Title :
Distributed Power Allocation With Rate Constraints in Gaussian Parallel Interference Channels
Author :
Pang, Jong-Shi ; Scutari, Gesualdo ; Facchinei, Francisco ; Wang, Chaoxiong
Author_Institution :
Dept. of Ind. & Enterprise Syst. Eng., Univ. of Illinois at Urbana-Champaign, Urbana, IL
Abstract :
This paper considers the minimization of transmit power in Gaussian parallel interference channels, subject to a rate constraint for each user. To derive decentralized solutions that do not require any cooperation among the users, we formulate this power control problem as a (generalized) Nash equilibrium (NE) game. We obtain sufficient conditions that guarantee the existence and nonemptiness of the solution set to our problem. Then, to compute the solutions of the game, we propose two distributed algorithms based on the single user water-filling solution: The sequential and the simultaneous iterative water-filling algorithms, wherein the users update their own strategies sequentially and simultaneously, respectively. We derive a unified set of sufficient conditions that guarantee the uniqueness of the solution and global convergence of both algorithms. Our results are applicable to all practical distributed multipoint-to-multipoint interference systems, either wired or wireless, where a quality of service in (QoS) terms of information rate must be guaranteed for each link.
Keywords :
Gaussian channels; quality of service; radio links; Gaussian parallel interference channels; Nash equilibrium game; QoS; distributed power allocation; power control problem; practical distributed multipoint-to-multipoint interference; quality of service; rate constraints; sequential iterative water-filling algorithms; simultaneous iterative water-filling algorithms; Distributed algorithms; Distributed computing; Information rates; Interference channels; Interference constraints; Iterative algorithms; Nash equilibrium; Power control; Quality of service; Sufficient conditions; Game theory; Gaussian parallel interference channel; generalized Nash equilibrium (NE); iterative water-filling algorithm; mutual information; spectrum sharing;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2008.926399