Smart City Gnosys

Smart city article details

Title Rssi And Machine Learning-Based Indoor Localization Systems For Smart Cities
ID_Doc 47118
Authors Rathnayake R.M.M.R.; Maduranga M.W.P.; Dissanayake M.B.
Year 2023
Published 7th SLAAI - International Conference on Artificial Intelligence, SLAAI-ICAI 2023
DOI http://dx.doi.org/10.1109/SLAAI-ICAI59257.2023.10365021
Abstract Widespread use of the Internet of Things (IoT) is being made in a number of application areas to save costs and improve performance. These types of applications also include services that are dependent on localization. When a sensor node is localized, an IoT network may use that information to identify it. A Received Signal Strength Indicator (RSSI), which gauges the intensity of the signal received from the sensor nodes, is typically used in conjunction with supervised Machine Learning (ML) algorithms in localization methods. In this study, a unique indoor and outdoor localization and navigation technique is presented that makes use of LoRA nodes and a highly accurate machine learning model. The suggested method has cutting-edge features and shows considerable gains in accuracy and dependability. These discoveries offer potential answers for practical applications and boost localization technology. © 2023 IEEE.
Author Keywords Indoor localization; LoRA; Machine Learning; Smart cities


Similar Articles


Id Similarity Authors Title Published
47119 View0.957Rathnayake R.M.M.R.; Maduranga M.W.P.; Tilwari V.; Dissanayake M.B.Rssi And Machine Learning-Based Indoor Localization Systems For Smart CitiesEng, 4, 2 (2023)
35618 View0.924Ingabire W.; Larijani H.; Gibson R.M.Lora Rssi Based Outdoor Localization In An Urban Area Using Random Neural NetworksIntelligent Computing - Proceedings of the 2021 Computing Conference (2021)
57348 View0.919Maduranga M.W.P.; Lakmal H.K.I.S.; Kalansooriya L.P.Three-Dimensional Wireless Indoor Localization With Machine Learning Algorithms For Location-Based Iot ApplicationsCommunications in Computer and Information Science, 1995 (2024)
4638 View0.899Dogan D.; Dalveren Y.; Kara A.; Derawi M.A Simplified Method Based On Rssi Fingerprinting For Iot Device Localization In Smart CitiesIEEE Access, 12 (2024)
47121 View0.896Dinev D.; Haka A.Rssi Study Of Wireless Internet Of Things TechnologiesJournal of Physics: Conference Series, 2339, 1 (2022)
31239 View0.885Varma P.S.; Anand V.Indoor Localization For Iot Applications: Review, Challenges And Manual Site Survey Approach2021 IEEE Bombay Section Signature Conference, IBSSC 2021 (2021)
30684 View0.884Alsmadi L.; Kong X.; Sandrasegaran K.Improve Indoor Positioning Accuracy Using Filtered Rssi And Beacon Weight Approach In Ibeacon NetworkProceedings - 2019 19th International Symposium on Communications and Information Technologies, ISCIT 2019 (2019)
35934 View0.884Pimpinella A.; Redondi A.E.C.; Nicoli M.; Cesana M.Machine Learning Based Localization Of Lorawan Devices Via Inter-Technology Knowledge Transfer2020 IEEE International Conference on Communications Workshops, ICC Workshops 2020 - Proceedings (2020)
40891 View0.881Alqahtani A.A.S.; Alamleh H.Optimizing Smart Home Performance And User Convenience With Rssi-Based Proximity Detection2023 IEEE 13th Annual Computing and Communication Workshop and Conference, CCWC 2023 (2023)
45937 View0.88Chen B.; Ma J.; Zhang L.; Zhou J.; Fan J.; Lan H.Research Progress Of Wireless Positioning Methods Based On RssiElectronics (Switzerland), 13, 2 (2024)