Artificial Intelligence Driven Intrusion Detection for Cybersecure Smart Buildings Using Internet of Things Sensors
DOI:
https://doi.org/10.71346/utj.v2i1.26Keywords:
Smart building cybersecurity, intelligent sensor networks, intrusion detection for connected infrastructures, machine learning driven threat monitoring, resilient Internet of Things security systemsAbstract
Presented research addresses escalating cyber risk within smart buildings driven by dense Internet of Things sensing and automated control. The work targets timely detection and containment of malicious activity affecting building services and preserves operational continuity. A data driven security architecture integrates intelligent sensing, automated anomaly recognition, closed loop response, and tamper resistant logging. Evidence derives from controlled simulations using realistic attack injections, long duration sensor streams, and quantitative performance evaluation. Results indicate high detection accuracy, low false alarm rates, rapid alert latency, and limited computational overhead under sustained adversarial pressure. Automated isolation and recovery actions maintain service availability during denial and device compromise events. The findings extend prior research by coupling operational telemetry with security monitoring and by demonstrating feasible real time protection under resource constraints. Practical implications include deployable protection for building management systems and guidance for secure sensor network design. Future research directions include adversarial adaptation analysis, scalability across larger deployments, and refinement of learning driven defenses under heterogeneous device conditions.
Published
How to Cite
Issue
Section
License
Copyright (c) 2026 BG Chun, Anna Axmon

This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.
Authors retain copyright for all articles published in CrossLink Studies journals. These articles are made freely available under a Creative Commons CC BY-SA 4.0, which allows unrestricted downloading and reading by the public.