4.7 Article

Distributive Stochastic Learning for Delay-Optimal OFDMA Power and Subband Allocation

Journal

IEEE TRANSACTIONS ON SIGNAL PROCESSING
Volume 58, Issue 9, Pages 4848-4858

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TSP.2010.2050062

Keywords

Delay-optimal; distributive stochastic learning; MDP; OFDMA; power allocation; subband allocation

Funding

  1. RGC [615609]

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In this paper, we consider the distributive queuea-ware power and subband allocation design for a delay-optimal OFDMA uplink system with one base station, users and N-F independent subbands. Each mobile has an uplink queue with heterogeneous packet arrivals and delay requirements. We model the problem as an infinite horizon average reward Markov decision problem (MDP) where the control actions are functions of the instantaneous channel state information (CSI) as well as the joint queue state information (QSI). To address the distributive requirement and the issue of exponential memory requirement and computational complexity, we approximate the subband allocation Q-factor by the sum of the per-user subband allocation Q-factor and derive a distributive online stochastic learning algorithm to estimate the per-user Q-factor and the Lagrange multipliers (LM) simultaneously and determine the control actions using an auction mechanism. We show that under the proposed auction mechanism, the distributive online learning converges almost surely (with probability 1). For illustration, we apply the proposed distributive stochastic learning framework to an application example with exponential packet size distribution. We show that the delay-optimal power control has the multilevel water-filling structure where the CSI determines the instantaneous power allocation and the QSI determines the water-level. The proposed algorithm has linear signaling overhead and computational complexity O(K N-F), which is desirable from an implementation perspective.

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