| Literature DB >> 34883856 |
Amr Amrallah1, Ehab Mahmoud Mohamed2,3, Gia Khanh Tran1, Kei Sakaguchi1.
Abstract
Modern wireless networks are notorious for being very dense, uncoordinated, and selfish, especially with greedy user needs. This leads to a critical scarcity problem in spectrum resources. The Dynamic Spectrum Access system (DSA) is considered a promising solution for this scarcity problem. With the aid of Unmanned Aerial Vehicles (UAVs), a post-disaster surveillance system is implemented using Cognitive Radio Network (CRN). UAVs are distributed in the disaster area to capture live images of the damaged area and send them to the disaster management center. CRN enables UAVs to utilize a portion of the spectrum of the Electronic Toll Collection (ETC) gates operating in the same area. In this paper, a joint transmission power selection, data-rate maximization, and interference mitigation problem is addressed. Considering all these conflicting parameters, this problem is investigated as a budget-constrained multi-player multi-armed bandit (MAB) problem. The whole process is done in a decentralized manner, where no information is exchanged between UAVs. To achieve this, two power-budget-aware PBA-MAB) algorithms, namely upper confidence bound (PBA-UCB (MAB) algorithm and Thompson sampling (PBA-TS) algorithm, were proposed to realize the selection of the transmission power value efficiently. The proposed PBA-MAB algorithms show outstanding performance over random power value selection in terms of achievable data rate.Entities:
Keywords: dynamic spectrum access; multi-armed bandit; quality of service; reinforcement learning; unmanned aerial vehicles
Mesh:
Year: 2021 PMID: 34883856 PMCID: PMC8659511 DOI: 10.3390/s21237855
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1UAV surveillance-system-assisted DSA for a metropolitan post-disaster area.
Simulation parameters.
| Notation | Value |
|---|---|
| No. of armed bandits | 10 |
| Simulation area | 5 km × 5 km |
| PU Tx power | 24 dBm |
|
| 30 dBm |
|
| 10 MHz |
|
| 5.8 GHz |
|
| |
|
| 3 |
|
| 30 dB |
|
| 5 dB |
|
| −100 dBm |
|
| 0.5 |
Figure 2Distribution of PUs and SUs Tx/Rx pairs.
Figure 3Normalized average sum rate against number of ETC gates using 10 UAVs.
Figure 4Normalized average sum rate against number of UAVs using 10 ETC gates.
Figure 5Convergence of normalized average sum rate using 10 ETC gates and 10 UAVs.
Figure 6Convergence of normalized average sum rate using 10 ETC gates and 30 UAVs.