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Main Authors: Moreno-Locubiche, Ainna Yue, Vidal, Josep, Muñoz-Medina, Olga, Cabrera-Bean, Margarita
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.08556
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author Moreno-Locubiche, Ainna Yue
Vidal, Josep
Muñoz-Medina, Olga
Cabrera-Bean, Margarita
author_facet Moreno-Locubiche, Ainna Yue
Vidal, Josep
Muñoz-Medina, Olga
Cabrera-Bean, Margarita
contents This article addresses the challenge of optimizing handover (HO) in next-generation wireless networks by integrating Reconfigurable Intelligent Surfaces (RIS), predicting received signal power, and utilizing learning-based decision-making. A conventional reactive HO mechanism, such as lower-layer triggered mobility (LTM), is enhanced through linear prediction to anticipate link degradation. Additionally, the use of RIS helps to mitigate signal blockage and extend coverage. An online trained non-linear Contextual Multi-Armed Bandit (CMAB) agent selects target gNBs based on context features, which reduces unnecessary HO and signaling overhead. Extensive simulations evaluate eight combinations of these techniques under realistic mobility and channel conditions. Results show that CMAB and RSRP prediction consistently reduce the number of HO, ping-pong rate and cell preparations, while RIS improves link reliability.
format Preprint
id arxiv_https___arxiv_org_abs_2512_08556
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Contextual Bandits and Reconfigurable Intelligent Surfaces for Predictive LTM Handover Decisions
Moreno-Locubiche, Ainna Yue
Vidal, Josep
Muñoz-Medina, Olga
Cabrera-Bean, Margarita
Signal Processing
This article addresses the challenge of optimizing handover (HO) in next-generation wireless networks by integrating Reconfigurable Intelligent Surfaces (RIS), predicting received signal power, and utilizing learning-based decision-making. A conventional reactive HO mechanism, such as lower-layer triggered mobility (LTM), is enhanced through linear prediction to anticipate link degradation. Additionally, the use of RIS helps to mitigate signal blockage and extend coverage. An online trained non-linear Contextual Multi-Armed Bandit (CMAB) agent selects target gNBs based on context features, which reduces unnecessary HO and signaling overhead. Extensive simulations evaluate eight combinations of these techniques under realistic mobility and channel conditions. Results show that CMAB and RSRP prediction consistently reduce the number of HO, ping-pong rate and cell preparations, while RIS improves link reliability.
title Contextual Bandits and Reconfigurable Intelligent Surfaces for Predictive LTM Handover Decisions
topic Signal Processing
url https://arxiv.org/abs/2512.08556