles where the beam features are extracted. This mobility effect takes advantage of the rich spatial-temporal information of the feature to prevent the system from spoofing. We also propose a novel feature database refinement algorithm to strengthen the database against false accept/reject rates and increase the identification accuracy. The algorithm filters the noisy data collected in the presence of multiple-clients. The proposed operational framework is implemented in commodity 802.11ad/ay devices. We show that the proposed scheme can reach near 100% accuracy even with a minimal feature vector database in real-time scenarios.
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