Submitted:
16 June 2026
Posted:
18 June 2026
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Abstract
Keywords:
1. Introduction
- Summarizing Related Surveys on Mobility Load Management in 5G Networks: We provide a detailed overview of existing surveys and studies on mobility load management, consolidating key insights and identifying gaps in the current literature.
- Comprehensive Discussion on Mobility Load Management: We delve into the principles, frameworks, mechanisms, and strategies of mobility load management in 5G networks, emphasizing its role in optimizing resource utilization and ensuring seamless connectivity during user mobility.
- Exploration of AI/ML Optimization Techniques in Mobility Management: We discuss various AI and ML techniques that have been proposed to enhance mobility management, including predictive analytics, reinforcement learning, and DL, highlighting their applications in improving HO decisions and load balancing.
- Identification of Key Challenges and Future Directions: We highlight the major challenges in implementing mobility management, such as signaling overhead, latency trade-offs, and complexity in ultra-dense networks. Additionally, we outline future research directions, including the development of hybrid metrics, energy-efficient load balancing, and advanced AI-driven optimization frameworks.
2. Related Work
3. Background
3.1. Handover Optimization Functions
3.2. Mobility Robustness Optimization
3.3. Load Balancing Optimization
- Static Load Balancing: This method distributes network traffic based on pre-configured settings, considering factors like base station capacity and geographic location. While simple to implement, it lacks flexibility in dynamic network conditions. In environments with fluctuating traffic, static load balancing may lead to inefficiencies.
- Dynamic Load Balancing: This technique continuously monitors network load and adjusts the distribution of UE accordingly. While more responsive to changing conditions, it requires complex algorithms and can introduce additional overhead. Given the highly dynamic nature of 5G and 6G networks, especially in high-mobility scenarios, ML can play a key role in optimizing dynamic load balancing.
- Adaptive Load Balancing: Combining elements of both static and dynamic approaches, adaptive load balancing follows predefined rules while adjusting to real-time network conditions. This hybrid method offers a balance between simplicity and adaptability, making it a promising solution for HO management in 5G and 6G networks.
3.4. Handover Control Parameters and Events
3.4.1. Handover control parameters
- TTT ensures that an HO is only triggered after a sustained deterioration in signal quality, which helps to avoid unnecessary HOs.
- HOM, on the other hand, ensures that the HO only occurs when the target cell has a significantly better signal than the current cell, preventing premature or suboptimal HOs.
3.4.2. Handover Control Events
-
Core Intra-RAT Mobility Events Various event types (A1-A5) for triggering measurement reports were considered in accordance with 3GPP 36.331 [37]. Figure 5 illustrates possible conditions triggering each of the events A1-A5. Typically, UE conducts radio measurements through two distinct phases: the idle state and the connected state. In the idle state, these measurements serve to support cell selection and re-selection. In connected state mode, the measurement uses HO and redirection mobility scenarios and makes an HOD, which A1 does to A5, depending on the predefined threshold. These events are essential in maintaining optimal connectivity and ensuring a smooth HO among serving gNBs of the 5G system as mobile users move within the network:Case 1: When a serving cell becomes better than threshold (A1) and a serving cell’s quality deteriorates below threshold (A2).In A1, the network continuously monitors the signal strength and quality of both the serving and target cells. When the serving cell’s signal quality exceeds the threshold, it indicates that the current connection is stable and satisfactory, and no HO is required. However, A2 indicates that the current connection is degrading, possibly due to increased interference or a greater distance from the cell tower. As a result, the network begins evaluating target cells to determine whether a better option exists for maintaining connection quality.Case 2: When a target cell becomes better than a serving cell (A3), and a target cell’s quality becomes better than a threshold (A4).A3 indicates that a target cell can provide a stronger and more reliable signal to the mobile device. The network then initiates preparations for a potential HO to ensure a seamless transition without compromising connectivity. However, A4 occurs when the mobile device moves further away from the serving cell or experiences increased interference. The network intensifies its assessment of target cells to identify the best alternative for maintaining a stable connection.Case 3: Serving becomes worse than threshold 1, and a target becomes better than threshold 2 (A5).Event A5 is a combination of Event A2 and Event A4. Event A5 provides an HO triggering mechanism based on the measurement report. It can be used to trigger a time-critical HO when a serving cell becomes weak and it is necessary to change towards the target cell, even if that change does not satisfy the criteria for an event A3 HO. It is important to note that the specific implementation and usage of these HO events can vary depending on the network operator, deployment scenario, and network configuration. The A1 to A5 HO events provide flexibility and adaptability to optimize HODs based on various network conditions and requirements in 5G networks. Table 2 summarizes the parameters and their ranges used in different events [38].
