Home Journals IJTER Archives Vol. 1, No. 3 Advanced CyberSecurity Solutions for IoT Based Networks

International Journal of Technology & Emerging Research

e-ISSN: 3068-109X p-ISSN: 3068-1995 DOI: 10.64823 Current Volume: 2 — Issue 6 (2026)
Open Access monthly Peer Reviewed Submit Manuscript
Article Info
Open Access Research Article

Advanced CyberSecurity Solutions for IoT Based Networks

by Nammi Arun Kumar , Dr. G. Narasimha Rao

International Journal of Technology & Emerging Research 2025 , 1 (3) , 240

10.64823/ijter.2503030
Published: 28 Jul 2025
View PDF Download

Abstract

The proliferation of Internet of effects bias has introduced significant cybersecurity vulnerabilities compounded by their essential interconnectedness and resource limitations. This paper proposes a robust cybersecurity frame designed to guard IoT ecosystems. Our result integrates an Autoencoder for effective point birth and anomaly discovery Deep Neural Networks(DNNs) for sophisticated deep literacy- grounded attack bracket and Decision Trees for rapid-fire, interpretable real- time trouble identification. By assaying live data from IoT bias, the system effectively detects anomalies and directly classifies different cyber pitfalls including Denial of Service(DoS) attacks and unauthorized access attempts. This multi-layered approach leverages the Autoencoder's capability to learn normal data patterns and highlight diversions while DNNs use these uprooted features to fete intricate attack autographs with high perfection. The addition of Decision Trees ensures nippy and transparent bracket critical for nimble trouble response. This intertwined system significantly improves trouble discovery capabilities and accelerates response times thereby strengthening the overall security posture of IoT networks. The proposed result offers an adaptive and visionary defense against the dynamic and evolving diapason of cyber pitfalls in the expanding IoT geography which decreasingly includes criticalcyber-physical systems(CPS) like Industrial IoT(IIoT) bias within sectors similar as heads and mileage shops integral to the dependable operation of artificial control systems(ICS) including SCADA, DCS, PLCs, and Modbus protocols.

Keywords: Industrial Control Systems (ICS), Internet of Things (IoT), Cybersecurity, Anomaly Detection, AutoEncoder, Deep Neural Networks (DNN), Decision Tree Classifier, Principal Component Analysis (PCA), Machine Learning, Feature Extraction, Attack Classification, SWaT Dataset, Denial of Service (DoS), Malicious Command Injection, Supervised and Unsupervised Learning, Real-time Threat Detection, Cyber-Physical Systems (CPS), SCADA Systems, Modbus Protocols, and Critical Infrastructure Protection.

Share Your Research

Spread the word across academic networks

/280 characters

Download and attach while posting

Generating image...

Could not generate image preview.

Share card preview
DOI:

IORO Support

Usually replies in minutes

Common Questions

Leave us a message: