作者
Rahim Taheri, Mohammad Shojafar, Mamoun Alazab, Rahim Tafazolli
发表日期
2020/12/9
期刊
IEEE transactions on industrial informatics
卷号
17
期号
12
页码范围
8442-8452
出版商
IEEE
简介
The sheer volume of industrial Internet of Things (IIoT) malware is one of the most serious security threats in today's interconnected world, with new types of advanced persistent threats and advanced forms of obfuscations. This article presents a robust federated learning based architecture called Fed-IIoT for detecting Android malware applications in IIoT. Fed-IIoT consists of two parts: first, participant side, where the data are triggered by two dynamic poisoning attacks based on a generative adversarial network (GAN) and federated GAN; and second, server side, which aims to monitor the global model and shape a robust collaboration training model, by avoiding anomaly in aggregation by a GAN network (A3GAN) and adjust two GAN-based countermeasure algorithms. One of the main advantages of Fed-IIoT is that devices can safely participate in the IIoT and efficiently communicate with each other, with no …
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R Taheri, M Shojafar, M Alazab, R Tafazolli - IEEE transactions on industrial informatics, 2020