AlKhonaini Arwa, Sheltami Tarek, Mahmoud Ashraf, Imam Muhammad
Computer Engineering Department, Interdisciplinary Research Center of Smart Mobility and Logistics, King Fahd University of Petroleum and Minerals, Dhahran 31261, Saudi Arabia.
Computing Department, Applied College, Imam Abdulrahman Bin Faisal University, Dammam 34212, Saudi Arabia.
Sensors (Basel). 2024 Mar 14;24(6):1870. doi: 10.3390/s24061870.
Unmanned Aerial Vehicles (UAVs) have gained significant popularity in both military and civilian applications due to their cost-effectiveness and flexibility. However, the increased utilization of UAVs raises concerns about the risk of illegal data gathering and potential criminal use. As a result, the accurate detection and identification of intruding UAVs has emerged as a critical research concern. Many algorithms have shown their effectiveness in detecting different objects through different approaches, including radio frequency (RF), computer vision (visual), and sound-based detection. This article proposes a novel approach for detecting and identifying intruding UAVs based on their RF signals by using a hierarchical reinforcement learning technique. We train a UAV agent hierarchically with multiple policies using the REINFORCE algorithm with entropy regularization term to improve the overall accuracy. The research focuses on utilizing extracted features from RF signals to detect intruding UAVs, which contributes to the field of reinforcement learning by investigating a less-explored UAV detection approach. Through extensive evaluation, our findings show the remarkable results of the proposed approach in achieving accurate RF-based detection and identification, with an outstanding detection accuracy of 99.7%. Additionally, our approach demonstrates improved cumulative return performance and reduced loss. The obtained results highlight the effectiveness of the proposed solution in enhancing UAV security and surveillance while advancing the field of UAV detection.
无人机(UAVs)因其成本效益和灵活性,在军事和民用应用中都广受欢迎。然而,无人机使用的增加引发了对非法数据收集风险和潜在犯罪用途的担忧。因此,准确检测和识别入侵无人机已成为一个关键的研究关注点。许多算法通过不同方法,包括射频(RF)、计算机视觉(视觉)和基于声音的检测,在检测不同物体方面显示出有效性。本文提出一种基于分层强化学习技术,通过入侵无人机的射频信号进行检测和识别的新方法。我们使用带有熵正则化项的REINFORCE算法,通过多个策略对无人机智能体进行分层训练,以提高整体准确性。该研究专注于利用从射频信号中提取的特征来检测入侵无人机,通过研究一种较少探索的无人机检测方法,为强化学习领域做出贡献。通过广泛评估,我们的研究结果表明所提方法在实现基于射频的准确检测和识别方面取得了显著成果,检测准确率高达99.7%。此外,我们的方法展示了改进的累积回报性能和减少的损失。所获结果突出了所提解决方案在增强无人机安全性和监控方面的有效性,同时推动了无人机检测领域的发展。