On Improving 5G Internet of Radio Light Security Based on LED Fingerprint Identification Method
Abstract
:1. Introduction
- We introduce the LED fingerprint model based on the characteristics of the LED equivalent circuit and design the LED fingerprint extraction and identification mechanisms—by fitting the power spectrum. The parameters which represent the LED’s inherent and stable nature are chosen to constitute the LED feature vector. The feature vector of each LED forms its fingerprint. A multi-SVM (Support Vector Machine) classifier is investigated theoretically to illustrate the process of the fingerprint identification.
- We illustrate the conceptual design of a typical 5G VLC multi-access scenario using the proposed security solution. We present how LED fingerprinting could be used in real-life systems. To detail the process, we choose the IoRL project as an exemplary test system.
- We demonstrate the feasibility and accuracy of this method in a practical indoor VLC-based 5G network. During experimental evaluation, four identical LEDs were used to extract their fingerprints from the emitted 5G NR signals. Four machine-learning-based classifiers, i.e., decision tree, Naïve Bayes, SVM (Support Vector Machine), and KNN (K-Nearest-Neighbor) were employed to identify the extracted LED fingerprints. It turned out that the best results were achieved for the SVM classifier, which reached the accuracy of 97.1%.
2. LED Fingerprint Verification Mechanism
2.1. LED Fingerprint Model
2.2. Extraction and Identification Mechanisms
2.3. Implementation of Features for Extraction and Identification
2.4. Envisioned Applications for the IoRL Security Framework
- Step 0: Register LED fingerprint and their localization database (this information is established and inserted to the database before LED installation)—the database is located at the security system.
- Step 1: A heartbeat-like protocol (UE <-> security subsystem) with which the security subsystem would be able to periodically poll the UE to initiate the LED fingerprint extraction process and securely transmit the determined fingerprint back to the security subsystem.
- Step 2: The measurement-based protocol (UE <-> LED) that would operate between the selected UE and the LED which would allow to determine the fingerprint of the LED under investigation.
- Step 3: The mechanism at the security subsystem that would compare the fingerprint of the chosen LED and its location with the corresponding data stored in the database.
- Step 4: In the case of a detected security breach, the security system can install rules on the SDN controller to block incoming/outgoing traffic to the LED and notify the administrators.
3. Demonstration and Evaluation
3.1. Demonstration Setup
3.2. Results and Analysis
4. Conclusions and Future Work
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Shi, D.; Zhang, X.; Shi, L.; Vladimirescu, A.; Mazurczyk, W.; Cabaj, K.; Meunier, B.; Ali, K.; Cosmas, J.; Zhang, Y. On Improving 5G Internet of Radio Light Security Based on LED Fingerprint Identification Method. Sensors 2021, 21, 1515. https://doi.org/10.3390/s21041515
Shi D, Zhang X, Shi L, Vladimirescu A, Mazurczyk W, Cabaj K, Meunier B, Ali K, Cosmas J, Zhang Y. On Improving 5G Internet of Radio Light Security Based on LED Fingerprint Identification Method. Sensors. 2021; 21(4):1515. https://doi.org/10.3390/s21041515
Chicago/Turabian StyleShi, Dayu, Xun Zhang, Lina Shi, Andrei Vladimirescu, Wojciech Mazurczyk, Krzysztof Cabaj, Benjamin Meunier, Kareem Ali, John Cosmas, and Yue Zhang. 2021. "On Improving 5G Internet of Radio Light Security Based on LED Fingerprint Identification Method" Sensors 21, no. 4: 1515. https://doi.org/10.3390/s21041515