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A Primer on Real-world RSS-based Outdoor NB-IoT Localization

机译:基于RSS的现实世界户外NB-IoT本地化入门

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Apart from long range communication, Low Power Wide Area Networks (LPWAN) are used to locate Internet of Things (IoT) devices. With hundreds of networks being deployed in a short amount of time, NarrowBand IoT (NB-IoT) is stealing the LPWAN market shares from its competitors. The deep indoor coverage of NB-IoT guarantees the energy-efficient communication link between a device and a nearby base station. We believe we are the first to perform signal strength-based outdoor localization experiments with this up-and-coming technology. Instead of simulating the experiments, we face the challenges of working with real measurements in a real-world city-scale environment. In contrast to satellite-based solutions, the position of a mobile device equipped with a small battery can be estimated in indoor and outdoor environments for several years. In this research, we investigate the accuracy of NB-IoT localization, using the Received Signal Strength (RSS) to a single NB-IoT base station antenna. We evaluate three outdoor RSS-based algorithms: proximity, ranging and optimized fingerprinting. The experiments result in a mean location estimation error of 340 m, 320 m and 204 m, respectively.
机译:除了远程通信之外,低功耗广域网(LPWAN)还用于定位物联网(IoT)设备。随着短时间内部署数百个网络,NarrowBand IoT(NB-IoT)抢夺了竞争对手的LPWAN市场份额。 NB-IoT的室内深度覆盖确保了设备与附近基站之间的节能通信链接。我们相信,我们是第一个使用这项新兴技术进行基于信号强度的户外定位实验的公司。除了模拟实验之外,我们还面临在现实世界中的城市规模环境中进行实际测量的挑战。与基于卫星的解决方案相比,配备小型电池的移动设备的位置可以在室内和室外环境中估计数年。在这项研究中,我们使用单个NB-IoT基站天线的接收信号强度(RSS)来研究NB-IoT定位的准确性。我们评估了三种基于RSS的室外算法:接近度,测距和优化的指纹识别。实验得出的平均位置估计误差分别为340 m,320 m和204 m。

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