Issa Alsmadi

Work place: Department of Data Science and Artificial Intelligence, Faculty of Information Technology, Ajloun National University, Ajloun, Jordan.

E-mail: i.alsmadi@anu.edu.jo

Website: https://orcid.org/0000-0001-8789-1149

Research Interests:

Biography

Issa Alsmadi is an assistant professor of artificial intelligence and data science at the Department of Artificial Intelligence and Data Science, Faculty of Information Technology, Ajloun National University, Jordan. He holds a qualification from the Department of Computer Science and Information Technology at USM, Penang, Malaysia. His broad research encompasses a number of topics, including machine learning, artificial intelligence, data mining, nature-inspired algorithms, and applied evolutionary computation. He uses a variety of methodologies to conduct investigations on detection and prediction. 

Author Articles
Integrating Fractional Generalized Laguerre Moment with Deep Residual Learning for Real-Time Attack Classification

By Amr H. Abdelhaliem Bajeszeyadaljunaeidia Islam S. Fathi Mohammed Tawfik Issa Alsmadi

DOI: https://doi.org/10.5815/ijwmt.2026.03.16, Pub. Date: 8 Jun. 2026

IoT networks face persistent security challenges due to limited compute, heterogeneous hardware, and weak threat-detection coverage. Classical machine-learning methods struggle with high-dimensional traffic and novel attack patterns. This paper proposes a hybrid framework combining Fractional Generalized Laguerre (FrGL) moment-based feature extraction with a Residual Network augmented by Squeeze-and-Excitation attention (ResNet-SE). FrGL moments yield compact, noise-resistant descriptors via simple recurrence relations, while ResNet-SE mitigates degradation in deep networks through identity shortcuts and adaptively recalibrates channels to highlight attack-relevant features. On the Bot-IoT and Leopard Mobile IoT benchmarks the method reaches 99.78 % accuracy and 99.37 % F1, exceeding KNN (84.7 %), MLR (87.5 %) and a baseline CNN (99.3 %); cross-dataset tests on UNSW-NB15 and IoT-Bot give 96.34 % and 97.12 % accuracy. The framework additionally delivers per-sample inference latency on server- and edge-class hardware (3.9 ms on an NVIDIA V100 and 27.4 ms on a Raspberry Pi 4B with a Coral USB accelerator), an energy cost of 0.42 J per inference on the edge platform, a sensitivity analysis over learning rate, batch size, fractional order λ and reduction ratio r, and an adversarial-robustness evaluation under FGSM and PGD attacks, supporting real-time deployment on resource-constrained IoT gateways.

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