利用机器学习增强窄带物联网的覆盖范围

Marwa Chafii, F. Bader, J. Palicot
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引用次数: 38

摘要

窄带物联网(NB-IoT)是3GPP最近在Release-13中提出的一项技术。它提供低能耗和广泛的覆盖范围,以满足其跨越社会,工业和环境方面的不同应用的要求。就上行传输的最大耦合损耗而言,增加传输的重复次数被选为一种有希望的方法,可以将NB-IoT的覆盖范围提高到164 dB,与传统LTE技术相比,这是一项重大改进,特别是在深度覆盖用户方面。但是,大量的重复操作会降低系统的吞吐量,增加物联网设备的能耗,从而降低设备的电池寿命,增加设备的维护成本。在这项工作中,我们提出了一种基于机器学习算法增强NB-IoT覆盖的新方法。动态频谱接入可以减少所需的重复次数,增加覆盖范围,降低能耗,而不是采用随机频谱接入过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing coverage in narrow band-IoT using machine learning
Narrow Band-Internet of Thing (NB-IoT) is a recently proposed technology by 3GPP in Release-13. It provides low energy consumption and wide coverage in order to meet the requirements of its diverse applications that span social, industrial and environmental aspects. Increasing the number of repetitions of the transmission has been selected as a promising approach to enhance the coverage in NB-IoT up to 164 dB in terms of maximum coupling loss for uplink transmissions, which is a significant improvement compared with legacy LTE technologies, especially to serve users in deep coverage. However, a large number of repetitions reduces the system throughput and increases the energy consumption of the IoT devices, which reduces their battery lifetime and increases their maintenance cost. In this work, we propose a new method for enhancing the NB-IoT coverage based on machine learning algorithms. Instead of employing a random spectrum access procedure, dynamic spectrum access can reduce the number of required repetitions, increase the coverage, and reduce the energy consumption.
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