Litcius/Paper detail

Federated Learning Based Trajectory Optimization for UAV Enabled MEC

Anushka Nehra, Prakhar Consul, Ishan Budhiraja, Gagandeep Kaur, Nidal Nasser, Muhammad Imran

202316 citationsDOI

Abstract

We present a moving mobile edge computing architecture in which unmanned aerial vehicles (UAV) serve as an equipment, providing computational power and allowing task offloading from mobile devices (MD). By improving user association, resource allocation, and UAV trajectory, we optimizing the energy consumption of all MDs. Towards that purpose, we provide a Trajectory optimization technique for making real-time choices while considering all the situation of the environment, followed by a DRL-based Trajectory control approach (RLCT). The RLCT approach may be adapted to any UAV takeoff point and can find the solution faster. The FL is introduced to address the Optimization problem in a Semi-distributed DRL technique to deal with UAV trajectory constraints. The proposed FRL approach enables devices to rapidly train the models locally while communicating with a local server to construct a network globally. The simulation results in the result section shows that the proposed technique RLCT and FRL in the paper outperforms the existing methods” while the FRL performs best among all.

Topics & Concepts

Computer scienceTrajectoryTrajectory optimizationMobile deviceMobile edge computingReal-time computingConstruct (python library)Task (project management)Enhanced Data Rates for GSM EvolutionDistributed computingArtificial intelligenceComputer networkEngineeringOperating systemAstronomySystems engineeringPhysicsUAV Applications and OptimizationIoT and Edge/Fog ComputingDistributed Control Multi-Agent Systems
Federated Learning Based Trajectory Optimization for UAV Enabled MEC | Litcius