Location via proxy:   [ UP ]  
[Report a bug]   [Manage cookies]                
skip to main content
research-article

NOMA based mobility-aware load balancing in 5G ultra dense network

Published: 21 November 2024 Publication History

Abstract

The concept of Ultra Dense Networks (UDNs) stands out as one of the most promising approaches to meet the escalating capacity requirements and elevate user experience. When it comes to fulfilling the exceptionally high capacity density needs of 5G networks, UDN proves to be one of the most effective solutions. For 5G of cellular networks, non-orthogonal multiple access (NOMA) techniques have drawn a lot of attention lately. The main justification for implementing NOMA in 5G is its capacity to accommodate numerous users concurrently while utilizing the same frequency and time resources. In this environment, handover (HO) management is a real challenge given the high network density, small coverage areas, increased user mobility and increasingly stringent QoS requirements. To address these issues, we conduct a study that combines between load balancing and HO decision-making algorithms. The object of our research project is the design of a new HO management solution for 5G ultra-dense networks (UDNs) based on the NOMA technique. A load-balancing and multi-attribute decision-making algorithm are developed to balance the load between cells, minimize the numbers of HOs and choose the best HO condition and the best target cell to maintain satisfactory quality of service. The NOMA technique was employed to orchestrate the channels designated for the backhaul links and the Macro Base Station (MBS) link to the Mobile User Equipments (MUEs) within the MBS User Equipment (UE) set. The devised Handover (HO) decision-making algorithm operates on an event-triggered basis, specifically for HO operations between cellular networks. The conducted simulations demonstrate the resilience of the proposed approach, as evidenced by its low HO failure rate, minimal HO delay, and reduced end-to-end packet delay for traffic.

