Data Driven Optimization of Inter-Frequency Mobility Parameters for Emerging Multi-band Networks
Muhammad Umar Bin Farooq, Marvin Manalastas, Waseem Raza, Aneeqa Ijaz,, Syed Muhammad Asad Zaidi, Adnan Abu-Dayya, Ali Imran

TL;DR
This paper develops a data-driven approach using machine learning and genetic algorithms to optimize inter-frequency mobility parameters in 5G networks, improving handover performance and signal quality.
Contribution
It introduces a novel data-driven framework for optimizing mobility parameters, revealing that optimal values differ from standard settings and can be efficiently found using genetic algorithms.
Findings
Optimal parameter values vary for different KPIs.
Current standard parameters are not always optimal.
Genetic algorithm achieves near-optimal solutions 48x faster.
Abstract
Densification and multi-band operation in 5G and beyond pose an unprecedented challenge for mobility management, particularly for inter-frequency handovers. The challenge is aggravated by the fact that the impact of key inter-frequency mobility parameters, namely A5 time to trigger (TTT), A5 threshold1 and A5 threshold2 on the system's performance is not fully understood. These parameters are fixed to a gold standard value or adjusted through hit and trial. This paper presents a first study to analyze and optimize A5 parameters for jointly maximizing two key performance indicators (KPIs): Reference signal received power (RSRP) and handover success rate (HOSR). As analytical modeling cannot capture the system-level complexity, a data driven approach is used. By developing XGBoost based model, that outperforms other models in terms of accuracy, we first analyze the concurrent impact of…
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