Biological Intelligence Inspired Trajectory Design for Energy Harvesting UAV Networks †
Abstract
:1. Introduction
1.1. Background and Motivation
1.2. Related Work
1.3. Contributions
- We propose an energy harvesting UAV network, in which the UAV can serve ground users while collecting energy from the charging stations (CSs). To serve the ground users and collect energy, the UAV must be examined and repaired before deployment. In consequence, it is necessary to jointly consider the maintenance cost, the number of users that are served by the UAV, and the energy consumption and harvesting.
- To capture the relationship among the maintenance cost, the number of users that are served by the UAV, and the energy consumption and harvesting, we model the completion of users’ data requests and the harvested energy as reward, and the energy consumption as cost. The deployment profitability is defined as the ratio of the reward achieved during the deployment to the cost of energy consumption. Given the concept of the deployment profitability, the trajectory design problem is decoupled as a decision-making problem of maximizing the deployment profitability and a queuing problem of minimizing the average user service time.
- To solve this problem, we develop a foraging-based algorithm [14]. Compared to the trajectory design algorithms such as successive convex approximation [15] and Q-learning [16,17], the proposed foraging algorithm is proved to design the UAV trajectory with the optimal deployment profitability and minimize the average service time of served users. The time complexity of the proposed algorithm is also significantly reduced to the level of polynomial.
1.4. Organization
2. System Model and Problem Formulation
2.1. Transmission Model
2.2. Energy Consumption Model
2.3. Problem Formulation
3. Foraging-Based Trajectory Design Algorithm
3.1. Components of Foraging-Based Algorithm
3.2. Implementation of Foraging-Based Algorithm
Algorithm 1 Foraging-based group selection |
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Algorithm 2 Trajectory design for minimizing the average service time |
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3.3. Complexity of Foraging-Based Algorithm
4. Simulation Results
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A. Proof of Theorem 1
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Notations | Description |
---|---|
Set of user groups | |
Set of users | |
Set of users in group j | |
Data request of user i | |
Transmission distance between user i and the UAV at group j | |
H | UAV altitude |
Average channel gain of probabilistic UAV channel | |
Downlink rate of user i in group j | |
B | Bandwidth |
Bandwidth allocation coefficient | |
Transmission power of serving user i | |
Transmission time of user i | |
Transmission time of group j | |
Harvested energy while UAV serving group j | |
Transmission energy while UAV serving group j | |
Movement energy while UAV serving group j | |
Hovering energy while UAV serving group j | |
Q | Maintenance cost |
Group selection indicator | |
UAV trajectory | |
Deployment profitability of UAV trajectory | |
Total time after UAV serving a group at time slot | |
Total service time of user i in group j | |
Reward of serving group j | |
Cost of serving group j | |
Profitability of group j |
Parameters | Description | Values |
---|---|---|
H | UAV altitude | 100 m |
Path loss exponent | 2 | |
NLoS attenuation factor | 0.3 | |
Environment constants | 11.95, 0.136 | |
Noise power | −84 dBm | |
B | Bandwidth | 1 MHz |
Channel power gain | −30 dB | |
Propulsion parameters | , 2250 | |
Transmission power | 0.2 W | |
Q | Maintenance cost | 10 |
Service reward | 2 | |
Energy cost |
Number of Groups | Foraging-Based Algorithm | Q-Learning Algorithm |
---|---|---|
5 | 0.725 | |
10 | 1.263 | |
15 | 1.779 | |
20 | 2436 |
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Liu, X.; Wang, S.; Yin, C. Biological Intelligence Inspired Trajectory Design for Energy Harvesting UAV Networks. Sensors 2023, 23, 863. https://doi.org/10.3390/s23020863
Liu X, Wang S, Yin C. Biological Intelligence Inspired Trajectory Design for Energy Harvesting UAV Networks. Sensors. 2023; 23(2):863. https://doi.org/10.3390/s23020863
Chicago/Turabian StyleLiu, Xuanlin, Sihua Wang, and Changchuan Yin. 2023. "Biological Intelligence Inspired Trajectory Design for Energy Harvesting UAV Networks" Sensors 23, no. 2: 863. https://doi.org/10.3390/s23020863
APA StyleLiu, X., Wang, S., & Yin, C. (2023). Biological Intelligence Inspired Trajectory Design for Energy Harvesting UAV Networks. Sensors, 23(2), 863. https://doi.org/10.3390/s23020863