论文标题

FEDBA:无人机网络中的非IID联合学习框架

FedBA: Non-IID Federated Learning Framework in UAV Networks

论文作者

Li, Pei, Liu, Zhijun, Chang, Luyi, Peng, Jialiang, Wu, Yi

论文摘要

随着科学技术的发展和进步,物联网(IoT)逐渐进入了人们的生活,为我们的生活带来了极大的便利并提高了人们的工作效率。具体来说,物联网可以在无法执行的工作中代替人类。作为一种新型的物联网车辆,无人驾驶飞机研究的当前状态和趋势令人满意,而且开发前景非常有前途。但是,在无人机应用程序中,隐私和沟通仍然是非常严重的问题。这是因为大多数无人机仍然使用基于云的集中数据处理,这可能导致无人机收集的数据泄漏。同时,当转移到云时,无人机收集的大量数据可能会产生更大的通信开销。联合学习作为隐私保护手段可以有效地解决上述两个问题。但是,将联合学习应用于无人机网络时,还需要考虑数据的异质性,这是由于无人机调节的区域差异引起的。作为回应,本文提出了一种新算法FEDBA,以优化全局模型并解决数据异质性问题。此外,我们将算法应用于一些实际数据集,实验结果表明,该算法优于其他算法,并提高了无人机本地模型的准确性。

With the development and progress of science and technology, the Internet of Things(IoT) has gradually entered people's lives, bringing great convenience to our lives and improving people's work efficiency. Specifically, the IoT can replace humans in jobs that they cannot perform. As a new type of IoT vehicle, the current status and trend of research on Unmanned Aerial Vehicle(UAV) is gratifying, and the development prospect is very promising. However, privacy and communication are still very serious issues in drone applications. This is because most drones still use centralized cloud-based data processing, which may lead to leakage of data collected by drones. At the same time, the large amount of data collected by drones may incur greater communication overhead when transferred to the cloud. Federated learning as a means of privacy protection can effectively solve the above two problems. However, federated learning when applied to UAV networks also needs to consider the heterogeneity of data, which is caused by regional differences in UAV regulation. In response, this paper proposes a new algorithm FedBA to optimize the global model and solves the data heterogeneity problem. In addition, we apply the algorithm to some real datasets, and the experimental results show that the algorithm outperforms other algorithms and improves the accuracy of the local model for UAVs.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源