-
Advanced Mobility Refinement EventsEvent A6 (Intra-frequency/Inter-frequency neighbour becomes better than serving with an offset) is an intra-RAT mobility reporting event used when a neighbour LTE cell becomes better than the serving cell by a configured offset. It enables fine-grained HO refinement and optimization without degrading the serving cell. It is mainly applied in dense deployments (macro–pico/small cell) to improve HO positioning and reduce ping-pong effects.
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Inter-RAT Mobility EventsEvent B1 (Inter-RAT threshold-based reporting: Neighbour RAT meets threshold) is an inter-RAT reporting event triggered when a neighbour cell belonging to another RAT (e.g., NR, WCDMA, GSM) exceeds a defined threshold. It does not require the serving cell to degrade and enables early offloading or proactive transitions between RATs for capacity, performance, or energy efficiency.Event B2 (Inter-RAT reporting: Serving becomes worse and neighbour becomes better) is an inter-RAT dual-condition event in which the serving cell must fall below a threshold while the target RAT cell exceeds its threshold. It is more conservative than B1 and is typically used to ensure robust fallback or HO transitions under poor serving conditions (e.g., coverage edge or degradation scenarios).
3.5. HO Decision Approaches
3.6. HO Performance Metrics
3.6.1. HO Interruption Time (HIT)
3.6.2. HOF Rate (HFR)
3.6.3. Radio Link Failure (RLF) Rate
3.6.4. HO Ping-Pong (HOPP)
3.6.5. Service Continuity
3.6.6. Throughput Degradation During HO
3.6.7. Latency
3.6.8. Packet Loss Rate (PLR)
4. Proactive Framework for Mobility Management
| Ref. | Framework / Scheme | Key Techniques & Objectives | Key Contributions / Findings |
|---|---|---|---|
| [40] | Proactive HO Mechanism for 6G | AI/ML-based time-series forecasting. Predict optimal HO timing and target cells; reduce HOF & ping-pong. | UE-side prediction model significantly improves mobility robustness and throughput; shifts from reactive to predictive HO. |
| [41] | A-MMUF | Mobility Prediction Models (MPMs), ML-based prediction. Enable proactive HO, reduce signaling. | Demonstrates improved HO, load balancing, and energy savings; highlights agility–accuracy tradeoff. |
| [42] | Predictive Analytics + Dynamic Routing | SP-LSTM for forecasting, Reinforcement Learning for adaptive routing. Improve performance. | Predicts congestion events and refines routing proactively; aligns with 6G needs. |
| [43] | TORIS | AI-based prediction model, Chow–Liu Bayesian Networks, GAN-based augmentation. | Novel feature-engineering improves prediction accuracy; significantly enhances HO success rate. |
| [44] | AI-Based Mobility for HSR | Compressive sensing, AI-based HO prediction. Reduce RLF in high-speed railway scenarios. | Two AI model deployment strategies (UE-side vs network-side); improves spatial temporal beam prediction. |
| [44] | AI-Driven O-RAN for Vehicular | GNB, KNN, NN-based prediction. Predict vehicle communication time; enable proactive HO. | ML-based prediction outperforms traditional signal-based HO triggers; adapts to vehicular mobility. |
| [46] | SHS (Smart HO Strategy) | SINR-based evaluation, fine-tuning HM & TTT. Address HO challenges in mmWave mobility. | Achieves seamless mobility in dual connectivity; captures fading & Doppler effects. |
| [47] | Virtual-Cell via LSTM-DR | LSTM + Dead Reckoning, SDN controller. Predict trajectory and reduce signaling. | Forms virtual cells using gNB selection; lowers overhead in vehicular mobility. |
