利用统计技术描述和分析 Sigfox 接收信号强度指标数据集

Román Lara-Cueva, Edwin Sebastián Yandún-Imbaquingo, Elvis D. Bustamante-Lucio
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引用次数: 0

摘要

低功耗广域网(LPWAN)技术不断发展,对物联网(IoT)应用的开发至关重要。Sigfox LPWAN 网络的特点是远距离覆盖、低成本和低功耗。本文分析了一组 5174 个值,其中包含 1606 个空 RSSI 数据,这些数据是利用 Sipy 模块和 MicroPython 获得的,它们提供了部署在厄瓜多尔基多的几个点的覆盖图,分辨率为 200 米。根据已知基站获得的测量结果,评估了调整网络测量集的分布类型,并确定了郊区环境中的最佳 900 MHz 传播模型。结果,使用反正态分布法预测了原始值中 RSSI 的损失值,发现它们符合逻辑分布。基站数据采用 MATLAB 设计的数据增强算法,确定斯坦福大学临时(SUI)模型可减少曲线趋势中的精度误差,不会出现大于 5 dB 的变化,使数据曲线拟合精度达到 97%。
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Description and analysis of Sigfox received signal strength indicator dataset by using statistical techniques
Low power wide area network (LPWAN) technology has expanded and is essential in the development of applications for the internet of things (IoT). The Sigfox LPWAN network is characterized by its long-range coverage, low cost and power consumption. In this article, a set of 5174 values is analyzed, containing 1606 null RSSI data, obtained with the Sipy module and MicroPython, which provide a coverage map of several points with a resolution of 200 meters deployed in Quito–Ecuador. It is evaluated the type of distribution to which the set of network measurements is adjusted and an optimal 900 MHz propagation model in suburban environments is determined from the measurements obtained from the known base station. As a result, the lost values of RSSI were predicted using the inverse normal distribution method in the original values, observing that they conform to a logistic distribution. The data from the base station were subjected to a data augmentation algorithm designed in MATLAB, determining that the stanford university interim (SUI) model reduces the precision error in the trend of the curve by not presenting changes greater than 5 dB, achieving a precision of 97% with respect to the fit of the curve of the data.
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