Joint Scheduling and Trajectory Optimization of Charging UAV in Wireless Rechargeable Sensor Networks
Yanheng Liu, Hongyang Pan, Geng Sun, Aimin Wang, Jiahui Li, Shuang, Liang

TL;DR
This paper presents a joint scheduling and trajectory optimization framework for charging UAVs in wireless sensor networks, aiming to enhance efficiency through novel algorithms that address complex mixed-integer problems.
Contribution
It introduces a decomposed optimization approach with innovative PSO algorithms featuring flexible dimensions and discretization, improving charging efficiency in sensor networks.
Findings
Proposed algorithms outperform baseline methods in simulation.
Flexible dimension PSO enhances solution adaptability.
Algorithms demonstrate stability across various network scales.
Abstract
Wireless rechargeable sensor networks with a charging unmanned aerial vehicle (CUAV) have the broad application prospects in the power supply of the rechargeable sensor nodes (SNs). However, how to schedule a CUAV and design the trajectory to improve the charging efficiency of the entire system is still a vital problem. In this paper, we formulate a joint-CUAV scheduling and trajectory optimization problem (JSTOP) to simultaneously minimize the hovering points of CUAV, the number of the repeatedly covered SNs and the flying distance of CUAV for charging all SNs. Due to the complexity of JSTOP, it is decomposed into two optimization subproblems that are CUAV scheduling optimization problem (CSOP) and CUAV trajectory optimization problem (CTOP). CSOP is a hybrid optimization problem that consists of the continuous and discrete solution space, and the solution dimension in CSOP is not…
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Taxonomy
TopicsEnergy Harvesting in Wireless Networks · UAV Applications and Optimization · Renal and related cancers