| [48] | PDM | Prediction-driven HO decision. Improve cell-selection accuracy under varying mobility. | Considers key HCP impacts (RLF, ping-pong, HO delay) to improve mobility KPIs. |
| [49] | AEPHORA Framework | AI/ML-driven vehicular mobility prediction. Joint proactive HO and resource optimization. | Reduces power consumption while meeting delay and reliability QoS in dense V2X. |
| [50] | Dual-Connectivity Predictive MM | Predictive resource reservation, adaptive connectivity. Enhance throughput and fairness. | Differentiates cell-center vs. edge users; reduces HO frequency and computational complexity. |
5. Impactful Innovations in Mobility Load Management
5.1. ML/DL Handover Management
5.2. Make HOs Proactive and Faster
5.3. Spread Load with Multi-Connectivity Instead of Hard Moves
5.4. 5G-NTN Integrated Mobility Management
5.5. 5G-WIFI Integrated Mobility Management
6. Challenges and Future Directions
6.1. Challenges
6.1.1. Privacy and Security Risks
6.1.2. Energy and Resource Constraints
6.1.3. Data Accessibility and Standardization
6.1.4. Deployment Models
6.1.5. Latency and Processing Delays
6.2. Future Directions
6.2.1. Data-Driven Mobility Management
6.2.2. Integration with Emerging Technologies
6.2.3. Digital Twins
7. Conclusions
Author Contributions
Funding
Abbreviations
| Abbreviation | Description |
| 3GPP | 3rd Generation Partnership Project |
| 5G | Fifth Generation |
| 6G | Sixth Generation |
| AI | Artificial Intelligence |
| BS | Base Station |
| CA | Carrier Aggregation |
| CHO | Conditional Handover |
| DC | Dual Connectivity |
| DL | Deep Learning |
| DRL | Deep Reinforcement Learning |
| eMBB | Enhanced Mobile Broadband |
| eNB | Evolved Node B (4G Base Station) |
| gNB | Next Generation Node B (5G Base Station) |
| HCP | Handover Control Parameters |
| HFR | Handover Failure Rate |
| HIT | Handover Interruption Time |
| HO | Handover |
| HOF | Handover Failure |
| HOM | Handover Margin |
| HOPP | Handover Ping-Pong |
| HSR | High-Speed Railway |
| ITS | Intelligent Transportation Systems |
| KPI | Key Performance Indicator |
| LBO | Load Balancing Optimization |
| LEO | Low Earth Orbit |
| LTE | Long Term Evolution |
| MC | Multi-Connectivity |
| MCG | Master Cell Group |
| MEC | Multi-Access Edge Computing |
| MIH | Media-Independent Handover |
| ML | Machine Learning |
| mMTC | Massive Machine-Type Communications |
| MPM | Mobility Prediction Model |
| MRO | Mobility Robustness Optimization |
| MR-DC | Multi-Radio Dual Connectivity |
| NR | New Radio |
| NTN | Non-Terrestrial Networks |
| O-RAN | Open Radio Access Network |
| PLR | Packet Loss Rate |
| QoE | Quality of Experience |
| QoS | Quality of Service |
| RAT | Radio Access Technology |
| RF | Radio Frequency |
| RL | Reinforcement Learning |
| RLF | Radio Link Failure |
| RRM | Radio Resource Management |
| RSRP | Reference Signal Received Power |
| RSRQ | Reference Signal Received Quality |
| RSS | Received Signal Strength |
| SC | Service Continuity |
| SCG | Secondary Cell Group |
| SDN | Software-Defined Networking |
| SINR | Signal-to-Interference-plus-Noise Ratio |
| SON | Self-Organizing Network |
| TN | Terrestrial Networks |
| TORIS | Transmit Power Tuning-based Handover Success Rate Improvement Scheme |
| TTT | Time To Trigger |
| UAV | Unmanned Aerial Vehicle |
| UDN | Ultra-Dense Network |
| UE | User Equipment |
