Increasing Operational Resiliency of UAV Swarms: An Agent-Focused Search and Rescue Framework

A. Phadke, F. A. Medrano
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Abstract

Resilient UAV (Unmanned Aerial Vehicle) swarm operations are a complex research topic where the dynamic environments in which they work significantly increase the chance of systemic failure due to disruptions. Most existing SAR (Search and Rescue) frameworks for UAV swarms are application-specific, focusing on rescuing external non-swarm agents, but if an agent in the swarm is lost, there is inadequate research to account for the resiliency of the UAV swarm itself. This study describes the design and deployment of a Swarm Specific SAR (SS-SAR) framework focused on UAV swarm agents. This framework functions as a resilient mechanism by locating and attempting to reconnect communications with lost UAV swarm agents. The developed framework was assessed over a series of performance tests and environments, both real-world hardware and simulation experiments. Experimental results showed successful recovery rates in the range of 40%–60% of all total flights conducted, indicating that UAV swarms can be made more resilient by including methods to recover distressed agents. Decision-based modular frameworks such as the one proposed here lay the groundwork for future development in attempts to consider the swarm agents in the search and rescue process.
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提高无人机群的行动复原力:以代理为重点的搜救框架
弹性无人机(UAV)蜂群操作是一个复杂的研究课题,其工作的动态环境大大增加了因中断而导致系统失灵的几率。大多数现有的无人机群搜救(SAR)框架都是针对特定应用的,侧重于营救外部的非无人机群代理,但如果无人机群中的代理丢失,则对无人机群本身的恢复能力考虑不足。本研究介绍了无人机群专用合成孔径雷达(SS-SAR)框架的设计和部署,该框架重点关注无人机群代理。该框架通过定位和尝试重新连接与丢失的无人机群代理的通信,发挥弹性机制的作用。开发的框架通过一系列性能测试和环境(包括真实世界硬件和模拟实验)进行了评估。实验结果表明,在所有飞行中,成功恢复率在 40%-60% 之间,这表明通过采用恢复受困代理的方法,可以提高无人机群的复原力。基于决策的模块化框架(如本文中提出的框架)为今后在搜索和救援过程中考虑蜂群代理的发展奠定了基础。
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