Author
Listed:
- Laith H. Baniata
(Department of Autonomous Systems, Faculty of Artificial Intelligence, Al-Balqa Applied University, Al-Salt 19117, Jordan)
- Ashraf ALDabbas
(Intelligent Systems Department, Faculty of Artificial Intelligence, Al-Balqa Applied University, Al-Salt 19117, Jordan)
- Jaffar M. Atwan
(Intelligent Systems Department, Faculty of Artificial Intelligence, Al-Balqa Applied University, Al-Salt 19117, Jordan
Department of Computer Science, Faculty of Information Technology, Applied Science Private University, Amman 11937, Jordan)
- Hussein Alahmer
(Department of Autonomous Systems, Faculty of Artificial Intelligence, Al-Balqa Applied University, Al-Salt 19117, Jordan)
- Basil Elmasri
(Intelligent Systems Department, Faculty of Artificial Intelligence, Al-Balqa Applied University, Al-Salt 19117, Jordan)
- Chayut Bunterngchit
(Division of Industrial and Logistics Engineering Technology, Faculty of Engineering and Technology, King Mongkut’s University of Technology North Bangkok, Rayong Campus, Rayong 21120, Thailand)
Abstract
Wireless Sensor Networks (WSNs) are increasingly being used in mission-critical infrastructures. In such applications, they are evaluated on the risk of cyber intrusions that can target the already constrained resources. Traditionally, Intrusion Detection Systems (IDS) in WSNs have been based on machine learning techniques; however, these models fail to capture the nonlinear, temporal, and topological dependencies across the network nodes. As a result, they often suffer degradation in detection accuracy and exhibit poor adaptability against evolving threats. To overcome these limitations, this study introduces a hybrid deep learning-based IDS that integrates multi-scale convolutional feature extraction, dual-stage attention fusion, and graph convolutional reasoning. Moreover, bidirectional long short-term memory components are embedded into the unified framework. Through this combination, the proposed architecture effectively captures the hierarchical spatial–temporal correlations in the traffic patterns, thereby enabling precise discrimination between normal and attack behaviors across several intrusion classes. The model has been evaluated on a publicly available benchmarking dataset, and it has been found to attain higher classification capability in multiclass scenarios. Furthermore, the model outperforms conventional IDS-focused approaches. In addition, the proposed design aims to retain suitable computational efficiency, making it appropriate for edge and distributed deployments. Consequently, this makes it an effective solution for next-generation WSN cybersecurity. Overall, the findings emphasize that combining topology-aware learning with multi-branch attention mechanisms offers a balanced trade-off between interpretability, accuracy, and deployment efficiency for resource-constrained WSN environments.
Suggested Citation
Laith H. Baniata & Ashraf ALDabbas & Jaffar M. Atwan & Hussein Alahmer & Basil Elmasri & Chayut Bunterngchit, 2025.
"A Dual-Attention CNN–GCN–BiLSTM Framework for Intelligent Intrusion Detection in Wireless Sensor Networks,"
Future Internet, MDPI, vol. 18(1), pages 1-21, December.
Handle:
RePEc:gam:jftint:v:18:y:2025:i:1:p:5-:d:1823938
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