Fairness Based Energy-Efficient 3D Path Planning of a Portable Access Point: A Deep Reinforcement Learning Approach
Nithin Babu, Igor Donevski, Alvaro Valcarce, Petar Popovski, Jimmy, Jessen Nielsen, and Constantinos B. Papadias

TL;DR
This paper proposes a deep reinforcement learning method to optimize the 3D path of a UAV-based portable access point, considering fairness and energy efficiency, including realistic battery discharge effects, to improve wireless service delivery.
Contribution
It introduces a novel fairness-based energy efficiency metric and applies deep RL with TD3 to optimize UAV trajectories under complex constraints and varying ground node configurations.
Findings
Significant FEE improvements up to 318% in urban environments.
Neglecting the Peukert effect leads to overestimated UAV airtime.
Optimizing UAV speed and position enhances user fairness and energy efficiency.
Abstract
In this work, we optimize the 3D trajectory of an unmanned aerial vehicle (UAV)-based portable access point (PAP) that provides wireless services to a set of ground nodes (GNs). Moreover, as per the Peukert effect, we consider pragmatic non-linear battery discharge for the battery of the UAV. Thus, we formulate the problem in a novel manner that represents the maximization of a fairness-based energy efficiency metric and is named fair energy efficiency (FEE). The FEE metric defines a system that lays importance on both the per-user service fairness and the energy efficiency of the PAP. The formulated problem takes the form of a non-convex problem with non-tractable constraints. To obtain a solution, we represent the problem as a Markov Decision Process (MDP) with continuous state and action spaces. Considering the complexity of the solution space, we use the twin delayed deep…
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Taxonomy
TopicsUAV Applications and Optimization · Smart Parking Systems Research · Robotic Path Planning Algorithms
Methodstravel james · Graph Network-based Simulators
