Swarm intelligence for intrusion detection systems in internet of things environments
Dublin Core
Title
Swarm intelligence for intrusion detection systems in internet of things environments
Subject
Internet of things
Intrusion detection systems
Network security
Pigeon inspired optimization
Swarm intelligence
Intrusion detection systems
Network security
Pigeon inspired optimization
Swarm intelligence
Description
The rise of the internet of things (IoT) technology has brought new security challenges, necessitating robust intrusion detection systems (IDS). This research applies swarm intelligence (SI) principles, specifically the pigeon inspired optimization (PIO) algorithm, to enhance IDS effectiveness in IoT environments. Drawing on the behavior of social species, SI fosters decentralized control and emergent behavior from simple rules. These principles guide the PIO algorithm, making it apt for optimizing IDS. We utilize two comprehensive IoT datasets – the Canadian Institute for Cybersecurity (CIC) IoT dataset 2023 and the IoT dataset for IDS, aiming to boost the IDS’s capability to detect illicit attacks. By adapting the PIO algorithm, our IDS learns from the environment, adapts to evolving threats, and mitigates false-positive rates. Preliminary tests show that our SI-based IDS outperforms traditional systems’ accuracy, speed, and adaptability. This research advances SI applications in IoT security, contributing to developing more resilient IDS and ultimately enhancing IoT network security against a range of cyber threats.
Creator
Apri Siswanto1, Akmar Efendi1, Jaroji2, Fajar Ratnawati2
Source
Journal homepage: http://telkomnika.uad.ac.id
Date
Nov 6, 2024
Contributor
PERI IRAWAN
Format
PDF
Language
ENGLISH
Type
TEXT
Files
Collection
Citation
Apri Siswanto1, Akmar Efendi1, Jaroji2, Fajar Ratnawati2, “Swarm intelligence for intrusion detection systems in internet of things environments,” Repository Horizon University Indonesia, accessed January 11, 2026, https://repository.horizon.ac.id/items/show/9935.