Utility (e.g., sum-rate) maximization for multiantenna broadcast and interference channels (with one antenna at the receivers) is known to be in general a non-convex problem, if one limits the scope to linear (beamforming) strategies at transmitter and receivers. In this paper, it is shown that, under some standard assumptions, most notably that the utility function is decreasing with the interference levels at the receivers, a global optimal solution can be found with reduced complexity via a suitably designed branch-and-bound method. Although infeasible for real-time implementation, this procedure enables a non-heuristic and systematic assessment of suboptimal techniques. In addition to the global optimal scheme, a real-time suboptimal algorithm, which generalizes the well-known distributed pricing techniques, is also proposed. Finally, numerical results are provided that compare global optimal solutions with suboptimal (pricing) techniques for sum-rate maximization problems, affording insight into issues such as the robustness against bad initializations in real-time suboptimal strategies. © 2011 IEEE.
Non-Convex Utility Maximization in Gaussian MISO Broadcast and Interference Channels / M., Rossi; Tulino, ANTONIA MARIA; O., Simeone; A. M., Haimovich. - ELETTRONICO. - (2011), pp. 1-5. ( International Symposium on Acoustic, Speech and Signal Processing Prague, Czech Republic May 22-27, 2011) [10.1109/ICASSP.2011.5946278].
Non-Convex Utility Maximization in Gaussian MISO Broadcast and Interference Channels
TULINO, ANTONIA MARIA;
2011
Abstract
Utility (e.g., sum-rate) maximization for multiantenna broadcast and interference channels (with one antenna at the receivers) is known to be in general a non-convex problem, if one limits the scope to linear (beamforming) strategies at transmitter and receivers. In this paper, it is shown that, under some standard assumptions, most notably that the utility function is decreasing with the interference levels at the receivers, a global optimal solution can be found with reduced complexity via a suitably designed branch-and-bound method. Although infeasible for real-time implementation, this procedure enables a non-heuristic and systematic assessment of suboptimal techniques. In addition to the global optimal scheme, a real-time suboptimal algorithm, which generalizes the well-known distributed pricing techniques, is also proposed. Finally, numerical results are provided that compare global optimal solutions with suboptimal (pricing) techniques for sum-rate maximization problems, affording insight into issues such as the robustness against bad initializations in real-time suboptimal strategies. © 2011 IEEE.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


