Position Vectors Based Efficient Indoor Positioning System

With the advent and advancements in the wireless technologies, Wi-Fi fingerprinting-based Indoor Positioning System (IPS) has become one of the most promising solutions for localization in indoor environments. Unlike the outdoor environment, the lack of line-of-sight propagation in an indoor environ...

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Veröffentlicht in:Computers, materials & continua materials & continua, 2021, Vol.67 (2), p.1781-1799
Hauptverfasser: Javed, Ayesha, Yasir Umair, Mir, Mirza, Alina, Wakeel, Abdul, Subhan, Fazli, Zada Khan, Wazir
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container_issue 2
container_start_page 1781
container_title Computers, materials & continua
container_volume 67
creator Javed, Ayesha
Yasir Umair, Mir
Mirza, Alina
Wakeel, Abdul
Subhan, Fazli
Zada Khan, Wazir
description With the advent and advancements in the wireless technologies, Wi-Fi fingerprinting-based Indoor Positioning System (IPS) has become one of the most promising solutions for localization in indoor environments. Unlike the outdoor environment, the lack of line-of-sight propagation in an indoor environment keeps the interest of the researchers to develop efficient and precise positioning systems that can later be incorporated in numerous applications involving Internet of Things (IoTs) and green computing. In this paper, we have proposed a technique that combines the capabilities of multiple algorithms to overcome the complexities experienced indoors. Initially, in the database development phase, Motley Kennan propagation model is used with Hough transformation to classify, detect, and assign different attenuation factors related to the types of walls. Furthermore, important parameters for system accuracy, such as, placement and geometry of Access Points (APs) in the coverage area are also considered. New algorithm for deployment of an additional AP to an already existing infrastructure is proposed by using Genetic Algorithm (GA) coupled with Enhanced Dilution of Precision (EDOP). Moreover, classification algorithm based on k-Nearest Neighbors (k-NN) is used to find the position of a stationary or mobile user inside the given coverage area. For k-NN to provide low localization error and reduced space dimensionality, three APs are required to be selected optimally. In this paper, we have suggested an idea to select APs based on Position Vectors (PV) as an input to the localization algorithm. Deducing from our comprehensive investigations, it is revealed that the accuracy of indoor positioning system using the proposed technique unblemished the existing solutions with significant improvements.
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subjects Algorithms
Dilution
Error reduction
Fingerprinting
Genetic algorithms
Geometric accuracy
Hough transformation
Indoor environments
Internet of Things
Localization
Propagation
title Position Vectors Based Efficient Indoor Positioning System
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