为应急响应中的无人机提供具有动态差异隐私的 IRS 辅助联合学习

K. T. Pauu, Qianqian Pan, Jun Wu, Ali Kashif Bashir, Mafua-‘i-Vai’utukakau Maka, Marwan Omar
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引用次数: 0

摘要

不可预见的自然灾害往往会破坏关键基础设施,中断通信。在应急响应场景中使用无人飞行器(UAVs)为提供实时信息和协助应急响应工作提供了巨大的潜力。然而,通信的物理障碍等挑战不仅会阻碍已建立的视线(LoS)链路,从而影响传输性能,而且还会对通过这些链路交换的敏感信息的隐私构成风险。为应对这些挑战,我们提出了一种新型 IRS 辅助无人机安全通信框架,旨在提高通信效率,同时确保在应急响应场景中保护隐私。该框架包括三个阶段:(i) 利用随机梯度下降(SGD)动态差分隐私机制进行本地模型训练,并根据验证性能对学习率进行自适应调整;(ii) 分散式联合学习(FL)与智能反射面(IRS)相结合,以改善无人机对无人机和无人机对地面站之间的通信和信息交换;(iii) 根据操作特性和连接性选择无人机头,以辅助无人机对地面站的通信。此外,我们还通过实验模拟评估了我们提出的框架,经过 50 轮联合学习后,准确率达到了 0.91,这表明我们的动态噪声和学习率调整机制非常有效。此外,我们对 IRS 的整合降低了通信延迟,凸显了我们方法的有效性。该框架巧妙地平衡了隐私保护与模型准确性之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IRS-Aided Federated Learning with Dynamic Differential Privacy for UAVs in Emergency Response
The unforeseen events of natural disasters often devastate critical infrastructure and disrupt communication. The use of unmanned aerial vehicles (UAVs) in emergency response scenarios offers significant potential for delivering real-time information and assisting emergency response efforts. However, challenges such as physical barriers to communication not only hinder transmission performance by obstructing established line-of-sight (LoS) links but also pose risks to the privacy of sensitive information exchanged across these links. To address these challenges, we propose a novel IRS-aided UAV secure communications framework aimed to enhance communication efficiency while ensuring privacy preservation in emergency response scenarios. The framework consists of three stages: (i) local model training with dynamic differential privacy mechanism using stochastic gradient descent (SGD), with adaptive learning rate adjustment based on validation performance, (ii) decentralized federated learning (FL) with intelligent reflective surfaces (IRS) incorporation to improve communication and information exchange between UAV-to-UAV and UAV-to-ground station, and (iii) selection of a UAV header based on operational characteristics and connectivity to aid UAV-to-ground station communication.Furthermore, we evaluated our proposed framework through experimental simulations and achieved 0.91 accuracy after 50 federated learning rounds underscoring the efficacy of our dynamic noise and learning rate adjustment mechanism. Additionally, our integration of IRS led to lower communication latency, highlighting the effectiveness of our approach. This framework adeptly balances privacy protection with model accuracy.
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