LoRaWAN中用于定位的机器学习:数据增强的案例研究

Luz E. Marquez, Maria Calle
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引用次数: 0

摘要

智能城市等物联网应用的增长导致连接对象数量的增加。在某些情况下,此类应用程序的要求是监视和管理设备的位置。本文提出了一种基于LoRaWAN网络中接收到的信号电平来定位不同节点的方法。目标是用有限的数据量检测至少100米的节点位置变化。这个过程包括数据分析、预处理和评估不同的机器学习算法来定位节点。由于所选算法需要大量数据,因此工作包括应用一种易于实现的数据增强技术。结果表明,最优算法为K近邻算法,平均误差为12 m。
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Machine learning for localization in LoRaWAN: a case study with data augmentation
The growth of Internet of Things applications such as smart cities, leads to an increase in the number of connected objects. In some cases, a requirement of such applications is the location of devices for monitoring and management. This paper develops a methodology for the location of different nodes based on the signal levels received in a LoRaWAN network. The goal is to detect changes in node positions of at least 100 m with a limited amount of data. The procedure involves data analysis, preprocessing, and evaluation of different machine learning algorithms to locate the nodes. Due to the large data volume requirements for the selected algorithms, the work includes the application of a simple-to-implement data augmentation technique. As a result, the best performing algorithm was K Nearest Neighbors with an average error of 12 m.
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