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Balanced multi-UAV path planning for persistent monitoring

Zhan, Xinru; Chen, Yang; Chen, Xi; Zhang, Wenhao

Authors

Xinru Zhan

Yang Chen

Xi Chen

Dr Wenhao Zhang Wenhao.Zhang@uwe.ac.uk
Associate Professor of Computer Vision and Machine Learning



Abstract

In scenarios such as environmental data collection and traffic monitoring, etc., timely responses to real-time situations are facilitated by persistently accessing nodes with revisiting constraints using unmanned aerial vehicles (UAVs). However, imbalanced task allocation may pose risks to the safety of UAVs and potentially lead to failures in monitoring tasks. For instance, continuous visits to nodes without replenishment may damage UAV batteries, while delays in recharging could result in missing task deadlines, ultimately causing task failures. Therefore, this study investigates the problem of achieving balanced multi-UAV path planning for persistent monitoring tasks, which has not been previously researched according to the authors’ knowledge. The main contribution of this study is the proposal of two novel indicators to assist in balancing task allocation regarding multi-UAV path planning for persistent monitoring. One of the indicators is namely the waiting factor, which reflects the urgency of a task node waiting to be accessed, and the other is the difficulty level which is introduced to measure the difficulty of tasks undertaken by a UAV. By minimizing differences in difficulty level among UAVs, we can ensure equilibrium in task allocation. For a single UAV, the ant colony initialized genetic algorithm (ACIGA) has been proposed to plan its path and obtain its difficulty level. For multiple UAVs, the K-means clustering algorithm has been improved based on difficulty levels to achieve balanced task allocation. Simulation experiments demonstrated that the difficulty level could effectively reflect the difficulty of tasks and that the proposed algorithms could enable UAVs to achieve balanced task allocation.

Journal Article Type Article
Acceptance Date Oct 3, 2024
Online Publication Date Nov 20, 2024
Deposit Date Oct 22, 2024
Publicly Available Date May 21, 2025
Print ISSN 0263-5747
Electronic ISSN 1469-8668
Publisher Cambridge University Press (CUP)
Peer Reviewed Peer Reviewed
DOI https://doi.org/10.1017/S0263574724001899
Public URL https://uwe-repository.worktribe.com/output/13310915

Files

This file is under embargo until May 21, 2025 due to copyright reasons.

Contact Wenhao.Zhang@uwe.ac.uk to request a copy for personal use.





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