Bio-inspired multi-user beamforming for QoE provisioning in cognitive radio networks

In cognitive radio network (CRN), secondary users (SU) can share the licensed spectrum with the primary users (PU). Compared with the traditional network, spectrum utilization in CRN will be greatly improved. Meanwhile, in addition to considering the objective QoS metrics during the assessment of network performance, many subjective factors should not be ignored, such as service satisfaction and user experience. So the quality of experience (QoE) can reflect the performance of network more comprehensive than QoS. In this paper, we studied a multi-user beamforming problem in CRN and designed a QoE provisioning model based on a specific QoS-QoE mapping scheme with a comprehensive consideration of techniques in physical layer and the key indicator of performance assessment. The bio-inspired algorithm was utilized to solve the beamforming optimization problem. The simulation results showed that better service satisfaction and higher energy efficiency were gained with the objective of QoE than traditional QoS indicators.

[1]  Inkyu Lee,et al.  Distributed Beamforming Techniques for Weighted Sum-Rate Maximization in MISO Interference Channels , 2010, IEEE Communications Letters.

[2]  Mery Nataly,et al.  Seventh International Conference on Urban Health , 2009, Journal of Urban Health.

[3]  Markus Fiedler,et al.  A generic quantitative relationship between quality of experience and quality of service , 2010, IEEE Network.

[4]  Joseph Mitola,et al.  Cognitive radio: making software radios more personal , 1999, IEEE Wirel. Commun..

[5]  Erik G. Larsson,et al.  Complete Characterization of the Pareto Boundary for the MISO Interference Channel , 2008, IEEE Transactions on Signal Processing.

[6]  Farbod Razzazi,et al.  Minimum power transmission design for cognitive radio networks in non-stationary environment , 2011, IEICE Electron. Express.

[7]  Shiwen Mao,et al.  Performance Evaluation of Cognitive Radios: Metrics, Utility Functions, and Methodology , 2009, Proceedings of the IEEE.

[8]  Lijun Qian,et al.  Power Control for Cognitive Radio Ad Hoc Networks , 2007, 2007 15th IEEE Workshop on Local & Metropolitan Area Networks.

[9]  James Kennedy,et al.  Particle swarm optimization , 2002, Proceedings of ICNN'95 - International Conference on Neural Networks.

[10]  Lili Xie,et al.  QoE-aware Power Allocation Algorithm in Multiuser OFDM Systems , 2011, 2011 Seventh International Conference on Mobile Ad-hoc and Sensor Networks.

[11]  Narges Noori,et al.  Cognitive beamforming using genetic algorithm , 2010, 2010 IEEE Antennas and Propagation Society International Symposium.

[12]  Farbod Razzazi,et al.  Bio-inspired distributed beamforming for cognitive radio networks in non-stationary environment , 2011, IEICE Electron. Express.