Meta-Learning-Based Handover Management in NextG O-RAN
Michail Kalntis, George Iosifidis, Jos\'e Su\'arez-Varela, Andra Lutu, Fernando A. Kuipers

TL;DR
This paper introduces CONTRA, a meta-learning framework for adaptive handover management in next-generation networks, optimizing traditional and conditional handovers to enhance user throughput and reduce switching costs.
Contribution
It proposes the first joint optimization of THOs and CHOs within O-RAN using a practical meta-learning algorithm for real-time adaptive control.
Findings
CONTRA improves user throughput in dynamic scenarios.
Reduces handover switching costs compared to baselines.
Outperforms 3GPP and RL methods in evaluations.
Abstract
While traditional handovers (THOs) have served as a backbone for mobile connectivity, they increasingly suffer from failures and delays, especially in dense deployments and high-frequency bands. To address these limitations, 3GPP introduced Conditional Handovers (CHOs) that enable proactive cell reservations and user-driven execution. However, both handover (HO) types present intricate trade-offs in signaling, resource usage, and reliability. This paper presents unique, countrywide mobility management datasets from a top-tier mobile network operator (MNO) that offer fresh insights into these issues and call for adaptive and robust HO control in next-generation networks. Motivated by these findings, we propose CONTRA, a framework that, for the first time, jointly optimizes THOs and CHOs within the O-RAN architecture. We study two variants of CONTRA: one where users are a priori assigned…
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Taxonomy
TopicsIPv6, Mobility, Handover, Networks, Security · Advanced MIMO Systems Optimization · Software-Defined Networks and 5G
