Fed4UL: A Cloud–Edge–End Collaborative Federated Learning Framework for Addressing the Non-IID Data Issue in UAV Logistics

Drones Pub Date : 2024-07-10 DOI:10.3390/drones8070312
Chong Zhang, Xiao Liu, Aiting Yao, Jun Bai, Chengzu Dong, Shantanu Pal, Frank Jiang
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Abstract

Artificial intelligence and the Internet of Things (IoT) have brought great convenience to people’s everyday lives. With the emergence of edge computing, IoT devices such as unmanned aerial vehicles (UAVs) can process data instantly at the point of generation, which significantly decreases the requirement for on-board processing power and minimises the data transfer time to enable real-time applications. Meanwhile, with federated learning (FL), UAVs can enhance their intelligent decision-making capabilities by learning from other UAVs without directly accessing their data. This facilitates rapid model iteration and improvement while safeguarding data privacy. However, in many UAV applications such as UAV logistics, different UAVs may perform different tasks and cover different areas, which can result in heterogeneous data and add to the problem of non-independent and identically distributed (Non-IID) data for model training. To address such a problem, we introduce a novel cloud–edge–end collaborative FL framework, which organises and combines local clients through clustering and aggregation. By employing the cosine similarity, we identified and integrated the most appropriate local model into the global model, which can effectively address the issue of Non-IID data in UAV logistics. The experimental results showed that our approach outperformed traditional FL algorithms on two real-world datasets, CIFAR-10 and MNIST.
Fed4UL:用于解决无人机物流中非 IID 数据问题的云端协作联邦学习框架
人工智能和物联网(IoT)给人们的日常生活带来了极大的便利。随着边缘计算的出现,无人机(UAV)等物联网设备可以在数据生成点即时处理数据,这大大降低了对机载处理能力的要求,并最大限度地缩短了数据传输时间,从而实现了实时应用。同时,通过联合学习(FL),无人飞行器可以通过向其他无人飞行器学习来增强其智能决策能力,而无需直接访问它们的数据。这有助于快速迭代和改进模型,同时保护数据隐私。然而,在无人机物流等许多无人机应用中,不同的无人机可能会执行不同的任务,覆盖不同的区域,这可能会导致数据异构,增加模型训练中的非独立和同分布(Non-IID)数据问题。为解决这一问题,我们引入了一种新型云端协作 FL 框架,通过聚类和聚合来组织和组合本地客户端。通过使用余弦相似度,我们确定了最合适的本地模型并将其集成到全局模型中,从而有效解决了无人机物流中的非 IID 数据问题。实验结果表明,在 CIFAR-10 和 MNIST 这两个实际数据集上,我们的方法优于传统的 FL 算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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