Slow Adaptive OFDMA Systems Through Chance Constrained Programming
William Weiliang Li, Ying Jun (Angela) Zhang, Anthony Man-Cho So, Moe, Z. Win

TL;DR
This paper introduces a slow adaptive OFDMA scheme that reduces computational complexity and signaling overhead by updating subcarrier allocation less frequently, while probabilistically satisfying user data rate requirements.
Contribution
It formulates a chance constrained programming approach for slow adaptive OFDMA and develops a polynomial-time algorithm for its optimal solution.
Findings
Significant reduction in computational cost compared to fast adaptive schemes
Lower signaling overhead in resource allocation
Probabilistic guarantees for user data rate requirements
Abstract
Adaptive OFDMA has recently been recognized as a promising technique for providing high spectral efficiency in future broadband wireless systems. The research over the last decade on adaptive OFDMA systems has focused on adapting the allocation of radio resources, such as subcarriers and power, to the instantaneous channel conditions of all users. However, such "fast" adaptation requires high computational complexity and excessive signaling overhead. This hinders the deployment of adaptive OFDMA systems worldwide. This paper proposes a slow adaptive OFDMA scheme, in which the subcarrier allocation is updated on a much slower timescale than that of the fluctuation of instantaneous channel conditions. Meanwhile, the data rate requirements of individual users are accommodated on the fast timescale with high probability, thereby meeting the requirements except occasional outage. Such an…
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