UAV Trajectory Planning in Wireless Sensor Networks for Energy Consumption Minimization by Deep Reinforcement Learning
Botao Zhu, Ebrahim Bedeer, Ha H. Nguyen, Robert Barton, Jerome Henry

TL;DR
This paper introduces a deep reinforcement learning approach using pointer networks to optimize UAV trajectories for energy-efficient data collection in wireless sensor networks, addressing a complex NP-hard problem.
Contribution
It proposes a novel DRL method, Ptr-A*, for UAV trajectory planning that generalizes well and outperforms baseline techniques in energy minimization tasks.
Findings
The DRL approach effectively minimizes energy consumption in simulated WSN scenarios.
The trained model generalizes to different cluster sizes without retraining.
The proposed method outperforms traditional baseline algorithms.
Abstract
Unmanned aerial vehicles (UAVs) have emerged as a promising candidate solution for data collection of large-scale wireless sensor networks (WSNs). In this paper, we investigate a UAV-aided WSN, where cluster heads (CHs) receive data from their member nodes, and a UAV is dispatched to collect data from CHs along the planned trajectory. We aim to minimize the total energy consumption of the UAV-WSN system in a complete round of data collection. Toward this end, we formulate the energy consumption minimization problem as a constrained combinatorial optimization problem by jointly selecting CHs from nodes within clusters and planning the UAV's visiting order to the selected CHs. The formulated energy consumption minimization problem is NP-hard, and hence, hard to solve optimally. In order to tackle this challenge, we propose a novel deep reinforcement learning (DRL) technique, pointer…
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Taxonomy
TopicsUAV Applications and Optimization · Distributed Control Multi-Agent Systems · Energy Harvesting in Wireless Networks
