• Title of article

    Distributed resource allocation in cognitive radio networks with a game learning approach to improve aggregate system capacity

  • Author/Authors

    José Ram?n G?llego، نويسنده , , Mar?a Canales، نويسنده , , Jorge Ort?n، نويسنده ,

  • Issue Information
    ماهنامه با شماره پیاپی سال 2012
  • Pages
    14
  • From page
    1076
  • To page
    1089
  • Abstract
    This paper presents a game theoretic solution for joint channel allocation and power control in cognitive radio networks analyzed under the physical interference model. The objective is to find a distributed solution that maximizes the network utility, defined with different criteria, with limited information. The problem is addressed through a non-cooperative game based on local information. Although the existence of a pure Nash Equilibrium cannot be assured for this game, simulation results show that it exists with high probability and with a performance similar to that of a potential game, where each player requires overall network information. The obtained results are compared with a centralized heuristic genetic algorithm to show the correctness of the proposals. From this point, utility functions for the local game are modified to restrict the transmitted power to drive the solution to a more cooperative approach. To overcome the convergence limitations of the local game, no-regret learning algorithms are used to perform the joint channel and power allocation. These algorithms provide stable mixed strategies in any scenario with even better global performance. This opens an interesting perspective to develop realistic protocols based on the modeled interactions and increases the adaptability to perform efficient opportunistic spectrum access.
  • Keywords
    Cognitive radio networks , No-regret learning , Game theory , Channel allocation , Power control
  • Journal title
    Ad Hoc Networks
  • Serial Year
    2012
  • Journal title
    Ad Hoc Networks
  • Record number

    968758