PhD defense Abdelaziz Bounhar: Information Theory and Reinforcement Learning for Mixed Covert and Non-Covert Wireless Networks
Télécom Paris, 19 place Marguerite Perey F-91120 Palaiseau [getting there], amphi Estaunié and in videoconferencing
Jury
- Mrs. Michèle WIGGER, Télécom Paris, Thesis director
- Mrs. Mireille SARKISS, Télécom SudParis, Thesis co-director
- Mr. Matthieu BLOCH, Georgia Institute of Technology, Reviewer
- Mr. Philippe MARY, INSA de Renne, Reviewer
- Mr. Deniz GÜNDÜZ, Imperial College London, Examiner
- Mr. Ligong WANG, ETH Zurich, Examiner
- Mrs. Haoyue TANG, Meta AI, Examiner
- Mrs. Laura LUZZI, ENSEA, Examiner
Abstract
While cryptographic methods offer security, they are often impractical for Internet of Things (IoT) devices due to their limited computational resources and battery life. In light of these challenges, physical layer security techniques, particularly covert communication, seems to be an adequate solution for securing IoT communications. Existing research on covert communication has predominantly focused on systems with solely covert users. This thesis addresses this gap and pioneers the characterization of the information-theoretic fundamental limits of communication systems involving both covert and non-covert users, demonstrating how and when non-covert users can enhance covert communication.