| URLLC | Ultra-Reliable Low-Latency Communications |
| V2X | Vehicle-to-Everything |
| VoNR | Voice over New Radio |
| Wi-Fi | Wireless Fidelity |
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| Study Reference | Focus Area | Key Suggested Factors | Challenges Identified | Proposed Solutions | Future Directions |
|---|---|---|---|---|---|
| Shayea et al., 2020 [9] | Mobility in 5G | Dual connectivity, carrier aggregation, network diversity | Complex optimization, dense networks | Advanced HO methods | Addressing challenges of dense mobility |
| Gures et al., 2022 [11] | Load balancing in HetNets | Load balancing techniques, coverage, mobility robustness | Implementation challenges in dense networks | ML-driven load balancing solutions | Future operational aspects of load balancing |
| Tashan et al., 2022 [12] | MRO | Deployment scenarios, methodologies, criteria, HCPs, KPIs | Enhancing MRO functions | AI-driven MRO techniques | High-mobility-aware network topologies |
| Gures et al., 2020 [18] | 5G HetNets mobility | Radio resource control, initial access, paging, beam management | QoS degradation, UE registration delays | Efficient mobility management strategies | Development of advanced mobility management |
| Alraih et al., 2023 [19] | Beyond 5G HO optimization | HO in legacy systems, specific optimization challenges | Inefficient optimization under complex conditions | Advanced technological solutions | Enhancing B5G network performance |
| Rehman et al., 2023 [20] | HO algorithms | Decision techniques, input parameters | High mobility in HetNets | Advanced HO decision algorithms | Scalability and performance improvements |
| Ullah et al., 2023 [21] | HO in 5G HetNets | KPIs, applied standards, energy efficiency | Scalability and reliability in dense networks | Evaluated HO and mobility models | Scalability and reliability improvements |
| Haghrah et al., 2023 [22] | HO in 5G NR | QoS, QoE, resource allocation | Authentication attacks, suboptimal HO decisions | Analysis of advanced methods | Novel techniques for HO efficiency |
| Khan et al., 2022 [23] | Ultra-dense HetNets | Dual connectivity, seamless mobility | Challenges in dense mobility | Advanced HO methods | Solutions for future dense HetNets |
| Kosmopoulos et al., 2022 [24] | Vehicular networks | MIH and FPMIPv6 for predictive/reactive HO | Maintaining seamless connectivity | Enhanced FPMIPv6 protocol | Intelligent network-aware HO methods |
| Mahamod et al., 2023 [25] | HO in 6G networks | High mobility, UDNs, mmWaves | Lack of adaptable MRO methods | AI-integrated MRO for self-optimization | Enhanced HO decision-making |
| Thillaigovindhan et al., 2024 [26] | Intelligent HO strategies | ML applications for HO optimization | Lack of data-driven models | ML methods and data evaluation | Future research in ML-aided mobility |
| Tanveer et al., 2022 [27] | 5G ultra-dense small cells | Reinforcement learning for HO | Challenges in UDSC networks | RL-based HO strategies | Enhancing UDSC mobility management |
| Mollel et al., 2021 [28] | HO and ML taxonomy | Visual data, network data for ML | Limited data diversity | ML-based HO management | Broadening ML data utilization |
| Shayea et al., 2022 [29] | Drone mobility management | ML and DL for drone HOs | Unpredictable mobility patterns | Intelligent ML-driven HO | Improved drone network connectivity |
