Botnet Detection and Mitigation Model for IoT Networks Using Federated Learning

Author:

de Caldas Filho Francisco Lopes1ORCID,Soares Samuel Carlos Meneses1ORCID,Oroski Elder2ORCID,de Oliveira Albuquerque Robson1ORCID,da Mata Rafael Zerbini Alves1ORCID,de Mendonça Fábio Lúcio Lopes1ORCID,de Sousa Júnior Rafael Timóteo1ORCID

Affiliation:

1. Electrical Engineering Department (ENE), Technology College, University of Brasília (UnB), Brasília 70910-900, Brazil

2. Electrical Engineering Department (DAELT), Federal University of Technology—Paraná (UTFPR), Curitiba 80230-901, Brazil

Abstract

The Internet of Things (IoT) introduces significant security vulnerabilities, raising concerns about cyber-attacks. Attackers exploit these vulnerabilities to launch distributed denial-of-service (DDoS) attacks, compromising availability and causing financial damage to digital infrastructure. This study focuses on mitigating DDoS attacks in corporate local networks by developing a model that operates closer to the attack source. The model utilizes Host Intrusion Detection Systems (HIDS) to identify anomalous behaviors in IoT devices and employs network-based intrusion detection approaches through a Network Intrusion Detection System (NIDS) for comprehensive attack identification. Additionally, a Host Intrusion Detection and Prevention System (HIDPS) is implemented in a fog computing infrastructure for real-time and precise attack detection. The proposed model integrates NIDS with federated learning, allowing devices to locally analyze their data and contribute to the detection of anomalous traffic. The distributed architecture enhances security by preventing volumetric attack traffic from reaching internet service providers and destination servers. This research contributes to the advancement of cybersecurity in local network environments and strengthens the protection of IoT networks against malicious traffic. This work highlights the efficiency of using a federated training and detection procedure through deep learning to minimize the impact of a single point of failure (SPOF) and reduce the workload of each device, thus achieving accuracy of 89.753% during detection and increasing privacy issues in a decentralized IoT infrastructure with a near-real-time detection and mitigation system.

Funder

Fundação de Apoio à Pesquisa, Universidade Federal de Goiás

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

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1. Deep learning based capsule networks for breast cancer classification using ultrasound images;Current Cancer Reports;2024-08-27

2. Enhanced botnet detection in IoT networks using zebra optimization and dual-channel GAN classification;Scientific Reports;2024-07-26

3. A survey: contribution of ML & DL to the detection & prevention of botnet attacks;Journal of Reliable Intelligent Environments;2024-06-24

4. Edge Computing Enabled Anomaly Detection in IoT Environments Using Federated Learning;2024 International Conference on Communication, Computer Sciences and Engineering (IC3SE);2024-05-09

5. MiraiBotGuard: Federated Learning for Intelligent Defense Against Mirai Threats;2024 2nd International Conference on Device Intelligence, Computing and Communication Technologies (DICCT);2024-03-15

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