Data-Driven Cellular Mobility Management via Bayesian Optimization and Reinforcement Learning
Mohamed Benzaghta, Sahar Ammar, David L\'opez-P\'erez, Basem Shihada, and Giovanni Geraci

TL;DR
This paper introduces data-driven methods using Bayesian optimization and reinforcement learning to optimize cellular handover parameters, improving mobility management performance in complex, real-world network scenarios.
Contribution
It presents novel HD-BO and DRL approaches for adaptive mobility management, outperforming traditional fixed-parameter benchmarks and enabling transfer learning for diverse user speeds.
Findings
HD-BO and DRL outperform 3GPP benchmarks in real-world scenarios.
Transfer learning enhances adaptability to different user speeds.
HD-BO is more sample-efficient than DRL, suitable for limited data scenarios.
Abstract
Mobility management in cellular networks faces increasing complexity due to network densification and heterogeneous user mobility characteristics. Traditional handover (HO) mechanisms, which rely on predefined parameters such as A3-offset and time-to-trigger (TTT), often fail to optimize mobility performance across varying speeds and deployment conditions. Fixed A3-offset and TTT configurations either delay HOs, increasing radio link failures (RLFs), or accelerate them, leading to excessive ping-pong effects. To address these challenges, we propose two data-driven mobility management approaches leveraging high-dimensional Bayesian optimization (HD-BO) and deep reinforcement learning (DRL). HD-BO optimizes HO parameters such as A3-offset and TTT, striking a desired trade-off between ping-pongs vs. RLF. DRL provides a non-parameter-based approach, allowing an agent to select serving cells…
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Taxonomy
TopicsVehicular Ad Hoc Networks (VANETs) · Cellular Automata and Applications · Advanced Manufacturing and Logistics Optimization
