An Adaptive TTT Handover (ATH) Mechanism for Dual Connectivity (5G mmWave—LTE Advanced) during Unpredictable Wireless Channel Behavior

Fifth Generation (5G) signals using the millimeter wave (mmWave) spectrums are highly vulnerable to blockage due to rapid variations in channel link quality. This can cause the devices or User Equipment (UE) to suffer from connection failure. In a dual connectivity (DC) network, the channel’s intermittency issues were partially solved by maintaining the UE’s connectivity to primary (LTE advanced stations) and secondary (5G mmWave stations) simultaneously. Even though the dual-connected network performs excellently in maintaining connectivity, its performance drops significantly due to the inefficient handover from one 5G mmWave station to another. The situation worsens when UE travels a long distance in a highly dense obstacle environment, which requires multiple ineffective handovers that eventually lead to performance degradation. This research aimed to propose an Adaptive TTT Handover (ATH) mechanism that deals with unpredictable 5G mmWave wireless channel behaviors that are highly intermittent. An adaptive algorithm was developed to automatically adjust the handover control parameters, such as Time-to-Trigger (TTT), based on the current state of channel condition measured by the Signal-to-Interference-Noise Ratio (SINR). The developed algorithm was tested under a 5G mmWave statistical channel model to represent a time-varying channel matrix that includes fading and the Doppler effect. The performance of the proposed handover mechanism was analyzed and evaluated in terms of handover probability, latency, and throughput by using the Network Simulator 3 tool. The comparative simulation result shows that the proposed adaptive handover mechanism performs excellently compared to conventional handovers and other enhancement techniques.

[1]  Mandeep Jit Singh,et al.  A Review on Massive MIMO Antennas for 5G Communication Systems on Challenges and Limitations , 2023, Jurnal Kejuruteraan.

[2]  W. Hwang,et al.  Adaptive Handover Decision Using Fuzzy Logic for 5G Ultra-Dense Networks , 2022, Electronics.

[3]  R. Nordin,et al.  Robust Handover Optimization Technique with Fuzzy Logic Controller for Beyond 5G Mobile Networks , 2022, Sensors.

[4]  G. Kaddoum,et al.  Mobility Management in 5G and Beyond: A Novel Smart Handover With Adaptive Time-to-Trigger and Hysteresis Margin , 2022, IEEE Transactions on Mobile Computing.

[5]  A. S. Shahen Shah,et al.  A Survey From 1G to 5G Including the Advent of 6G: Architectures, Multiple Access Techniques, and Emerging Technologies , 2022, 2022 IEEE 12th Annual Computing and Communication Workshop and Conference (CCWC).

[6]  R. Nordin,et al.  Revolution or Evolution? Technical Requirements and Considerations towards 6G Mobile Communications , 2022, Sensors.

[7]  Arun K. Kumar,et al.  Enhancing Handover for 5G mmWave Mobile Networks Using Jump Markov Linear System and Deep Reinforcement Learning , 2022, Sensors.

[8]  R. Nordin,et al.  Ping-Pong Handover Effect Reduction in 5G and Beyond Networks , 2021, 2021 IEEE Microwave Theory and Techniques in Wireless Communications (MTTW).

[9]  Murtaza Cicioglu,et al.  Multi-criteria handover management using entropy‐based SAW method for SDN-based 5G small cells , 2021, Wireless Networks.

[10]  Carlos A. Gutierrez,et al.  5G and Beyond: Past, Present and Future of the Mobile Communications , 2021, IEEE Latin America Transactions.

[11]  Murtaza Cicioğlu,et al.  Performance analysis of handover management in 5G small cells , 2021, Comput. Stand. Interfaces.

[12]  A. L. Swindlehurst,et al.  A Comprehensive Overview on 5G-and-Beyond Networks With UAVs: From Communications to Sensing and Intelligence , 2020, IEEE Journal on Selected Areas in Communications.