References

[1]
Lin X An overview of 5G advanced evolution in 3GPP release 18 IEEE Communications Standards Magazine 2022 6 3 77-83
[2]
Kibinda NM and Ge X User-centric cooperative transmissions-enabled handover for ultra-dense networks IEEE Transactions on Vehicular Technology 2022 71 4 4184-4197
[3]
Small Cell Networks Market Size to Grow on the Basis Of Refined Innovation from 2023–2033. (n.d.). Retrieved January 31, 2023, from https://www.marketwatch.com/press-release/SmallCell Networks Market Size To Grow On The Basis Of Refined Innovation From 2023–2033
[4]
3GPP TR 38.812. (2017). Study on Non-Orthogonal Multiple Access (NOMA) for NR.
[5]
Addali, K., Liu, R., Chang, Z., & Kadoch, M. (2020). Mobility Load Balancing with Handover Minimization for 5G Small Cell Networks. In Proceedings of the International Conference on Wireless Communications and Mobile Computing (IWCMC) (pp. 1–6). Limassol, Cyprus.
[6]
Sun K, Yu J, Huang W, Zhang H, and Leung VCM A multi-attribute handover algorithm for QoS enhancement in ultra dense network IEEE Transactions on Vehicular Technology 2021 70 5 4557-4568
[7]
Wang, X., Zhang, H., Liu, Y., Yang, H., & Tian, Y. (2020). Performance analysis of NOMA enabled user and control plane split architecture in 5G Systems. In Proceedings of the International Conference on Communications Workshops (ICC Workshops) (pp. 1–6). Dublin, Ireland.
[8]
Muhammed AJ, Ma Z, Zhang Z, Fan P, and Larsson EG Energy-efficient resource allocation for NOMA based small cell networks with wireless backhauls IEEE Transactions on Communications 2020 68 6 3766-3781
[9]
Kosmopoulos, I., Skondras, E., Michalas, A., & Vergados, D. D. (2020). An efficient mobility management scheme for 5G network architectures. In Proceedings of the International Conference South-East Europe Design Automation, Computer Engineering, Computer Networks and Social Media (SEEDA-CECNSM) (pp. 1–6). Corfu, Greece.
[10]
Goutam, S., Unnikrishnan, S., & Kudu, N. (2020). Decision for vertical handover using k-means clustering algorithm. In Proceedings of the International Conference Bombay Section Signature (IBSSC) (pp. 1–5). Mumbai, India.
[11]
Ghafoor U, Khan HZ, Siddiqui AM, Ali M, Rauf A, Wahla A, and Naeem M Cluster based resource management using H-NOMA in heterogeneous networks beyond 5G Ad Hoc Networks 2023 149 103252
[12]
Agila R, Estrada R, and Rohoden K Mode selection and resource allocation for SWIPT NOMA based three-tier HetNets Procedia Computer Science 2023 224 34-43
[13]
Liu G, Ding X, Li P, Zhang L, Hu C, and Xie W Novel radio resource allocation scheme in 5G and future sharing network via multi-dimensional Collaboration Electronics 2023 12 4209
[14]
Dong S, Zhan J, Hu W, Mohajer A, Bavaghar M, and Mirzaei A Energy-efficient hierarchical resource allocation in uplink-downlink decoupled NOMA HetNets IEEE Transactions on Network and Service Management 2023 20 3 3380-3395
[15]
Nabipour M and Momen AR A novel approach to energy-aware resource management: Toward green NOMA heterogeneous networks Intelligent Data Analysis 2022 26 5 1379-1402
[16]
Mohajer A, Daliri MS, Mirzaei A, Ziaeddini A, Nabipour M, and Bavaghar M Heterogeneous computational resource allocation for NOMA: Toward green mobile edge-computing systems IEEE Transactions on Services Computing 2022 16 2 1225-1238
[17]
Kumar, V., Singh, A., & Zhao, H. (2023). Optimizing NOMA-based handover and load balancing for 5G ultra-dense networks: A hybrid approach. Computer Networks, 222.
[18]
Lee J, Park S, and Rodriguez E Recent advances in NOMA-based load balancing for ultra-dense 5G networks: A survey IEEE Communications Surveys & Tutorials 2024 26 2 932-951
[19]
Chang H, Kim J, and Kumar A AI-driven NOMA load balancing and mobility management in dense urban environments IEEE Transactions on Intelligent Transportation Systems 2024 25 3 1524-1536
[20]
Liu J, Zhao Y, and Huang W NOMA-based resource allocation and load balancing in 5G ultra-dense networks: New insights IEEE Transactions on Communications 2024 72 4 2143-2155
[21]
Patel N, Gupta R, and Chen S Enhanced NOMA techniques for load balancing and mobility in urban ultra-dense networks IEEE Journal on Selected Areas in Communications 2024 42 5 835-847
[22]
Khan MJ, Chauhan RCS, Singh I, Fatima Z, and Singh G Mobility Management in Heterogeneous Network of Vehicular Communication with 5G: Current Status and Future Perspectives IEEE Access 2024 12 86270
[23]
Thakur and Singh G Spectrum sharing in cognitive radio networks: Towards highly connected environments 2021 Wiley
[24]
Silva KDC, Becvar Z, and Frances CRL Adaptive hysteresis margin based on fuzzy logic for handover in mobile networks with dense small cells IEEE Access 2018 6 17178-17189
[25]
Shahid SM, Seyoum YT, Won SH, and Kwon S Load balancing for 5G integrated satellite-terrestrial networks IEEE Access 2020 8 132144-132156
[26]
Müller M, Ademaj F, Dittrich T, et al. Flexible multi-node simulation of cellular mobile communications: The Vienna 5G System Level Simulator Journal on Wireless Communications and Networking 2018 227 1-17

Index Terms

  1. NOMA based mobility-aware load balancing in 5G ultra dense network
            Index terms have been assigned to the content through auto-classification.

            Recommendations

            Comments

            Information & Contributors

            Information

            Published In

            cover image Telecommunications Systems
            Telecommunications Systems  Volume 87, Issue 4
            Dec 2024
            349 pages

            Publisher

            Kluwer Academic Publishers

            United States

            Publication History

            Published: 21 November 2024
            Accepted: 23 September 2024

            Author Tags

            1. 5G
            2. UDN
            3. NOMA
            4. Handover
            5. Load balancing

            Author Tags

            1. Technology
            2. Communications Technologies
            3. Information and Computing Sciences
            4. Information Systems

            Qualifiers

            • Research-article

            Contributors

            Other Metrics

            Bibliometrics & Citations

            Bibliometrics

            Article Metrics

            • 0
              Total Citations
            • 0
              Total Downloads
            • Downloads (Last 12 months)0
            • Downloads (Last 6 weeks)0
            Reflects downloads up to 16 Feb 2025

            Other Metrics

            Citations

            View Options

            View options

            Figures

            Tables

            Media

            Share

            Share

            Share this Publication link

            Share on social media