Hybrid Offline-Online Design for UAV-Enabled Data Harvesting in Probabilistic LoS Channel
Changsheng You, Rui Zhang

TL;DR
This paper introduces a hybrid offline-online optimization framework for UAV data harvesting in urban environments, leveraging probabilistic LoS channel models and real-time CSI to enhance data collection rates.
Contribution
It proposes a novel hybrid offline-online design method that jointly optimizes UAV trajectory and scheduling using statistical and real-time channel information.
Findings
The probabilistic LoS model accurately captures urban blockage effects.
The hybrid approach outperforms purely offline or online methods in simulations.
The method effectively balances pre-planned paths with real-time adjustments.
Abstract
This paper considers an unmanned aerial vehicle (UAV)-enabled wireless sensor network (WSN) in urban areas, where a UAV is deployed to collect data from distributed sensor nodes (SNs) within a given duration. To characterize the occasional building blockage between the UAV and SNs, we construct the probabilistic line-of-sight (LoS) channel model for a Manhattan-type city by using the combined simulation and data regression method, which is shown in the form of a generalized logistic function of the UAV-SN elevation angle. We assume that only the knowledge of SNs' locations and the probabilistic LoS channel model is known a priori, while the UAV can obtain the instantaneous LoS/Non-LoS channel state information (CSI) with the SNs in real time along its flight. Our objective is to maximize the minimum (average) data collection rate from all the SNs for the UAV. To this end, we formulate a…
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Taxonomy
TopicsUAV Applications and Optimization · Distributed Control Multi-Agent Systems · Robotic Path Planning Algorithms
