Advancement Challenges in UAV Swarm Formation Control: A Comprehensive Review

Drones Pub Date : 2024-07-12 DOI:10.3390/drones8070320
Yajun Bu, Ye Yan, Yueneng Yang
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Abstract

This paper provides an in-depth analysis of the current research landscape in the field of UAV (Unmanned Aerial Vehicle) swarm formation control. This review examines both conventional control methods, including leader–follower, virtual structure, behavior-based, consensus-based, and artificial potential field, and advanced AI-based (Artificial Intelligence) methods, such as artificial neural networks and deep reinforcement learning. It highlights the distinct advantages and limitations of each approach, showcasing how conventional methods offer reliability and simplicity, while AI-based strategies provide adaptability and sophisticated optimization capabilities. This review underscores the critical need for innovative solutions and interdisciplinary approaches combining conventional and AI methods to overcome existing challenges and fully exploit the potential of UAV swarms in various applications.
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无人机蜂群编队控制的进步挑战:全面回顾
本文深入分析了当前无人机(UAV)蜂群编队控制领域的研究现状。这篇综述研究了传统的控制方法,包括领导者-追随者、虚拟结构、基于行为、基于共识和人工势场,以及先进的基于 AI(人工智能)的方法,如人工神经网络和深度强化学习。它强调了每种方法的独特优势和局限性,展示了传统方法如何提供可靠性和简单性,而基于人工智能的策略如何提供适应性和复杂的优化能力。本综述强调,亟需结合传统方法和人工智能方法的创新解决方案和跨学科方法,以克服现有挑战,充分挖掘无人机群在各种应用中的潜力。
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