Modeling 5G-NR User Blocking Probability in Conditional Handover-Enabled Heterogeneous Networks

Conditional Handover (CHO), introduced in the 16th edition of the 3GPP standard, serves as an alternative to Baseline Handover (BHO). CHO aims to mitigate radio link failures (RLFs) during handover preparation by incorporating a dedicated base station (BS) reservation phase. While BS reservation eff...

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Main Authors: Amiraslan Haghrah, Javad Musevi Niya, Jafar Pourrostam
Format: Article
Language:English
Published: IEEE 2025-01-01
Series:IEEE Access
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Online Access:https://ieeexplore.ieee.org/document/11053849/
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author Amiraslan Haghrah
Javad Musevi Niya
Jafar Pourrostam
author_facet Amiraslan Haghrah
Javad Musevi Niya
Jafar Pourrostam
author_sort Amiraslan Haghrah
collection DOAJ
description Conditional Handover (CHO), introduced in the 16th edition of the 3GPP standard, serves as an alternative to Baseline Handover (BHO). CHO aims to mitigate radio link failures (RLFs) during handover preparation by incorporating a dedicated base station (BS) reservation phase. While BS reservation effectively reduces RLF rates, it concurrently occupies valuable radio resources, potentially leading to user blockages in congested scenarios. In this research, we develop a mathematical model to quantify user blocking probability by employing Markov models and connecting this probability to handover management parameters using stochastic geometry to characterize user mobility and BS coverage. This formulation establishes a probabilistic link between handover management parameters and user blocking occurrences. It further reveals that optimization solely focused on minimizing user blocking can paradoxically increase RLF rates, highlighting the need to consider trade-offs among performance metrics. To demonstrate the practical applicability of the proposed model, we present a case study involving a multi-objective optimization problem solved using the Non-Dominated Sorting Genetic Algorithm II (NSGA-II). This example highlights how the model can be used to balance key performance trade-offs, including user blocking probability, RLF probability, latency, and network data rate. The presented model can be utilized independently or integrated with a variety of optimization techniques according to the needs of service providers. These configurations may include the distribution intensity and biasing factor of BSs at each tier during the network establishment phase, as well as the optimal handover initiation parameters during network operation. Operators can use the model to guide network planning and tuning for improved stability, seamless connectivity, and enhanced user experience.
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spelling doaj-art-ded306fe48b14a979963a212664c81522025-08-20T02:48:16ZengIEEEIEEE Access2169-35362025-01-011312578212579510.1109/ACCESS.2025.358379111053849Modeling 5G-NR User Blocking Probability in Conditional Handover-Enabled Heterogeneous NetworksAmiraslan Haghrah0https://orcid.org/0000-0002-6573-4991Javad Musevi Niya1https://orcid.org/0000-0002-4330-005XJafar Pourrostam2https://orcid.org/0000-0001-7457-7169Department of Electrical and Computer Engineering, University of Tabriz, Tabriz, IranDepartment of Electrical and Computer Engineering, University of Tabriz, Tabriz, IranDepartment of Electrical and Computer Engineering, University of Tabriz, Tabriz, IranConditional Handover (CHO), introduced in the 16th edition of the 3GPP standard, serves as an alternative to Baseline Handover (BHO). CHO aims to mitigate radio link failures (RLFs) during handover preparation by incorporating a dedicated base station (BS) reservation phase. While BS reservation effectively reduces RLF rates, it concurrently occupies valuable radio resources, potentially leading to user blockages in congested scenarios. In this research, we develop a mathematical model to quantify user blocking probability by employing Markov models and connecting this probability to handover management parameters using stochastic geometry to characterize user mobility and BS coverage. This formulation establishes a probabilistic link between handover management parameters and user blocking occurrences. It further reveals that optimization solely focused on minimizing user blocking can paradoxically increase RLF rates, highlighting the need to consider trade-offs among performance metrics. To demonstrate the practical applicability of the proposed model, we present a case study involving a multi-objective optimization problem solved using the Non-Dominated Sorting Genetic Algorithm II (NSGA-II). This example highlights how the model can be used to balance key performance trade-offs, including user blocking probability, RLF probability, latency, and network data rate. The presented model can be utilized independently or integrated with a variety of optimization techniques according to the needs of service providers. These configurations may include the distribution intensity and biasing factor of BSs at each tier during the network establishment phase, as well as the optimal handover initiation parameters during network operation. Operators can use the model to guide network planning and tuning for improved stability, seamless connectivity, and enhanced user experience.https://ieeexplore.ieee.org/document/11053849/Conditional handoveruser blocking probability5G-NRMarkov modelstochastic geometrymulti-objective optimization
spellingShingle Amiraslan Haghrah
Javad Musevi Niya
Jafar Pourrostam
Modeling 5G-NR User Blocking Probability in Conditional Handover-Enabled Heterogeneous Networks
IEEE Access
Conditional handover
user blocking probability
5G-NR
Markov model
stochastic geometry
multi-objective optimization
title Modeling 5G-NR User Blocking Probability in Conditional Handover-Enabled Heterogeneous Networks
title_full Modeling 5G-NR User Blocking Probability in Conditional Handover-Enabled Heterogeneous Networks
title_fullStr Modeling 5G-NR User Blocking Probability in Conditional Handover-Enabled Heterogeneous Networks
title_full_unstemmed Modeling 5G-NR User Blocking Probability in Conditional Handover-Enabled Heterogeneous Networks
title_short Modeling 5G-NR User Blocking Probability in Conditional Handover-Enabled Heterogeneous Networks
title_sort modeling 5g nr user blocking probability in conditional handover enabled heterogeneous networks
topic Conditional handover
user blocking probability
5G-NR
Markov model
stochastic geometry
multi-objective optimization
url https://ieeexplore.ieee.org/document/11053849/
work_keys_str_mv AT amiraslanhaghrah modeling5gnruserblockingprobabilityinconditionalhandoverenabledheterogeneousnetworks
AT javadmuseviniya modeling5gnruserblockingprobabilityinconditionalhandoverenabledheterogeneousnetworks
AT jafarpourrostam modeling5gnruserblockingprobabilityinconditionalhandoverenabledheterogeneousnetworks