Smartphone Based Indoor Position Estimation
Lasini Wickramasinghe . Maheshi B . Dissanayake
Department of Electrical and Electronic Engineering, Faculty of Engineering, University of Peradeniya, Peradeniya, 20400, Sri Lanka., Email: lasini2013@gmail.com, Department of Electrical and Electronic Engineering, Faculty of Engineering, University of Peradeniya, Peradeniya, 20400, Sri Lanka, Email: maheshid@ee.pdn.ac.lk
Received in final form on January 22, 2022
Abstract
Positioning or location estimation systems are adopted widely in modern
world, to locate objects or users. Current broadly adopted positioning sys-
tems such as global positioning system (GPS) or global navigation satellite
system (GNSS) are limited to outdoor applications and provide poor locating accuracy for indoor positing with short movement span. Through
this study we aim to evaluate the possibility of utilizing received signal
strength indicator (RSSI) value of a smartphone antenna with the com-
bination of trilateration theory and feed-forward back-propagation neural
network (FFBPNN) to identify the correct indoor location of a person in
two-dimensional (2D) space. This research area has recently attracted a
great deal of attention especially in assisted living applications. For the
evaluation of final outcome, we have selected one of the most powerful statistical accuracy measure; mean absolute percentage error (MAPE). The
results show that the proposed indoor positioning system has 73.4% of
accuracy which can provide acceptable localization accuracy as same as
the traditional approaches.
Keywords
Indoor positioning; smartphone; RSSI; FFBPNN; trilateration; accuracy measure; MAPE
Cite This Article
Lasini Wickramasinghe . Maheshi B. Dissanayake, Smartphone Based Indoor Position Estimation, J.Innovation Sciences and Sustainable Technologies, 2(2)(2022), 99-106. https://doie.org/10.0608/JISST.2022522969
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