PARouting: Prediction-supported adaptive routing protocol for FANETs with deep reinforcement learning

Cunzhuang Liu , Yixuan Wang , Qi Wang
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引用次数: 0

Abstract

Flying Ad-hoc Networks (FANETs) are becoming increasingly popular for various applications. Effective routing protocols for FANETs are essential yet challenging due to the high dynamic nature of Unmanned Aerial Vehicles (UAVs). Most existing routing protocols require the periodic broadcast of Hello packets to maintain neighbor tables that store the locations of neighbors, mobility patterns, etc. However, the frequent exchange of Hello packets leads to a large routing overhead in FANETs. This paper proposes PARouting, a prediction-supported adaptive routing protocol with Deep Reinforcement Learning, which introduces a novel UAV mobility prediction algorithm using Deep Learning (DL-UMP) to estimate the locations of UAVs. Based on DL-UMP, we design an adaptive Hello packet mechanism to realize on-demand broadcasting of Hello packets, which reduces routing overhead. The routing process is formulated as a Partially Observable Markov Decision Process, and a new Q-network structure is proposed to select the optimal next hop. Simulation results confirm the accuracy of the DL-UMP and show that PARouting outperforms benchmark routing protocols in terms of packet delivery rate, end-to-end delay, and routing overhead.

PARouting:具有深度强化学习的FANET的预测支持自适应路由协议
飞行自组织网络(FANET)对于各种应用正变得越来越流行。由于无人机的高动态特性,FANET的有效路由协议至关重要,但具有挑战性。大多数现有的路由协议都要求定期广播Hello数据包,以维护存储邻居位置、移动模式等的邻居表。然而,Hello数据的频繁交换导致FANET中的路由开销很大。本文提出了一种基于深度强化学习的预测支持自适应路由协议PARouting,该协议引入了一种新的无人机移动预测算法,该算法使用深度学习(DL-UMP)来估计无人机的位置。在DL-UMP的基础上,设计了一种自适应Hello包机制,实现了Hello包的点播,降低了路由开销。将路由过程公式化为部分可观测马尔可夫决策过程,并提出了一种新的Q网络结构来选择最优下一跳。仿真结果证实了DL-UMP的准确性,并表明PARouting在数据包传递率、端到端延迟和路由开销方面优于基准路由协议。
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