Submitted:
07 April 2025
Posted:
08 April 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Related Works
3. System Architecture
- 1.
- Collect location information of UEs by other systems such as HAPS, LEO etc.;
- 2.
- The UAV departures from the starting point;
- 3.
- The UAV flies to the next hovering point;
- 4.
- The UAV collects data from all covered UEs;
- 5.
- Repeat 3~4 until all UEs’ data is collected;
- 6.
- The UAV return to the starting point;
- 7.
- Send the collected data to the disaster response headquarter.
4. Methods
4.1. K-Means Clustering for Placement of Hovering Points
- For realistic problems, the number of clusters k is often difficult to be determined in advance.
- Conditions such as the limitation of UAV’s flight altitude, which is 150 m according to the law in Japan, is hard to be included. As the results shown in Figure 6, the flight altitude is too high when k is small.
4.2. Genetic Algorithm for Placement of Hovering Points
4.3. Nearest Neighbor Search for Trajectory Decision
5. Simulation Results
5.1. Placement of Hovering Points
5.2. Trajectory Optimization
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
- Ministry of Internal Affairs and Communications. Communication Situation in the Great East Japan Earthquake (in Japanese). Available online: https://www.soumu.go.jp/johotsusintokei/whitepaper/ja/h23/pdf/n0010000.pdf (accessed on 25 February 2025).
- National Institute of Information and Communications Technology. Disaster-Resilient Communication Networks: Introduction Guidelines (in Japanese). Available online: https://www.nict.go.jp/resil/pdf/guideline202006.pdf (accessed on 25 February 2025).
- Yamamoto Town. Damage from the Great East Japan Earthquake and Tsunami (in Japanese). Available online: https://www.town.yamamoto.miyagi.jp/site/fukkou/324.html (accessed on 25 February 2025).
- El Debeiki, M.; Al-Rubaye, S.; Perrusquía, A.; Conrad, C.; Flores-Campos, J.A. An Advanced Path Planning and UAV Relay System: Enhancing Connectivity in Rural Environments. Future Internet 2024, 16, 89. [Google Scholar] [CrossRef]
- Wang, W.; Wei, X.; Jia, Y.; Chen, M. UAV relay network deployment through the area with barriers. Ad Hoc Networks 2023, 149, 103222. [Google Scholar] [CrossRef]
- Chandran, I.; Vipin, K. Multi-UAV networks for disaster monitoring: Challenges and opportunities from a network perspective. Drone Systems and Applications 2024, 12, 1–28. [Google Scholar]
- Zhang, Y.; Kuang, Z.; Feng, Y.; Hou, F. Task Offloading and Trajectory Optimization for Secure Communications in Dynamic User Multi-UAV MEC Systems. IEEE Transactions on Mobile Computing 2024, 23, 14427–14440. [Google Scholar] [CrossRef]
- Amrallah, A.; Mohamed, E.M.; Tran, G.K.; Sakaguchi, K. UAV Trajectory Optimization in a Post-Disaster Area Using Dual Energy-Aware Bandits. Sensors 2023, 23, 1402. [Google Scholar] [CrossRef] [PubMed]
- Zhang, T.; Lei, J.; Liu, Y.; Feng, C.; Nallanathan, A. Trajectory Optimization for UAV Emergency Communication With Limited User Equipment Energy: A Safe-DQN Approach. IEEE Transactions on Green Communications and Networking 2021, 5, 1236–1247. [Google Scholar] [CrossRef]
- Li, M.; Liu, X.; Wang, H. Completion Time Minimization Considering GNs’ Energy for UAV-Assisted Data Collection. IEEE Wireless Communications Letters 2023, 12, 2128–2132. [Google Scholar] [CrossRef]
- Li, J.; Zhao, H.; Wang, H.; Gu, F.; Wei, J.; Yin, H.; Ren, B. Joint Optimization on Trajectory, Altitude, Velocity, and Link Scheduling for Minimum Mission Time in UAV-Aided Data Collection. IEEE Internet of Things Journal 2020, 7, 1464–1475. [Google Scholar] [CrossRef]
- Al-Hourani, A.; Kandeepan, S.; Lardner, S. Optimal LAP Altitude for Maximum Coverage. IEEE Wireless Communications Letters 2014, 3, 569–572. [Google Scholar] [CrossRef]
- Singh, A.; Redhu, S.; Hegde, R.M. UAV Altitude Optimization for Efficient Energy Harvesting in IoT Networks. 2022 National Conference on Communications (NCC), Mumbai, India, 2022; pp. 350–355. [Google Scholar]
- Dai, X.; Duo, B.; Yuan, X.; Renzo, M.D. Energy-Efficient UAV Communications in the Presence of Wind: 3D Modeling and Trajectory Design. IEEE Transactions on Wireless Communications 2024, 23, 1840–1854. [Google Scholar] [CrossRef]
