Science and Technology on Micro-System Laboratory, Shanghai Institute of Microsystem and Information Technology, Chinese Academy of Sciences, Shanghai 200050, China.
The School of Electronic, Electrical and Communication Engineering, University of Chinese Academy of Sciences, Beijing 100049, China.
Sensors (Basel). 2022 Dec 6;22(23):9526. doi: 10.3390/s22239526.
In recent years, with the rapid progress of unmanned aerial vehicle (UAV) technology, UAV-based systems have been widely used in both civilian and military applications. Researchers have proposed various network architectures and routing protocols to address the network connectivity problems associated with the high mobility of UAVs, and have achieved considerable results in a flying ad hoc network (FANET). Although scholars have noted various threats to UAVs in practical applications, such as local magnetic field variation, acoustic interference, and radio signal hijacking, few studies have taken into account the dynamic nature of these threat factors. Moreover, the UAVs' high mobility combined with dynamic threats makes it more challenging to ensure connectivity while adapting to ever-changing scenarios. In this context, this paper introduces the concept of threat probability density function (threat PDF) and proposes a particle swarm optimization (PSO)-based threat avoidance and reconnaissance FANET construction algorithm (TARFC), which enables UAVs to dynamically adapt to avoid high-risk areas while maintaining FANET connectivity. Inspired by the graph editing distance, the total edit distance (TED) is defined to describe the alterations of the FANET and threat factors over time. Based on TED, a dynamic threat avoidance and continuous reconnaissance FANET operation algorithm (TA&CRFO) is proposed to realize semi-distributed control of the network. Simulation results show that both TARFC and TA&CRFO are effective in maintaining network connectivity and avoiding threats in dynamic scenarios. The average threat value of UAVs using TARFC and TA&CRFO is reduced by 3.9927.51% and 3.0726.63%, respectively, compared with the PSO algorithm. In addition, with limited distributed moderation, the complexity of the TA&CRFO algorithm is only 20.08% of that of TARFC.
近年来,随着无人机 (UAV) 技术的飞速发展,基于无人机的系统已经在民用和军事应用中得到了广泛应用。研究人员提出了各种网络架构和路由协议来解决与无人机高机动性相关的网络连接问题,并在飞行自组织网络 (FANET) 中取得了相当大的成果。尽管学者们在实际应用中注意到了无人机面临的各种威胁,例如局部磁场变化、声干扰和无线电信号劫持,但很少有研究考虑到这些威胁因素的动态性质。此外,无人机的高机动性加上动态威胁,使得在适应不断变化的场景的同时确保连接性更加具有挑战性。在这种情况下,本文引入了威胁概率密度函数 (threat PDF) 的概念,并提出了一种基于粒子群优化 (PSO) 的威胁回避和侦察 FANET 构建算法 (TARFC),使无人机能够动态适应,避免高风险区域,同时保持 FANET 的连接性。受图编辑距离的启发,定义了总编辑距离 (TED) 来描述 FANET 和威胁因素随时间的变化。基于 TED,提出了一种动态威胁回避和连续侦察 FANET 操作算法 (TA&CRFO),以实现网络的半分布式控制。仿真结果表明,TARFC 和 TA&CRFO 都能有效地在动态场景中保持网络连接性和回避威胁。与 PSO 算法相比,使用 TARFC 和 TA&CRFO 的无人机的平均威胁值分别降低了 3.99%27.51%和 3.07%26.63%。此外,在有限的分布式调节下,TA&CRFO 算法的复杂度仅为 TARFC 的 20.08%。