计算机科学
入侵检测系统
块链
分布式数据库
分布式学习
分布式计算
计算机网络
计算机安全
心理学
教育学
作者
Xiaoqiang He,Qianbin Chen,Lun Tang,Weili Wang,Tong Liu
标识
DOI:10.1109/jiot.2022.3200121
摘要
Numerous resource-constrained Internet of Things (IoT) devices make the edge IoT consisting of unmanned aerial vehicles (UAVs) vulnerable to network intrusion. Therefore, it is critical to design an effective intrusion detection system (IDS). However, the differences in local data sets among UAVs show small samples and uneven distribution, further reducing the detection accuracy of network intrusion. This article proposes a conditional generative adversarial net (CGAN)-based collaborative intrusion detection algorithm with blockchain-empowered distributed federated learning to solve the above problems. This study introduces long short-term memory (LSTM) into the CGAN training to improve the effect of generative networks. Based on the feature extraction ability of LSTM networks, the generated data with CGAN are used as augmented data and applied in the detection and classification of intrusion data. Distributed federated learning with differential privacy ensures data security and privacy and allows collaborative training of CGAN models using multiple distributed data sets. Blockchain stores and shares the training models to ensure security when the global model's aggregation and updating. The proposed method has good generalization ability, which can greatly improve the detection of intrusion data.
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