OBLEA: A New Methodology to Optimise Bluetooth Low Energy Anchors in Multi-occupancy Location Systems

J. Ruiz, María Ángeles Verdejo-Espinosa, Alicia Montoro-Lendínez, M. Espinilla
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Abstract

Nowadays, it is becoming increasingly important to understand the multiple configuration factors of BLE anchors in indoor location systems. This task becomes particularly crucial in the context of activity recognition in multi-occupancy smart environments. Knowing the impact of the configuration of BLE anchors in an indoor location system allows us to distinguish the interactions performed by each inhabitant in a smart environment according to their proximity to each sensor. This paper proposes a new methodology, OBLEA, that determines the optimisation of Bluetooth Low Energy (BLE) anchors in indoor location systems, considering multiple BLE variables to increase flexibility and facilitate transferability to other environments. Concretely, we present a model based on a data-driven approach that considers configurations to obtain the best performing configuration with a minimum number of anchors. This methodology includes a flexible framework for the indoor space, the architecture to be deployed, which considers the RSSI value of the BLE anchors, and finally, optimisation and inference for indoor location. As a case study, OBLEA is applied to determine the location of ageing inhabitants in a nursing home in Alcaudete, Jaén (Spain). Results show the extracted knowledge related to the optimisation of BLE anchors involved in the case study.
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OBLEA:一种优化多占用定位系统中蓝牙低能量锚的新方法
目前,了解室内定位系统中BLE锚点的多种配置因素变得越来越重要。这项任务在多占用智能环境下的活动识别中变得尤为重要。了解室内定位系统中BLE锚点配置的影响,使我们能够根据每个居民与每个传感器的距离来区分智能环境中每个居民所进行的交互。本文提出了一种新的方法OBLEA,该方法确定了室内定位系统中蓝牙低功耗(BLE)锚点的优化,考虑了多个BLE变量,以增加灵活性并促进可转移到其他环境。具体来说,我们提出了一个基于数据驱动方法的模型,该模型考虑配置以获得具有最少锚点数量的最佳性能配置。这种方法包括室内空间的灵活框架,要部署的架构,考虑BLE锚点的RSSI值,最后是室内位置的优化和推断。作为一个案例研究,OBLEA被应用于确定jasaman(西班牙)Alcaudete养老院老年居民的位置。结果显示,提取的知识与案例研究中涉及的BLE锚的优化有关。
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