基于联邦深度学习的真实城市物联网环境中的DDoS攻击检测

Khatereh Ahmadi, R. Javidan
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引用次数: 0

摘要

如今,除了物联网(IoT)提供的机会之外,分布式拒绝服务(DDoS)攻击是针对网络整体可用性和可靠性的最重要的攻击之一。许多研究都致力于提出新的基于机器学习的检测机制。然而,集中式学习模型需要将交通数据和学习过程集中在特定设备上,这导致了更多的计算复杂性和隐私问题。因此,本文将此类攻击的检测和预测建模为分布式合作学习方案,该方案基于在真实智慧城市环境中实现的联邦深度学习进行。结果表明,与传统的集中式深度学习模型相比,该模型具有较高的性能和准确性,同时保持了交通数据的机密性。更准确地说,就常见的学习指标而言,我们提出的模型能够分别获得0.953和0.0369的准确率和损失率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DDoS Attack Detection in a Real Urban IoT Environment Using Federated Deep Learning
today, alongside the opportunities provided by Internet of Things (IoT), Distributed Denial of Service (DDoS) attacks are one of the most significant attacks that target the overall availability and reliability of the network. Many researches have been devoted to propose new machine learning-based detection mechanisms. However, centralized learning models require the traffic data and learning process to be concentrated on a specific device, which leads to more computational complexity and privacy concerns. Consequently, in this paper, detection and prediction of such attacks is modeled as a distributed cooperative learning scheme, which is conducted based on federated deep learning implemented in a real smart city environment. The results compared with traditional centralized deep learning models indicate high performance and accuracy, while maintaining confidentiality of traffic data. More precisely, in terms of common learning metrics, our proposed model is capable of gaining 0.953 and 0.0369 accuracy and loss rates, respectively.
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