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Multi objective resource scheduling in LTE networks using reinforcement learning

Com?a, Ioan Sorin; Wagen, Jean Fr�d�ric; Aydin, Mehmet; Zhang, Sijing; Kuonen, Pierre

Authors

Ioan Sorin Com?a

Jean Fr�d�ric Wagen

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Dr Mehmet Aydin Mehmet.Aydin@uwe.ac.uk
Senior Lecturer in Networks and Mobile Computing

Sijing Zhang

Pierre Kuonen



Abstract

The use of the intelligent packet scheduling process is absolutely necessary in order to make the radio resources usage more efficient in recent high-bit-rate demanding radio access technologies such as Long Term Evolution (LTE). Packet scheduling procedure works with various dispatching rules with different behaviors. In the literature, the scheduling disciplines are applied for the entire transmission sessions and the scheduler performance strongly depends on the exploited discipline. The method proposed in this paper aims to discuss how a straightforward schedule can be provided within the transmission time interval (TTI) sub-frame using a mixture of dispatching disciplines per TTI instead of a single rule adopted across the whole transmission. This is to maximize the system throughput while assuring the best user fairness. This requires adopting a policy of how to mix the rules and a refinement procedure to call the best rule each time. Two scheduling policies are proposed for how to mix the rules including use of Q learning algorithm for refining the policies. Simulation results indicate that the proposed methods outperform the existing scheduling techniques by maximizing the system throughput without harming the user fairness performance. © 2012, IGI Global.

Citation

Wagen, J. F., Comşa, I. S., Aydin, M., Zhang, S., & Kuonen, P. (2012). Multi objective resource scheduling in LTE networks using reinforcement learning. International Journal of Distributed Systems and Technologies, 3(2), 39-57. https://doi.org/10.4018/jdst.2012040103

Journal Article Type Article
Publication Date Apr 1, 2012
Journal International Journal of Distributed Systems and Technologies
Print ISSN 1947-3532
Electronic ISSN 1947-3540
Publisher IGI Global
Peer Reviewed Peer Reviewed
Volume 3
Issue 2
Pages 39-57
DOI https://doi.org/10.4018/jdst.2012040103
Keywords LTE resource scheduling, reinforcement learning, multi objective optimisation
Public URL https://uwe-repository.worktribe.com/output/952324
Publisher URL http://dx.doi.org/10.4018/jdst.2012040103