智慧城市应用中空中传感器节点的机会式基于rl的WiFi接入

Mehmet Ariman, Lal Verda Çakır, Mehmet Özdem, B. Canberk
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引用次数: 0

摘要

在无线技术改进的推动下,无人驾驶飞行器正变得越来越普遍。然而,用于通信的WiFi技术在其频谱中具有高度拥挤和不均匀分布的信道占用。为了克服这一点,需要有效利用WiFi资源。因此,本文提出了基于机会强化学习的WiFi接入方案,该方案利用间歇性信道占用来解决NP-hard信道分配问题。结果表明,与普通的基于信道评分的选择算法相比,该模型将无人机的精确信道选择提高了9%,准确率达到91%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Opportunistic RL-based WiFi Access for Aerial Sensor Nodes in Smart City Applications
Unmanned air vehicles are becoming widespread, driven by improved wireless technologies. However, the WiFi technology used for communication has a highly crowded and unevenly distributed channel occupancy in its spectrum. To overcome this, WiFi resources need to be utilized efficiently. Therefore, this paper proposes the Opportunistic Reinforcement Learning-based WiFi Access scheme, which exploits intermittent channel occupancy to solve the NP-hard channel assignment problem. As a result, the proposed model has improved the accurate channel selection on the UAVs by 9%, performing 91% accuracy, compared to the trivial channel scoring-based selection algorithms.
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