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Machine Learning Framework for Sensing and Modeling Interference in IoT Frequency Bands

机译:机器学习框架,用于传感和建模IOT频带的干扰

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摘要

Spectrum scarcity has surfaced as a prominent concern in wireless radio communications with the emergence of new technologies over the past few years. As a result, there is a growing need for better understanding of the spectrum occupancy with newly emerging access technologies supporting the Internet of Things. In this article, we present a framework to capture and model the traffic behavior of short-time spectrum occupancy for Internet-of-Things (IoT) applications in the shared bands to determine the existing interference. The proposed capturing method utilizes a software-defined radio to monitor the short bursts of IoT transmissions by capturing the time-series data which is converted to power spectral density to extract the observed occupancy. Furthermore, we propose the use of an unsupervised machine learning technique to enhance conventionally implemented energy detection methods. Our experimental results show that the temporal and frequency behavior of the spectrum can be well captured using the combination of two models, namely, semi-Markov chains and a Poisson-distribution arrival rate. We conduct an extensive measurement campaign in different urban environments and incorporate the spatial effect on the IoT shared spectrum.
机译:在过去几年中,频谱稀缺作为无线无线电通信中的突出问题浮出水面。因此,越来越需要更好地了解频谱占用,与支持物联网的新出现的访问技术。在本文中,我们提出了一个框架来捕获和模拟短时间频谱占用的流行行为,以便在共享频段中的内部互联网(物联网)应用程序来确定现有的干扰。所提出的捕获方法利用软件定义的无线电来通过捕获转换为功率谱密度的时间序列数据来监视IoT传输的短脉冲突发,以提取观察到的占用。此外,我们提出了使用无监督的机器学习技术来增强常规实施的能量检测方法。我们的实验结果表明,可以使用两种模型的组合,即半马尔可夫链和泊松分布到达率良好捕获光谱的时间和频率行为。我们在不同的城市环境中进行了广泛的测量活动,并纳入了物联网共享频谱的空间效果。

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