A Machine Learning-Based Hybrid Approach for Safeguarding VLC-Enabled Drone Systems

This paper explores the physical layer security performance of collaborative drone fleets enabled by visible light communication (VLC) in a multi-eavesdropper scenario, where multiple drones leverage VLC to serve terrestrial users. To strengthen system security, we formulate a sum worst-case secrecy...

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Published in:Drones
Main Authors: Ge Shi, Hongyang Zhou, Huixin Wu, Fupeng Wei, Wei Cheng
Format: Article
Language:English
Published: MDPI AG 2025-10-01
Subjects:
Online Access:https://www.mdpi.com/2504-446X/9/10/721
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author Ge Shi
Hongyang Zhou
Huixin Wu
Fupeng Wei
Wei Cheng
author_facet Ge Shi
Hongyang Zhou
Huixin Wu
Fupeng Wei
Wei Cheng
author_sort Ge Shi
collection DOAJ
container_title Drones
description This paper explores the physical layer security performance of collaborative drone fleets enabled by visible light communication (VLC) in a multi-eavesdropper scenario, where multiple drones leverage VLC to serve terrestrial users. To strengthen system security, we formulate a sum worst-case secrecy rate maximization problem. To address the non-convex optimization challenge of this problem, we develop two innovative Q-learning-based position decision algorithms (Q-PDA and Q-PDA-lite) with a dynamic reward mechanism, allowing drones to adaptively optimize their positions. Additionally, we propose an enhanced Tabu Search-based grouping algorithm (TS-GA) to establish the suboptimal user equipment (UE)–drone association by balancing candidate solution exploration and tabu constraint exploitation. Simulation results demonstrate that the proposed Q-PDA and Q-PDA-lite achieve worst-case secrecy rates significantly exceeding those of Random-PDA and K-means-PDA. While Q-PDA-lite exhibits 2% lower performance than Q-PDA, it offers reduced complexity. Additionally, the proposed TS-GA achieves a worst-case secrecy rate that substantially outperforms random grouping, UE-channel-gain-based grouping, and channel-gain-based grouping. Collectively, the hybrid approach integrating Q-PDA and TS-GA achieves 10% near-global optimality with guaranteed convergence, while preserving computational efficiency. Furthermore, this hybrid approach outperforms other combinations in terms of security metrics.
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spelling doaj-art-2df8116d00a8486cb0b62bd06c4f54d22025-10-28T16:39:47ZengMDPI AGDrones2504-446X2025-10-0191072110.3390/drones9100721A Machine Learning-Based Hybrid Approach for Safeguarding VLC-Enabled Drone SystemsGe Shi0Hongyang Zhou1Huixin Wu2Fupeng Wei3Wei Cheng4The School of Information Engineering, North China University of Water Resources and Electric Power, Zhengzhou 450046, ChinaThe School of Information Engineering, North China University of Water Resources and Electric Power, Zhengzhou 450046, ChinaThe School of Information Engineering, North China University of Water Resources and Electric Power, Zhengzhou 450046, ChinaThe School of Information Engineering, North China University of Water Resources and Electric Power, Zhengzhou 450046, ChinaThe School of Electronics and Information, Northwestern Polytechnical University, Xi’an 710129, ChinaThis paper explores the physical layer security performance of collaborative drone fleets enabled by visible light communication (VLC) in a multi-eavesdropper scenario, where multiple drones leverage VLC to serve terrestrial users. To strengthen system security, we formulate a sum worst-case secrecy rate maximization problem. To address the non-convex optimization challenge of this problem, we develop two innovative Q-learning-based position decision algorithms (Q-PDA and Q-PDA-lite) with a dynamic reward mechanism, allowing drones to adaptively optimize their positions. Additionally, we propose an enhanced Tabu Search-based grouping algorithm (TS-GA) to establish the suboptimal user equipment (UE)–drone association by balancing candidate solution exploration and tabu constraint exploitation. Simulation results demonstrate that the proposed Q-PDA and Q-PDA-lite achieve worst-case secrecy rates significantly exceeding those of Random-PDA and K-means-PDA. While Q-PDA-lite exhibits 2% lower performance than Q-PDA, it offers reduced complexity. Additionally, the proposed TS-GA achieves a worst-case secrecy rate that substantially outperforms random grouping, UE-channel-gain-based grouping, and channel-gain-based grouping. Collectively, the hybrid approach integrating Q-PDA and TS-GA achieves 10% near-global optimality with guaranteed convergence, while preserving computational efficiency. Furthermore, this hybrid approach outperforms other combinations in terms of security metrics.https://www.mdpi.com/2504-446X/9/10/721unmanned aerial vehiclephysical layer securityQ-learning
spellingShingle Ge Shi
Hongyang Zhou
Huixin Wu
Fupeng Wei
Wei Cheng
A Machine Learning-Based Hybrid Approach for Safeguarding VLC-Enabled Drone Systems
unmanned aerial vehicle
physical layer security
Q-learning
title A Machine Learning-Based Hybrid Approach for Safeguarding VLC-Enabled Drone Systems
title_full A Machine Learning-Based Hybrid Approach for Safeguarding VLC-Enabled Drone Systems
title_fullStr A Machine Learning-Based Hybrid Approach for Safeguarding VLC-Enabled Drone Systems
title_full_unstemmed A Machine Learning-Based Hybrid Approach for Safeguarding VLC-Enabled Drone Systems
title_short A Machine Learning-Based Hybrid Approach for Safeguarding VLC-Enabled Drone Systems
title_sort machine learning based hybrid approach for safeguarding vlc enabled drone systems
topic unmanned aerial vehicle
physical layer security
Q-learning
url https://www.mdpi.com/2504-446X/9/10/721
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