Work place: Department of Computer Science, University of Ghana, Lego-Accra, Ghana
E-mail: mendssamuel@gmail.com
Website: https://orcid.org/0009-0009-8309-6215
Research Interests:
Biography
Samuel Mends: Holds MSc in Computer Science and is an experienced IT professional and co-founder of SmS Inc, where he has been driving innovation and systems integration for over 13 years. He holds a BSc in Computer Science from Valley View University and is a certified Cisco Network Associate from the Kofi Annan Centre of Excellence in ICT (AITI-KACE). Samuel has served in key technical roles, including as a Systems Engineer at the Ministry of Finance and during his national service at the Ministry of Defence. He brings strong expertise in enterprise routing and switching configuration, with a proven track record in deploying scalable network solutions across both public and private sectors.
By Samuel Mends Kofi Sarpong Adu-Manu
DOI: https://doi.org/10.5815/ijwmt.2026.01.01, Pub. Date: 8 Feb. 2026
Wireless Sensor Networks (WSNs) are integral to mission-critical applications, including environmental monitoring, smart infrastructure, and healthcare. However, they are particularly vulnerable to denial-of-service (DoS) attacks, which can deplete the node's energy and disrupt communication. This study examines the effectiveness of various machine learning algorithms in enhancing intrusion detection within WSNs, focusing on balancing detection accuracy and computational efficiency. Utilising the Network Simulator-2 (NS-2) generated WSN-DS dataset, seven algorithms—K-Nearest Neighbours (KNN), Decision Tree (DT), Random Forest (RF), Naïve Bayes (NB), Stacking Classifier, AdaBoost, and Artificial Neural Network (ANN)—were implemented and evaluated. The experimental results indicate that AdaBoost achieved the highest overall performance, with an accuracy of 99.7%, ROC-AUC of 0.996, and detection speed of 1.6 min, underscoring its suitability for real-time intrusion detection. Stacking and Random Forest also demonstrated high accuracy (99.7% and 99.6%, respectively) but required slightly longer detection times of 7.07 and 7.33 min, respectively. In contrast, KNN exhibited the longest detection time (86.2 min) due to its high computational overhead, whereas Naïve Bayes was the fastest (0.02 min) but had lower precision (0.757) and F1-score (0.771). AdaBoost demonstrated superior detection accuracy, efficiency, and adaptability under constrained WSN conditions, outperforming all other algorithms across multiple performance metrics. These findings offer a practical benchmark for developing lightweight, high-performance intrusion detection systems in resource-limited wireless sensor environments, thereby enhancing the resilience and reliability of next-generation WSN infrastructures.
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