6533b822fe1ef96bd127d539
RESEARCH PRODUCT
Reinforcement Learning Based Mobility Load Balancing with the Cell Individual Offset
Metin OzturkJyri HamalainenMuhammad Zeeshan Asgharisubject
Mathematical optimizationOffset (computer science)Computer science05 social sciences050801 communication & media studies020206 networking & telecommunicationsSelf-organizing network02 engineering and technologyLoad balancing (computing)Load management0508 media and communicationsHandoverMetric (mathematics)0202 electrical engineering electronic engineering information engineeringBenchmark (computing)Reinforcement learningdescription
In this study, we focus on the cell individual offset (CIO) parameter in the handover process, which represents the willingness of a cell to admit the incoming handovers. However, it is challenging to tune the CIO parameter, as any poor implementation can lead to undesired outcomes, such as making the neighboring cells over-loaded while decreasing the traffic load of the cell. In this work, a reinforcement learning-based approach for parameter selection is introduced, since it is quite convenient for dynamically changing environments. In that regard, two different techniques, namely Q-learning and SARSA, are proposed, as they are known for their multi-objective optimization capabilities. Moreover, fixed CIO values are used as a benchmark for the proposed methods for comparison purposes. Results reveal that the reinforcement learning assisted mobility load balancing (MLB) approach can alleviate the burden on the overloaded cells while keeping the neighboring cells at some reasonable load levels. The proposed methods outperform the fixed-parameter solution in terms of the given metric.
year | journal | country | edition | language |
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2021-04-01 | 2021 IEEE 93rd Vehicular Technology Conference (VTC2021-Spring) |