Enhancing Indoor Positioning Accuracy with WLAN and WSN: A QPSO Hybrid Algorithm with Surface Tessellation

Algorithms Pub Date : 2024-07-25 DOI:10.3390/a17080326
Edgar Scavino, Mohd Amiruddin Abd Rahman, Zahid Farid, Sadique Ahmad, M. Asim
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Abstract

In large indoor environments, accurate positioning and tracking of people and autonomous equipment have become essential requirements. The application of increasingly automated moving transportation units in large indoor spaces demands a precise knowledge of their positions, for both efficiency and safety reasons. Moreover, satellite-based Global Positioning System (GPS) signals are likely to be unusable in deep indoor spaces, and technologies like WiFi and Bluetooth are susceptible to signal noise and fading effects. For these reasons, a hybrid approach that employs at least two different signal typologies proved to be more effective, resilient, robust, and accurate in determining localization in indoor environments. This paper proposes an improved hybrid technique that implements fingerprinting-based indoor positioning using Received Signal Strength (RSS) information from available Wireless Local Area Network (WLAN) access points and Wireless Sensor Network (WSN) technology. Six signals were recorded on a regular grid of anchor points covering the research surface. For optimization purposes, appropriate raw signal weighing was applied in accordance with previous research on the same data. The novel approach in this work consisted of performing a virtual tessellation of the considered indoor surface with a regular set of tiles encompassing the whole area. The optimization process was focused on varying the size of the tiles as well as their relative position concerning the signal acquisition grid, with the goal of minimizing the average distance error based on tile identification accuracy. The optimization process was conducted using a standard Quantum Particle Swarm Optimization (QPSO), while the position error estimate for each tile configuration was performed using a 3-layer Multilayer Perceptron (MLP) neural network. These experimental results showed a 16% reduction in the positioning error when a suitable tile configuration was calculated in the optimization process. Our final achieved value of 0.611 m of location incertitude shows a sensible improvement compared to our previous results.
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利用 WLAN 和 WSN 提高室内定位精度:采用曲面细分的 QPSO 混合算法
在大型室内环境中,人员和自动设备的精确定位和跟踪已成为基本要求。在大型室内空间中应用越来越多的自动移动运输装置,出于效率和安全考虑,需要精确了解它们的位置。此外,基于卫星的全球定位系统(GPS)信号很可能无法在室内深处使用,而 WiFi 和蓝牙等技术则容易受到信号噪声和衰减效应的影响。由于这些原因,事实证明,至少采用两种不同信号类型的混合方法在确定室内环境定位方面更加有效、灵活、稳健和准确。本文提出了一种改进的混合技术,利用无线局域网(WLAN)接入点和无线传感器网络(WSN)技术提供的接收信号强度(RSS)信息,实现基于指纹的室内定位。在覆盖研究表面的锚点规则网格上记录了六个信号。为达到优化目的,根据以往对相同数据的研究,对原始信号进行了适当的称重。这项工作中的新方法包括对所考虑的室内表面进行虚拟细分,用一组规则的瓷砖覆盖整个区域。优化过程的重点是改变瓦片的大小以及它们在信号采集网格中的相对位置,目标是根据瓦片识别精度最大限度地减少平均距离误差。优化过程采用标准的量子粒子群优化(QPSO),而每个瓦片配置的位置误差估计则采用 3 层多层感知器(MLP)神经网络。这些实验结果表明,在优化过程中计算出合适的瓷砖配置后,定位误差减少了 16%。与之前的结果相比,我们最终实现的 0.611 米定位误差值有了明显改善。
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