Publication: AI-Driven Adaptive Security for Sensor Networks: Next-Generation Firewalls for Attack Detection
Type:
Article
Date
2025-07-25
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
John Wiley and Sons
Abstract
Sensor networks are increasingly critical in modern smart environments; however, their limited computational resources expose them to sophisticated cyber threats. Traditional static firewalls and computationally intensive deep learning models are impractical for securing such networks. This study proposes an adaptive next-generation firewall (NGFW) that dynamically switches between shallow and deep AI models based on real-time network load and resource availability. Four neural network models were trained using 20 and 40-feature subsets of the UNSW-NB15 dataset. Two runtime strategies (i) on-demand model loading and (ii) preloaded model switching were developed and evaluated through simulation under real-time conditions. Experimental results indicate that the preloaded approach achieves up to 96% accuracy, 98% precision, and 4-ms inference latency, with a memory footprint of 19 MB, outperforming static AI firewalls in both efficiency and scalability. The proposed NGFW framework offers a resilient and scalable solution for real-time attack detection in resource-constrained environments without requiring frequent model retraining. Future enhancements include hybrid shallow–deep model architectures, continuous federated learning for decentralized adaptability, and the integration of explainable AI to enhance transparency and trustworthiness in edge security deployments.
Description
Keywords
AI-driven security, attack detection, next-generation firewall, sensor networks, shallow–deep hybrid models
Citation
Meegammana, Niranjan W., Fernando, Harinda, AI-Driven Adaptive Security for Sensor Networks: Next-Generation Firewalls for Attack Detection, International Journal of Distributed Sensor Networks, 2025, 5973480, 16 pages, 2025. https://doi.org/10.1155/dsn/5973480
