黑料社

School of Engineering & Applied Sciences

Mohamed Elmahallawy

Professor

photo of Mohamed Elmahallawy
Mohamed ElmahallawyFloyd 134KAssistant Professor, Computer Science/Cybersecurity
Education
  • Ph.D. in Computer Science, Missouri University of Science and Technology, 2024
  • M.S. in Computer Science and Electrical Engineering, University of Rostock, 2019
  • B.S. in Electronics and Communications Engineering, Higher Institute of Engineering in Elshorouk City, 2012

Joined 黑料社 Tri-Cities in 2024 from Missouri University of Science and Technology.

Academic Interests

Teaching

  • Introduction to Machine Learning

Research

  • Advanced Machine/Federated Learning Techniques
  • Robust Cybersecurity Measures and Encryption
  • Integration and Optimization of Internet of Things
Recent Publications
  • M. Elmahallawy and T. Luo, 鈥淪ecure and Privacy-Preserving Federated Learning for Low Earth Orbit Satellite Networks鈥, IEEE Transactions on Dependable and Secure Computing, Under review.
  • M. Elmahallawy, T. Luo, and K. Ramadan, 鈥淓fficient Federated Learning for LEO Satellite Networks Integrated with Unmanned High-altitude Platforms using hybrid NOMA-OFDMA鈥, IEEE Journal on Selected Areas in Communications (JSAC), 2024, DOI: 10.1109/JSAC.2024.3365885.
  • M. Elmahallawy, T. Elfouly, A. Alouani, and A. M. Massoud, 鈥淎 Comprehensive Review of Lithium-Ion Batteries Modeling, and State of Health and Remaining Useful Lifetime Prediction鈥, in IEEE Access, vol. 10, pp. 119040-119070, 2022.
  • M. Elmahallawy, A. TagEldein, and S. Elagooz, 鈥淧erformance Enhancement of Underwater Acoustic OFDM Communication Systems”, Wireless Personal Communications 108 (2019): 2047-2057.
  • M. Elmahallawy and A. TagEldein, 鈥淧erformance Enhancement of UWA-OFDM Communication Systems based on FWHT鈥, International Journal of Communication Systems 32.16 (2019): e3979.
  • M. Elmahallawy, and Sanjay Madria, 鈥淔edMining: Efficient Federated Learning with Functional Encryption for Hazard Detection in Underground Mining鈥, IEEE International Conference on Computer Communications (INFOCOM 2025), under review.
  • Md Sazedur Rahman, M. Elmahallawy, Sanjay Madria, and Samuel Frimpong, 鈥淐AV-AD: A Robust Framework for Detection of Anomalous Data and Malicious Sensors in CAV Networks鈥, The 21st IEEE International Conference on Mobile Ad-Hoc and Smart Systems (MASS 2024), under review.
  • Manish Yadav, M. Elmahallawy, and Sanjay Madria, 鈥淧redicting Battery Levels in WSNs Using Reinforcement Learning in Harsh Underground Mining Environments鈥, The 43rd International Symposium on Reliable Distributed Systems (SRDS 2024), under review.
  • Mizanur Jewel, M. Elmahallawy, and Sanjay Madria, 鈥淧redicting Battery Levels in WSNs Using Reinforcement Learning in Harsh Underground Mining Environments鈥, The 43rd International Symposium on Reliable Distributed Systems (SRDS 2024), under review.
  • Shreen Gul, M. Elmahallawy, and Sanjay Madria, 鈥淟PLGrad: Loss Prediction Loss with Gradient Norm for instant聽labeling鈥, The IEEE BigData (Bigdata 2024), under review.
  • M. Elmahallawy, and T. Luo, 鈥淪ecure Aggregation Is Myopic: Preserving Long-Term Privacy in Asynchronous Federated Satellite Learning鈥, The 27 European Conference on Artificial Intelligence (ECAI), under review.
  • M. Elmahallawy, and T. Luo, 鈥淪titching Satellites to the Edge: Pervasive and Efficient Federated LEO Satellite Learning鈥, 22nd IEEE International Conference on Pervasive Computing and Communications (PerCom), March 2024.
  • M. Elmahallawy, T. Luo, and M. I. Ibrahem, 鈥淪ecure and Efficient Federated Learning in LEO Constellations using Decentralized Key Generation and On-Orbit Model Aggregation鈥, IEEE Global Communication Conference (GlobeCom), December 2023.
  • M. Elmahallawy, and T. Luo, 鈥淥ne-Shot Federated Learning for LEO Constellations that Reduces Convergence Time from Days to 90 Minutes鈥, 24th IEEE International Conference on Mobile Data Management (MDM), July 2023.
  • M. Elmahallawy, and T. Luo, 鈥淥ptimizing Federated Learning in LEO Satellite Constellations via Intra-Plane Model Propagation and Sink Satellite Scheduling鈥, IEEE Conference on Communications (ICC), 2023.
  • M. Elmahallawy, and T. Luo, 鈥淎syncFLEO: Asynchronous Federated Learning for LEO Satellite Constellations with High-Altitude Platforms鈥, 2022 IEEE International Conference on Big Data (Big Data), Osaka, Japan, 2022, pp. 5478-5487.
  • M. Elmahallawy, and T. Luo, 鈥淔edHAP: Fast Federated Learning for LEO Constellations Using Collaborative HAPs鈥, in Proc. IEEE 14th International Conference on Wireless Communication and Signal Process., Nanjing, China, 2022, pp. 1-6.
  • Yasmine Mustafa, M. Elmahallawy, T. Luo, and Seif Eldawlatly 鈥淎 Brain-Computer Interface Augmented Reality Framework with Auto-Adaptive SSVEP Recognition鈥, IEEE International Conference on Metrology for eXtended Reality, Artificial Intelligence and Neural Engineering (MetroXRAINE), 2023.
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