Affiliation:
1. School of Information and Communications, Guilin University of Electronic Technology, Guilin 541004, China
Abstract
In an unmanned aerial vehicles ad hoc network (UANET), UAVs communicate with each other to accomplish intricate tasks collaboratively and cooperatively. However, the high mobility of UAVs, the variable link quality, and heavy traffic loads can lead to difficulties in finding an optimal communication path. We proposed a delay-aware and link-quality-aware geographical routing protocol for a UANET via the dueling deep Q-network (DLGR-2DQ) to address these problems. Firstly, the link quality was not only related to the physical layer metric, the signal-to-noise ratio, which was influenced by path loss and Doppler shifts, but also the expected transmission count of the data link layer. In addition, we also considered the total waiting time of packets in the candidate forwarding node in order to decrease the end-to-end delay. Then, we modeled the packet-forwarding process as a Markov decision process. We crafted an appropriate reward function that utilized the penalty value for each additional hop, total waiting time, and link quality to accelerate the learning of the dueling DQN algorithm. Finally, the simulation results illustrated that our proposed routing protocol outperformed others in terms of the packet delivery ratio and the average end-to-end delay.
Funder
National Science Foundation of Guangxi Province
Subject
Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry
Reference45 articles.
1. UAV-Assisted Emergency Networks in Disasters;Zhao;IEEE Wirel. Commun.,2019
2. Review of using small UAV based meteorological measurements for road weather management;Sziroczak;Prog. Aerosp. Sci.,2022
3. Adao, T., Hruška, J., Pádua, L., Bessa, J., Peres, E., Morais, R., and Sousa, J.J. (2017). Hyperspectral imaging: A review on UAV-based sensors, data processing and applications for agriculture and forestry. Remote Sens., 9.
4. Hyperspectral imaging with UAVs for mineral exploration;Booysen;Uropean Assoc. Geosci. Eng.,2021
5. Bai, J., Zeng, Z., Wang, T., Zhang, S., Xiong, N.N., and Liu, A. (2022). TANTO: An Effective Trust based Unmanned Aerial Vehicle Computing System for the Internet-of-Things. IEEE Internet Things J.
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