Anomaly detection for the Internet of Things (IoT) is a major intelligent service required by many fields, including intrusion detection, device-activity analysis, and security supervision. However, the heterogeneous distribution of data and resource-constrained end nodes present challenges for existing anomaly detection models. Due to the advantages of flexible deployment and multi-dimensional resources, high altitude platform stations (HAPSs) and unmanned aerial vehicles (UAVs), which are important components of vertical heterogeneous networks (VHetNets), have significant potential for sensing, computing, storage, and communication applications in ubiquitous IoT systems. In this paper, we propose a novel VHetNet-enabled asynchronous federated learning (AFL) framework to enable decentralized UAVs to collaboratively train a global anomaly detection model. In the VHetNet-enabled AFL framework, a HAPS operates as a central aerial server, and the local models trained in UAVs are uploaded to the HAPS for global aggregation due to its wide coverage and strong storage and computation capabilities. We introduce a UAV selection strategy into the AFL framework to prevent UAVs with low local model quality and large energy consumption from affecting the learning efficiency and detection accuracy of the global model. To ensure the security of transmissions between UAVs and the HAPS, we add designed noise to local model parameters in UAVs to achieve differential privacy. Moreover, we propose a compound-action actor-critic (CA2C)-based joint device association, UAV selection, and UAV trajectory planning algorithm to further enhance the overall federated execution efficiency and detection model accuracy. Extensive experimental evaluation on a real-world dataset demonstrates that the proposed algorithm can achieve high detection accuracy with short federated execution time and low energy consumption.
翻译:对互联网事物的异常探测是许多领域(包括入侵探测、装置活动分析和安全监督)所要求的一项重大智能服务,包括入侵探测、装置活动分析和安全监督。然而,数据和资源限制的终端节点分布不一,对现有的异常探测模型构成挑战。由于灵活部署和多维资源的好处,高空平台站和无人驾驶飞行器(UAV)是垂直混杂网络(VHetNets)的重要组成部分,具有在普遍存在的IOT系统中进行感测、计算、储存和通信应用的巨大潜力。我们在本文件中提出一个新的VHetNet驱动的VHetriAV的准确性、不同步的联动学习(AFL)框架,使分散的UAVA能够合作培训全球异常探测模型。在VHetNet的AFL框架中,高空平台作为中央航空服务器运作,在UAVA的本地保密性精度、更强的储存和更强的储存和计算能力下,将UAVA选择联盟选择战略,从AFLA的精度精度、更精确的精确性、更精确地测试、更精确地、更精确地展示我们所设计的VAVAVA-A-L的高级数据。</s>