A fuzzy-clustering based approach for MADM handover in 5G ultra-dense networks

As the global data traffic has significantly increased in the recent year, the ultra-dense deployment of cellular networks (UDN) is being proposed as one of the key technologies in the fifth-generation mobile communications system (5G) to provide a much higher density of radio resource. The densification of small base stations could introduce much higher inter-cell interference and lead user to meet the edge of coverage more frequently. As the current handover scheme was originally proposed for macro BS, it could cause serious handover issues in UDN i.e. ping-pong handover, handover failures and frequent handover. In order to address these handover challenges and provide a high quality of service (QoS) to the user in UDN. This paper proposed a novel handover scheme, which integrates both advantages of fuzzy logic and multiple attributes decision algorithms (MADM) to ensure handover process be triggered at the right time and connection be switched to the optimal neighbouring BS. To further enhance the performance of the proposed scheme, this paper also adopts the subtractive clustering technique by using historical data to define the optimal membership functions within the fuzzy system. Performance results show that the proposed handover scheme outperforms traditional approaches and can significantly minimise the number of handovers and the ping-pong handover while maintaining QoS at a relatively high level. © 2019, Springer Science+Business Media, LLC, part of Springer Nature.

[1]  Vincent Barriac,et al.  On Losses, Pauses, Jumps, and the Wideband E-Model , 2017, IEEE Access.

[2]  Abolfazl Mehbodniya,et al.  Fuzzy-Based Game Theoretic Mobility Management for Energy Efficient Operation in HetNets , 2017, IEEE Access.

[3]  Amutha Jeyakumar,et al.  Comparison between vertical handoff algorithms for heterogeneous wireless networks , 2016, 2016 International Conference on Communication and Signal Processing (ICCSP).

[4]  Huimin Lu,et al.  The Cognitive Internet of Vehicles for Autonomous Driving , 2019, IEEE Network.

[5]  Momoh Jimoh Eyiomika Salami,et al.  Development of hybrid artificial intelligent based handover decision algorithm , 2017 .

[6]  Abderrahim Sekkaki,et al.  An improved policy for network selection decision based on enhanced-topsis and utility function , 2017, 2017 13th International Wireless Communications and Mobile Computing Conference (IWCMC).

[7]  Teong Chee Chuah,et al.  An adaptive fuzzy handover triggering approach for Long-Term Evolution network , 2016, Expert Syst. J. Knowl. Eng..

[8]  Aduwati Sali,et al.  A novel cell-selection optimization handover for long-term evolution (LTE) macrocellusing fuzzy TOPSIS , 2016, Comput. Commun..

[9]  Suhaidi Hassan,et al.  Context-Aware Radio Access Technology Selection in 5G Ultra Dense Networks , 2017, IEEE Access.

[10]  Huimin Lu,et al.  CONet: A Cognitive Ocean Network , 2019, IEEE Wireless Communications.

[11]  Huimin Lu,et al.  PEA: Parallel electrocardiogram-based authentication for smart healthcare systems , 2018, J. Netw. Comput. Appl..

[12]  Huimin Lu,et al.  Brain Intelligence: Go beyond Artificial Intelligence , 2017, Mobile Networks and Applications.

[13]  Ching-Lai Hwang,et al.  Multiple Attribute Decision Making: Methods and Applications - A State-of-the-Art Survey , 1981, Lecture Notes in Economics and Mathematical Systems.

[14]  Augusto Neto,et al.  Performance evaluation of multiple attribute mobility decision models: A QoE-efficiency perspective , 2017, 2017 IEEE 13th International Conference on Wireless and Mobile Computing, Networking and Communications (WiMob).

[15]  Sakshi Kaushal,et al.  Handover optimization scheme for LTE-Advance networks based on AHP-TOPSIS and Q-learning , 2019, Comput. Commun..

[16]  Sorin Nadaban,et al.  Fuzzy TOPSIS: A General View , 2016 .

[17]  Dominique Gaïti,et al.  Enabling Vertical Handover Decisions in Heterogeneous Wireless Networks: A State-of-the-Art and A Classification , 2014, IEEE Communications Surveys & Tutorials.

[18]  Golam Kabir,et al.  COMPARATIVE ANALYSIS OF TOPSIS AND FUZZY TOPSIS FOR THE EVALUATION OF TRAVEL WEBSITE SERVICE QUALITY , 2012 .

[19]  Zdenek Becvar,et al.  Adaptive Hysteresis Margin Based on Fuzzy Logic for Handover in Mobile Networks With Dense Small Cells , 2018, IEEE Access.

[20]  Li Zhang,et al.  Multi-Criteria Handover Using Modified Weighted TOPSIS Methods for Heterogeneous Networks , 2018, IEEE Access.

[21]  Raquel Barco,et al.  Adaptive Cell Outage Compensation in Self-Organizing Networks , 2018, IEEE Transactions on Vehicular Technology.

[22]  Biao Zhang,et al.  A heterogeneous network selection algorithm based on network attribute and user preference , 2018, Ad Hoc Networks.

[23]  Ram Mohana Reddy Guddeti,et al.  Simplified and improved multiple attributes alternate ranking method for vertical handover decision in heterogeneous wireless networks , 2016, Comput. Commun..

[24]  Huimin Lu,et al.  Motor Anomaly Detection for Unmanned Aerial Vehicles Using Reinforcement Learning , 2018, IEEE Internet of Things Journal.