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Tag Estimation Method for ALOHA RFID System Based on Machine Learning Classifiers (CROSBI ID 313640)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Dujić Rodić, Lea ; ; Stančić, Ivo. ; Zovko, Kristina ; Perković, Toni ; Šolić, Petar Tag Estimation Method for ALOHA RFID System Based on Machine Learning Classifiers // Electronics (Basel), 11 (2022), 16; 2605, 20. doi: 10.3390/electronics11162605

Podaci o odgovornosti

Dujić Rodić, Lea ; ; Stančić, Ivo. ; Zovko, Kristina ; Perković, Toni ; Šolić, Petar

engleski

Tag Estimation Method for ALOHA RFID System Based on Machine Learning Classifiers

In the last two decades, Radio Frequency Identification (RFID) technology has attained prominent performance improvement and has been recognised as one of the key enablers of the Internet of Things (IoT) concepts. In parallel, extensive employment of Machine Learning (ML) algorithms in diverse IoT areas has led to numerous advantages that increase successful utilization in different scenarios. The work presented in this paper provides a use-case feasibility analysis of the implementation of ML algorithms for the estimation of ALOHA-based frame size in the RIFD Gen2 system. Findings presented in this research indicate that the examined ML algorithms can be deployed on modern state-of-the-art resource- constrained micro-controllers enhancing system throughput. In addition, such utilisation can cope with latency since the execution time is sufficient to meet protocol needs.

Internet of Things ; RFID tags, RFID reader ; Machine Learning ; tag estimate method ; microcontroller

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Podaci o izdanju

11 (16)

2022.

2605

20

objavljeno

2079-9292

10.3390/electronics11162605

Povezanost rada

Elektrotehnika, Računarstvo

Poveznice
Indeksiranost