A Context-Aware User-Driven Framework for Network Selection in 5G Multi-RAT Environments

To improve the inter-working of future 5G systems with existing technologies, this paper proposes a novel context-aware user-driven framework for network selection in multi-RAT environments. It relies on fuzzy logic to cope with the lack of information usually associated with the terminal side and the intrinsic randomness of the radio environment. In particular, a fuzzy logic controller first estimates the out-of-context suitability of each RAT to support the QoS requirements of a set of heterogeneous applications. Then, a fuzzy multiple attribute decision making (MADM) methodology is developed to combine these estimates with the various components of the context (e.g., terminal capabilities, user preferences and operator policies) to derive the in-context suitability level of each RAT. Based on this novel metric, two spectrum selection (SS) and spectrum mobility (SM) functionalities are developed to select the best RAT in a given context. The proposed fuzzy MADM approach is validated in a dense small-cell environment to perform a context-aware offloading for a mixture of delay-sensitive and best-effort applications. The results reveal that the fuzzy logic component is able to efficiently track changes in the operating conditions of the different RATs, while the MADM component enables to implement an adjustable context-aware strategy. The proposed fuzzy MADM approach results in a significant improvement in achieving the target strategy, while maintaining an acceptable QoS level compared to a traditional offloading based on signal strength.

[1]  Sami Tabbane,et al.  A fuzzy logic algorithm for RATs selection procedures , 2014, The 2014 International Symposium on Networks, Computers and Communications.

[2]  Gerhard P. Fettweis,et al.  The Tactile Internet: Applications and Challenges , 2014, IEEE Vehicular Technology Magazine.

[3]  Jeffrey G. Andrews,et al.  What Will 5G Be? , 2014, IEEE Journal on Selected Areas in Communications.

[4]  Ching-Lai Hwang,et al.  Methods for Multiple Attribute Decision Making , 1981 .

[5]  Giuseppe Ruggeri,et al.  A sun energy harvester model for the network simulator 3 (ns-3) , 2015, 2015 12th Annual IEEE International Conference on Sensing, Communication, and Networking - Workshops (SECON Workshops).

[6]  Oriol Sallent,et al.  A novel joint radio resource management approach with reinforcement learning mechanisms , 2005, PCCC 2005. 24th IEEE International Performance, Computing, and Communications Conference, 2005..

[7]  Nancy Alonistioti,et al.  An efficient RAT selection mechanism for 5G cellular networks , 2014, 2014 International Wireless Communications and Mobile Computing Conference (IWCMC).

[8]  Rui L. Aguiar,et al.  An IP-based QoS architecture for 4G operator scenarios , 2003, IEEE Wirel. Commun..

[9]  Robert LIN,et al.  NOTE ON FUZZY SETS , 2014 .

[10]  Laurence Tianruo Yang,et al.  Fuzzy Logic with Engineering Applications , 1999 .

[11]  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.

[12]  Bin Ma,et al.  Vertical Handoff Algorithm Based on Type-2 Fuzzy Logic in Heterogeneous Networks , 2013, J. Softw..

[13]  Oriol Sallent,et al.  Radio Access Congestion in Multiaccess/Multiservice Wireless Networks , 2009, IEEE Transactions on Vehicular Technology.

[14]  Timothy J. Ross,et al.  Fuzzy Logic with Engineering Applications: Ross/Fuzzy Logic with Engineering Applications , 2010 .

[15]  Wenhui Zhang,et al.  Handover decision using fuzzy MADM in heterogeneous networks , 2004, 2004 IEEE Wireless Communications and Networking Conference (IEEE Cat. No.04TH8733).

[16]  Oriol Sallent,et al.  A fuzzy-neural based approach for joint radio resource management in a beyond 3G framework , 2004, First International Conference on Quality of Service in Heterogeneous Wired/Wireless Networks.