Comparison of supervised learning-based indoor localization techniques for smart building applications

M. W. P. Maduraga, R. Abeysekara
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引用次数: 3

Abstract

Smart buildings involve modern applications of the Internet of Things (IoT). Intelligent buildings could include applications based on indoor localization, such as tracking the real-time location of humans inside the building using sensors. Mobile sensor nodes can emit electromagnetic signals in an ambient sensor network, and fixed sensors in the same network can detect the Received Signal Strength (RSS) from its mobile sensor nodes. However, many works exist for RSS-based indoor localization that use deterministic algorithms. It's complicated to suggest a generated mechanism for any indoor localization application due to the fluctuation of RSSI values. This paper has investigated supervised machine learning algorithms to obtain the accurate location of an object with the aid of Received Signal Strengths Indicator (RSSI) values measured through sensors. An available RSSI data set was trained using multiple supervised learning algorithms to predict the location and their average algorithm errors were compared.
基于监督学习的智能建筑室内定位技术比较
智能建筑涉及物联网(IoT)的现代应用。智能建筑可以包括基于室内定位的应用程序,例如使用传感器跟踪建筑物内人类的实时位置。移动传感器节点可以在环境传感器网络中发射电磁信号,同一网络中的固定传感器可以检测来自其移动传感器节点的接收信号强度(RSS)。然而,许多基于rss的室内定位工作使用确定性算法。对于任何室内定位应用,由于RSSI值的波动,很难提出一个生成机制。本文研究了监督机器学习算法,通过传感器测量的接收信号强度指标(RSSI)值来获得物体的准确位置。使用多种监督学习算法训练可用的RSSI数据集来预测位置,并比较它们的平均算法误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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