Title :
Competing Mobile Network Game: Embracing antijamming and jamming strategies with reinforcement learning
Author :
Youngjune Gwon ; Dastangoo, Siamak ; Fossa, Carl ; Kung, H.T.
Author_Institution :
Harvard Univ., Cambridge, MA, USA
Abstract :
We introduce Competing Mobile Network Game (CMNG), a stochastic game played by cognitive radio networks that compete for dominating an open spectrum access. Differentiated from existing approaches, we incorporate both communicator and jamming nodes to form a network for friendly coalition, integrate antijamming and jamming subgames into a stochastic framework, and apply Q-learning techniques to solve for an optimal channel access strategy. We empirically evaluate our Q-learning based strategies and find that Minimax-Q learning is more suitable for an aggressive environment than Nash-Q while Friend-or-foe Q-learning can provide the best solution under distributed mobile ad hoc networking scenarios in which the centralized control can hardly be available.
Keywords :
cognitive radio; interference suppression; jamming; learning (artificial intelligence); minimax techniques; mobile ad hoc networks; radio access networks; radio spectrum management; stochastic games; telecommunication computing; wireless channels; CMNG; Nash-Q learning technique; antijamming subgame strategy; centralized control; cognitive radio network; competing mobile network game; friend-or-foe Q-learning technique; jamming subgame strategy; minimax-Q learning technique; mobile ad hoc network; open spectrum access; optimal channel access strategy; reinforcement learning; stochastic game; Aerospace electronics; Cognitive radio; Games; Jamming; Mobile communication; Mobile computing; Radio frequency;
Conference_Titel :
Communications and Network Security (CNS), 2013 IEEE Conference on
Conference_Location :
National Harbor, MD
DOI :
10.1109/CNS.2013.6682689