- Alzenad, M.; El-Keyi, A.; Yanikomeroglu, H. 3-D Placement of an Unmanned Aerial Vehicle Base Station for Maximum Coverage of Users With Different QoS Requirements. IEEE Wireless Communications Letters 2018, 7, 38–41. [Google Scholar] [CrossRef]
- Shannon, C.E. A Mathematical Theory of Communication. The Bell System Technical Journal 1948, 27, 379–423. [Google Scholar] [CrossRef]
- Ozasa, M.; Tran, G.K.; Sakaguchi, K. Research on the Placement Method of UAV Base Stations for Dynamic Users. 2021 IEEE VTS 17th Asia Pacific Wireless Communications Symposium (APWCS), Osaka, Japan, 2021; pp. 1–5. [Google Scholar]
- Toregas, C.; Swain, R.; ReVelle, C.; Bergman, L. The Location of Emergency Service Facilities. Operations Research 1971, 19, 1363–1373. [Google Scholar] [CrossRef]
- Eshelman, L.J.; David Schaffer, J. Real-Coded Genetic Algorithms and Interval-Schemata. Foundations of Genetic Algorithms 1993, 2, 187–202. [Google Scholar]
















| Study | Application Focus | Key Technologies | Contributions | Limitations |
|---|---|---|---|---|
| [4] | Rural connectivity enhancement | Path planning and UAV relays | Focused on improving link quality in rural zones | Limited to rural; not scalable for high-mobility urban networks |
| [5] | Obstacle-aware deployment | Area barrier-aware deployment | Path optimization in obstacle-heavy environments | Focuses on fixed deployment scenarios |
| [6] | Disaster monitoring | Multi-UAV coordination | Disaster-focused UAV coordination and communication | Does not focus on data collection optimization |
| [7] | Surveillance via DRL | Deep Reinforcement Learning (DRL) | Multi-UAV collaboration using DRL | Specific to surveillance, not general data collection |
| [8] | Data collection | Multi-armed bandit (MAB) | Consideration of energy consumption of UAV and UE | 2D trajectory optimization |
| [9] | Data collection | Markov decision making process (CMDP) | Consideration of energy consumption of UE | No consideration of energy consumption of UAV |
| [10] | Data collection | Travelling Salesman Problem (TSP) | Completion time minimization | 2D trajectory optimization |
| [11] | Data collection | Segment-based trajectory optimization algorithm (STOA) | Joint optimization of trajectory and link scheduling | 2D trajectory optimization |
| [12] | Data collection | Single LAP covering a whole area | Coverage enhancement | Limited data rate |
| [13] | IoT networks | K-means clustering | Energy harvesting efficiency | No discussion on data transmission |
| [14] | Flying base station | Offline-based online adaptive (OBOA) design | Wind consideration | No discussion on completion time |
| [15] | Flying base station | 3D placement | Maximum coverage of UEs with different QoS requirements | No discussion on completion time |
| Parameter | Value |
|---|---|
| Frequency (MHZ) | 2412 |
| Bandwidth B (MHz) | 22 |
| Boltzmann Constant | |
| Tempreture T (K) | 298 |
| Enviroment S-Curve Parameter a | 9.61 |
| Enviroment S-Curve Parameter b | 0.16 |
| LoS Additional Loss | 1 |
| NLoS Additional Loss | 20 |
| UAV Antenna Type | Directional |
| UAV Antenna Half Width (rad) | |
| UAV Forward Velocity (m/s) | 14 |
| UAV Ascent Velocity (m/s) | 5 |
| UAV Descent Velocity (m/s) | 4 |
| UE Antenna Type | Omnidirectional |
| UE Transmission Power (mW) | 200 |
| UE Maximum Data Size (MB) | 10 |
| Number of UEs | Total Time (s) | Flight Time (s) | Hovering Time (s) | |||
|---|---|---|---|---|---|---|
| Previous Method | Proposed Method | Previous Method | Proposed Method | Previous Method | Proposed Method | |
| 30 | 325.6855 | 282.3203 | 240.3592 | 195.8832 | 85.3263 | 86.4371 |
| 40 | 382.1829 | 327.8415 | 268.4145 | 210.7790 | 113.7684 | 117.0625 |
| 50 | 435.2349 | 371.6828 | 293.0245 | 224.9754 | 142.2105 | 146.7074 |
| 60 | 484.0537 | 410.4997 | 313.4011 | 233.1659 | 170.6526 | 177.3338 |
| 70 | 532.5094 | 446.7737 | 333.4147 | 239.3245 | 199.0947 | 207.4491 |
| 80 | 583.8943 | 484.3886 | 356.3576 | 246.9312 | 227.5368 | 237.4574 |
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