Multi-objective Optimization for Data Collection in UAV-assisted Agricultural IoT
Lingling Liu, Aimin Wang, Geng Sun, Jiahui Li, Hongyang Pan, Tony Q., S. Quek

TL;DR
This paper introduces a multi-objective optimization framework using UAVs as aerial base stations to enhance data collection efficiency in agricultural IoT, addressing energy consumption and coverage issues.
Contribution
It formulates a novel non-convex multi-objective problem for UAV-assisted data collection and proposes an improved artificial hummingbird algorithm to solve it effectively.
Findings
IMOAHA outperforms benchmark algorithms in system performance
Optimized UAV hovering positions improve data collection efficiency
Energy consumption of devices and UAVs is significantly reduced
Abstract
The ground fixed base stations (BSs) are often deployed inflexibly, and have high overheads, as well as are susceptible to the damage from natural disasters, making it impractical for them to continuously collect data from sensor devices. To improve the network coverage and performance of wireless communication, unmanned aerial vehicles (UAVs) have been introduced in diverse wireless networks, therefore in this work we consider employing a UAV as an aerial BS to acquire data of agricultural Internet of Things (IoT) devices. To this end, we first formulate a UAV-assisted data collection multi-objective optimization problem (UDCMOP) to efficiently collect the data from agricultural sensing devices. Specifically, we aim to collaboratively optimize the hovering positions of UAV, visit sequence of UAV, speed of UAV, in addition to the transmit power of devices, to simultaneously achieve the…
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Taxonomy
TopicsSmart Agriculture and AI
