Strengthening IoT Intrusion Detection through the HOPNET Model
Chandrababu MajjaruResearch Scholar, School of Computer Science Engineering and Information Systems, Vellore Institute of Technology, Vellore majjaru.chandrababu2017@vitstudent.ac.in0000-0001-8117-3664
Senthilkumar K.Professor, School of Computer Science Engineering, Vellore Institute of Technology, Vellore ksenthilkumar@vit.ac.in0000-0001-6997-8398
Keywords: Intrusion Detection, Neural Networks, Intrusion Type Classification, Cloud Security, Internet of Things, Feature Extraction
Abstract
The rapid growth of Internet of Things (IoT) applications has raised concerns about the security of IoT communication systems, particularly due to a surge in malicious attacks leading to network disruptions and system failures. This study introduces a novel solution, the Hyper-Parameter Optimized Progressive Neural Network (HOPNET) model, designed to effectively detect intrusions in IoT communication networks. Validation using the Nsl-Kdd dataset involves meticulous data preprocessing for error rectification and feature extraction across diverse attack categories. Implemented on the Java platform, the HOPNET model undergoes comprehensive evaluation through comparative analysis with established intrusion detection methods. Results demonstrate the superiority of the HOPNET model, with improved attack prediction scores and significantly reduced processing times, highlighting the importance of advanced intrusion detection methods for enhancing IoT communication security. The HOPNET model contributes by establishing robust defense against evolving cyber threats, ensuring a safer IoT ecosystem, and paving the way for proactive security measures as the IoT landscape continues to evolve.