Skip to the main content

Original scientific paper

https://doi.org/10.24138/jcomss-2024-0020

Indoor Localization of Industrial IoT Devices and Applications Based on Recurrent Neural Networks

Ivan Marasović ; University of Split, Croatia
Goran Majić orcid id orcid.org/0000-0002-2130-165X ; University of Split, Croatia *
Ivan Škalic ; University of Split, Croatia
Željka Tomasović ; University of Zadar, Croatia

* Corresponding author.


Full text: english pdf 2.286 Kb

page 137-145

downloads: 263

cite


Abstract

Industrial Internet of Things (IIoT) has become an indispensable element of smart industrial facilities, predicted to continue to grow at a rapid rate. Wireless technologies have become a standard part of today’s industrial facilities with applications including programming and control of electric drives, remote system and environment monitoring and fault diagnostics of industrial equipment. However, installation of physical connections can be time consuming and require substantial economic resources, especially when considering long-term maintenance costs. With that regard, IoT applications that use sensor technology, RFID technology, network communication, data mining and machine learning could prove to be quite efficient in solving the previously presented problem of localization. A new indoor localization algorithm has been introduced based on recurring neural networks (RNNs) for the positioning of indoor devices. Experiments were conducted in relatively complex surroundings of a faculty building. According to experimental results, the presented system surpasses the state-of-the-art algorithms and can achieve 98.6% localization accuracy of indoor devices.

Keywords

Wi-Fi; Signal Strength; localization; IIoT

Hrčak ID:

315208

URI

https://hrcak.srce.hr/315208

Publication date:

12.3.2024.

Visits: 677 *