Enabling Proportionally-Fair Mobility Management With Reinforcement Learning in 5G Networks

Anna Prado, Franziska Stockeler, Fidan Mehmeti, Patrick Kramer, Wolfgang Kellerer

Research output: Contribution to journalArticlepeer-review

15 Scopus citations

Abstract

Mobility management in 5G is challenging, and at higher frequencies, a larger number of cells is needed to provide similar coverage to that in 4G. Consequently, Base Stations (BSs) are placed much more densely and users experience frequent handovers, reducing network capacity. Advanced handover techniques are needed in 5G to perform smooth network operation. In this paper, we formulate an optimization problem, whose goal is to strive for fairness in data rates among users and to reduce handovers. To accomplish that, we consider jointly the decisions when to handover and to which BS a user is to be assigned. This is an integer nonlinear program, and by relaxing it, we obtain an upper bound. Further, due to its NP-hardness, we propose a centralized and a multi-agent Deep Q Network (DQN)-based algorithm, which both find near-optimal user-to-BS assignments. We evaluate our Reinforcement Learning-based solutions for networks of different sizes and users with different velocities. We compare our approaches with baselines and show that they outperform them considerably in terms of fairness and radio link failures while being within 95% of the optimum. Our DQN algorithms also reduce the handover rate by up to 93% and avoid ping-pong handovers almost completely.

Original languageEnglish
Pages (from-to)1845-1858
Number of pages14
JournalIEEE Journal on Selected Areas in Communications
Volume41
Issue number6
DOIs
StatePublished - 1 Jun 2023

Keywords

  • 5G
  • Proportional fairness
  • deep reinforcement learning
  • handovers
  • mobility

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