Exploiting Channel Memory for Joint Estimation and Scheduling in Downlink Networks
Wenzhuo Ouyang, Sugumar Murugesan, Atilla Eryilmaz, Ness B. Shroff

TL;DR
This paper proposes a novel scheduling method for downlink networks with Markov channels, exploiting channel memory and feedback to improve throughput under partial information, using Whittle's index policy with near-optimal results.
Contribution
It establishes the Whittle indexability of the scheduling problem with imperfect channel info and derives a closed-form index policy that outperforms existing methods.
Findings
Index policy achieves near-optimal performance.
Exploiting channel memory yields significant gains.
Policy is easy to implement and effective.
Abstract
We address the problem of opportunistic multiuser scheduling in downlink networks with Markov-modeled outage channels. We consider the scenario in which the scheduler does not have full knowledge of the channel state information, but instead estimates the channel state information by exploiting the memory inherent in the Markov channels along with ARQ-styled feedback from the scheduled users. Opportunistic scheduling is optimized in two stages: (1) Channel estimation and rate adaptation to maximize the expected immediate rate of the scheduled user; (2) User scheduling, based on the optimized immediate rate, to maximize the overall long term sum-throughput of the downlink. The scheduling problem is a partially observable Markov decision process with the classic 'exploitation vs exploration' trade-off that is difficult to quantify. We therefore study the problem in the framework of…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Advanced Wireless Network Optimization · Smart Grid Energy Management
