Machine Learning-Aided Classification Of LoS/NLoS Radio Links In Industrial IoT

Andrea Bombino, S. Grimaldi, Aamir Mahmood, M. Gidlund
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引用次数: 6

Abstract

Wireless sensors and actuators networks are an essential element to realize industrial IoT(IIoT) systems, yet their diffusion is hampered by the complexity of ensuring reliable communication in industrial environments. A significant problem with that respect is the unpredictable fluctuation of a radio-link between the line-of-sight (LoS) and the non-line-of-sight (NLoS) states due to time-varying environments. The impact of linkstate on reception performance, suggests that link-state variations should be monitored at run-time, enabling dynamic adaptation of the transmission scheme on a link-basis to safeguard QoS. Starting from the assumption that accurate channel-sounding is unsuitable for low-complexity IIoT devices, we investigate the feasibility of channel-state identification for platforms with limited sensing capabilities. In this context, we evaluate the performance of different supervised-learning algorithms with variable complexity for the inference of the radio-link state. Our approach provides fast link-diagnostics by performing online classification based on the analysis of the envelope-distribution of a single received packet. Furthermore, the method takes into account the effects of the limited sampling frequency, bit-depth, and moving average filtering, which are typical to hardware-constrained platforms. The results of an experimental campaign in both industrial and office environments show promising classification accuracy of LoS/NLoS radio links. Additional tests indicate that the proposed method retains good performance even with low-resolution RSSI-samples available in low-cost WSN nodes, which facilitates its adoption in real IIoT networks.
工业物联网中LoS/NLoS无线电链路的机器学习辅助分类
无线传感器和执行器网络是实现工业物联网(IIoT)系统的基本要素,但它们的扩散受到确保工业环境中可靠通信的复杂性的阻碍。这方面的一个重大问题是,由于时变环境,视距(LoS)和非视距(NLoS)状态之间的无线电链路不可预测的波动。链路状态对接收性能的影响表明,应该在运行时监控链路状态的变化,从而实现基于链路的传输方案的动态适应,以保障QoS。从精确的信道探测不适合低复杂性IIoT设备的假设出发,我们研究了在传感能力有限的平台上进行信道状态识别的可行性。在此背景下,我们评估了不同的具有可变复杂度的监督学习算法对无线电链路状态推断的性能。我们的方法通过基于对单个接收包的信封分布的分析执行在线分类来提供快速的链路诊断。此外,该方法还考虑了有限采样频率、位深和移动平均滤波的影响,这些都是硬件受限平台的典型特征。在工业和办公环境中进行的实验活动的结果表明,LoS/NLoS无线电链路的分类精度很有希望。额外的测试表明,即使在低成本WSN节点中可用的低分辨率rssi样本,该方法也保持了良好的性能,这有利于其在实际工业物联网网络中的应用。
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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