A Federated Learning-Based Approach for Improving Intrusion Detection in Industrial Internet of Things Networks

IF 3.6 3区 医学 Q2 NEUROSCIENCES
Md Mamunur Rashid, Shahriar Usman Khan, Fariha Eusufzai, Md. Azharuddin Redwan, S. R. Sabuj, Mahmoud Elsharief
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引用次数: 7

Abstract

The Internet of Things (IoT) is a network of electrical devices that are connected to the Internet wirelessly. This group of devices generates a large amount of data with information about users, which makes the whole system sensitive and prone to malicious attacks eventually. The rapidly growing IoT-connected devices under a centralized ML system could threaten data privacy. The popular centralized machine learning (ML)-assisted approaches are difficult to apply due to their requirement of enormous amounts of data in a central entity. Owing to the growing distribution of data over numerous networks of connected devices, decentralized ML solutions are needed. In this paper, we propose a Federated Learning (FL) method for detecting unwanted intrusions to guarantee the protection of IoT networks. This method ensures privacy and security by federated training of local IoT device data. Local IoT clients share only parameter updates with a central global server, which aggregates them and distributes an improved detection algorithm. After each round of FL training, each of the IoT clients receives an updated model from the global server and trains their local dataset, where IoT devices can keep their own privacy intact while optimizing the overall model. To evaluate the efficiency of the proposed method, we conducted exhaustive experiments on a new dataset named Edge-IIoTset. The performance evaluation demonstrates the reliability and effectiveness of the proposed intrusion detection model by achieving an accuracy (92.49%) close to that offered by the conventional centralized ML models’ accuracy (93.92%) using the FL method.
基于联邦学习的工业物联网入侵检测改进方法
物联网(IoT)是一个无线连接到互联网的电子设备网络。这组设备会产生大量包含用户信息的数据,最终使整个系统变得敏感,容易受到恶意攻击。集中式机器学习系统下快速增长的物联网连接设备可能会威胁到数据隐私。流行的集中式机器学习(ML)辅助方法由于需要在中心实体中获取大量数据而难以应用。由于数据在众多连接设备网络上的分布越来越多,因此需要分散的机器学习解决方案。在本文中,我们提出了一种联邦学习(FL)方法来检测不必要的入侵,以保证对物联网网络的保护。该方法通过联合训练本地物联网设备数据来确保隐私和安全。本地物联网客户端仅与中央全局服务器共享参数更新,该服务器将它们聚合并分发改进的检测算法。在每一轮FL训练之后,每个物联网客户端都会从全球服务器接收更新的模型并训练其本地数据集,物联网设备可以在优化整体模型的同时保持自己的隐私完整。为了评估所提出方法的效率,我们在一个名为Edge-IIoTset的新数据集上进行了详尽的实验。性能评估表明,该入侵检测模型的准确率(92.49%)接近传统集中式ML模型使用FL方法获得的准确率(93.92%),证明了该模型的可靠性和有效性。
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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来源期刊
Network Neuroscience
Network Neuroscience NEUROSCIENCES-
CiteScore
6.40
自引率
6.40%
发文量
68
审稿时长
16 weeks
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