Author
Listed:
- Yirga Yayeh Munaye
(Department of Electrical and Computer Engineering, Institute of Electrical and Control Engineering, National Yang Ming Chiao Tung University, Hsinchu 30010, Taiwan)
- Abebaw Demelash Gebeyehu
(Department of Computer Engineering, Bahir Dar Institute of Technology, Bahir Dar 26, Ethiopia)
- Li-Chia Tai
(Department of Electrical and Computer Engineering, Institute of Electrical and Control Engineering, National Yang Ming Chiao Tung University, Hsinchu 30010, Taiwan)
- Zemenu Alem Abebe
(Department of Computer Engineering, Bahir Dar Institute of Technology, Bahir Dar 26, Ethiopia)
- Aeneas Bekele Workneh
(Department of Computer Engineering, Bahir Dar Institute of Technology, Bahir Dar 26, Ethiopia)
- Robel Berie Tarekegn
(Department of Electrical and Computer Engineering, Institute of Electrical and Control Engineering, National Yang Ming Chiao Tung University, Hsinchu 30010, Taiwan)
- Yenework Belayneh Chekol
(Department of Information Technology, Injibara University, Injibara 40, Ethiopia)
- Getaneh Berie Tarekegn
(Independent Researcher, Silver Spring, MD 20904, USA)
Abstract
Wireless sensor networks (WSNs) have become a critical component of modern Internet of Things (IoT) infrastructures; however, their constrained resources and distributed deployment expose them to various cyber threats. In this work, we present a machine learning-driven intrusion detection framework optimized for WSN-based IoT environments. The proposed approach employs the WSN-DS benchmark dataset and integrates adaptive synthetic sampling (ADASYN) to address class imbalance, followed by a hybrid feature selection strategy combining Feature Importance Selection (FIS) and Recursive Feature Elimination (RFE) to reduce dimensionality and improve learning efficiency. An XGBoost classifier is then trained using five-fold cross-validation to ensure robust generalization. The experimental results demonstrate that the proposed framework significantly outperforms baseline methods, achieving an overall accuracy of 99.87%, with substantial gains in terms of F1-score, precision, and recall. Comparative analysis against recent WSN-DS studies confirms the effectiveness of combining imbalance correction, optimized feature selection, and ensemble learning. These findings highlight the potential of the proposed model as a lightweight and highly accurate intrusion detection solution for emerging WSN-IoT deployments.
Suggested Citation
Yirga Yayeh Munaye & Abebaw Demelash Gebeyehu & Li-Chia Tai & Zemenu Alem Abebe & Aeneas Bekele Workneh & Robel Berie Tarekegn & Yenework Belayneh Chekol & Getaneh Berie Tarekegn, 2026.
"Machine Learning-Driven Intrusion Detection for Securing IoT-Based Wireless Sensor Networks,"
Future Internet, MDPI, vol. 18(2), pages 1-25, February.
Handle:
RePEc:gam:jftint:v:18:y:2026:i:2:p:113-:d:1868836
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