3D UAV Trajectory and Data Collection Optimisation via Deep
Reinforcement Learning
- URL: http://arxiv.org/abs/2106.03129v1
- Date: Sun, 6 Jun 2021 14:08:41 GMT
- Title: 3D UAV Trajectory and Data Collection Optimisation via Deep
Reinforcement Learning
- Authors: Khoi Khac Nguyen and Trung Q. Duong and Tan Do-Duy and Holger Claussen
and and Lajos Hanzo
- Abstract summary: Unmanned aerial vehicles (UAVs) are now beginning to be deployed for enhancing the network performance and coverage in wireless communication.
It is challenging to obtain an optimal resource allocation scheme for the UAV-assisted Internet of Things (IoT)
In this paper, we design a new UAV-assisted IoT systems relying on the shortest flight path of the UAVs while maximising the amount of data collected from IoT devices.
- Score: 75.78929539923749
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Unmanned aerial vehicles (UAVs) are now beginning to be deployed for
enhancing the network performance and coverage in wireless communication.
However, due to the limitation of their on-board power and flight time, it is
challenging to obtain an optimal resource allocation scheme for the
UAV-assisted Internet of Things (IoT). In this paper, we design a new
UAV-assisted IoT systems relying on the shortest flight path of the UAVs while
maximising the amount of data collected from IoT devices. Then, a deep
reinforcement learning-based technique is conceived for finding the optimal
trajectory and throughput in a specific coverage area. After training, the UAV
has the ability to autonomously collect all the data from user nodes at a
significant total sum-rate improvement while minimising the associated
resources used. Numerical results are provided to highlight how our techniques
strike a balance between the throughput attained, trajectory, and the time
spent. More explicitly, we characterise the attainable performance in terms of
the UAV trajectory, the expected reward and the total sum-rate.
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