[13]  Mário Marques da Silva,et al.  On the 5G and Beyond , 2020, Applied Sciences.

[14]  Fredrik Tufvesson,et al.  6G Wireless Systems: Vision, Requirements, Challenges, Insights, and Opportunities , 2020, Proceedings of the IEEE.

[15]  Chuan Heng Foh,et al.  Beam-centric Handover Decision in Dense 5G-mmWave Networks , 2020, 2020 IEEE 31st Annual International Symposium on Personal, Indoor and Mobile Radio Communications.

[16]  Marina Petrova,et al.  Learning-Based Handover in Mobile Millimeter-Wave Networks , 2020, IEEE Transactions on Cognitive Communications and Networking.

[17]  Jong-Moon Chung,et al.  Prediction-Based Conditional Handover for 5G mm-Wave Networks: A Deep-Learning Approach , 2020, IEEE Vehicular Technology Magazine.

[18]  Shakil Ahmed,et al.  6G Wireless Communication Systems: Applications, Requirements, Technologies, Challenges, and Research Directions , 2019, IEEE Open Journal of the Communications Society.

[19]  Mustafa Ergen,et al.  New Weight Function for Adapting Handover Margin Level over Contiguous Carrier Aggregation Deployment Scenarios in LTE-Advanced System , 2019, Wireless Personal Communications.

[20]  G P Spoorthi,et al.  Handover Mechanism in 5G mmwave Band , 2019, 2019 4th International Conference on Recent Trends on Electronics, Information, Communication & Technology (RTEICT).

[21]  Ángel G. Andrade,et al.  Handover based on a predictive approach of signal-to-interference-plus-noise ratio for heterogeneous cellular networks , 2019, IET Commun..

[22]  Ibraheem Shayea,et al.  Dynamic Handover Control Parameters for LTE-A/5G Mobile Communications , 2018, 2018 Advances in Wireless and Optical Communications (RTUWO).

[23]  A Suresh Kumar,et al.  Handover forecasting in 5G using machine learning , 2018, International Journal of Engineering & Technology.

[24]  Gurjot Singh Gaba,et al.  5G and Beyond , 2018, 2018 International Conference on Communication and Signal Processing (ICCSP).

[25]  Sundeep Rangan,et al.  End-to-End Simulation of 5G mmWave Networks , 2017, IEEE Communications Surveys & Tutorials.

[26]  Luc Martens,et al.  Performance Evaluation of 5G Millimeter-Wave Cellular Access Networks Using a Capacity-Based Network Deployment Tool , 2017, Mob. Inf. Syst..

[27]  Sundeep Rangan,et al.  Improved Handover Through Dual Connectivity in 5G mmWave Mobile Networks , 2016, IEEE Journal on Selected Areas in Communications.

[28]  Po-Chiang Lin,et al.  Data-Driven Handover Optimization in Next Generation Mobile Communication Networks , 2016, Mob. Inf. Syst..

[29]  M. Mezzavilla,et al.  Performance Comparison of Dual Connectivity and Hard Handover for LTE-5G Tight Integration , 2016, SimuTools.

[30]  Sundeep Rangan,et al.  Multi-connectivity in 5G mmWave cellular networks , 2016, 2016 Mediterranean Ad Hoc Networking Workshop (Med-Hoc-Net).

[31]  Sundeep Rangan,et al.  Comparative analysis of initial access techniques in 5G mmWave cellular networks , 2016, 2016 Annual Conference on Information Science and Systems (CISS).

[32]  Hargreaves Ja Revolution or evolution. , 1977, Ontario dentist.

[33]  Ibraheem Shayea,et al.  Auto Tuning Self-Optimization Algorithm for Mobility Management in LTE-A and 5G HetNets , 2020, IEEE Access.

[34]  Hoh Peter In,et al.  Adaptive Time-to-Trigger Scheme for Optimizing LTE Handover , 2014 .