| Alkaabi et al., 2024 [30] | MEC HO strategies | ETSI-MEC reference architecture, mobility techniques | State relocation, MEC node resource allocation | Improved MEC HO algorithms | Addressing gaps in MEC HO processes |
| Event | Parameter | Range | Value |
|---|---|---|---|
| A1, A2, A4, A5, B1 | RSRP threshold | 0–127 | –156 dBm to –31 dBm |
| RSRQ threshold | 0–127 | –40 dB to +20 dB | |
| SINR threshold | 0–127 | –23 dB to +40 dB | |
| All | Hysteresis | 0–30 | 0 dB to 15 dB |
| A3, A6 | Offset | –30 to +30 | –15 dB to +15 dB |
| A3, A4, A5, A6, B1, B2 | Cell-specific offset | — | –24 dB to +24 dB |
| B1, B2 | LTE RSRP | 0–97 | –140 dBm to –44 dBm |
| LTE RSRQ | 0–34 | –19.5 dB to –3 dB | |
| LTE SINR | –23 to +40 | –23 dB to +40 dB |
| Approaches | Description | Advantages | Challenges |
|---|---|---|---|
| RSS-based | Uses received signal strength as primary metric | Simple to implement, widely used | Ping-pong effect in fluctuating environments |
| Speed-based | Considers velocity of mobile node | Reduces unnecessary HOs for fast users | Requires accurate speed estimation |
| Interference-aware | Evaluates network interference levels | Enhances QoS via less interfered links | Real-time measurement complexity |
| Energy-efficient | Minimizes power consumption during HO | Prolongs battery life of devices | May compromise QoS performance |
| Cost-function-based | Mathematical optimization based on multi-params | Balanced trade-off between factors | Complex optimal function definition |
| Learning-based | Uses ML to predict/optimize decisions | Adapts to dynamic environments | Requires training data and resources |
| Location-based | Utilizes geographic location | Useful for planned mobility scenarios | Needs accurate, available tracking |
| Fuzzy logic-based | Uses logic for imprecise information | Handles uncertainty; human-like logic | Computationally intensive; rule definition |
| Policy-based | Applies predefined rules or policies | Ensures consistency and adherence | Lacks adaptability in dynamic settings |
| Multiple criteria-based | Considers RSS, latency, QoS, energy | Comprehensive and optimal strategy | Increases computational complexity |
| Context-aware-based | Adapts to preferences and conditions | Tailors decisions to user context | Requires continuous data processing |
| Aspect | Description in NTNs | Challenges | Common Approaches | Mobility Benefit |
|---|---|---|---|---|
| Satellite Mobility | LEO satellites move at very high speed, creating shifting coverage footprints. | Very frequent HOs; short visibility windows. | Ephemeris-based prediction, coverage-time estimation. | Fewer missed HOs and reduced service interruption. |
| Beam Management | Satellite beams dynamically move, hop, or reshape. | Sudden beam loss; unstable HO triggers. | Beam prediction, adaptive beam steering, footprint tracking. | More stable beam–UE association. |
| Signaling Load | Many UEs may need HO at the same time when a satellite passes. | Signaling storms; RRC overload. | Signaling-load-aware CHO, distributed HO preparation. | Smoother HO distribution; fewer failures. |
| Predictive Mobility | Predicting future UE–satellite association. | Rapid geometry changes; high prediction complexity. | AI/ML (LSTM, CNN, RL, hybrid models). | Proactive HO, improved HO stability. |
| Service-Aware Mobility | NTN supports eMBB, mMTC, URLLC. | High HO frequency degrades eMBB QoE. | Traffic-aware HO policies; prioritization. | Consistent QoE across services. |
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