Quality of experience (QoE) of a secondary spectrum user is mainly governed by its spectrum utilization, the energy consumption in spectrum sensing and the impact of channel switching in a cognitive radio network. It can be enhanced by prediction of spectrum availability of different channels in the form of their idle times through historical information of primary users’ activity. Based on a reliable prediction scheme, the secondary user chooses the channel with the longest idle time for transmission of its data. In contrast to the existing method of statistical prediction, the use and applicability of supervised learning based prediction in various traffic scenarios have been studied in this paper. Prediction accuracy is investigated for three machine learning techniques, artificial neural network based Multilayer Perceptron (MLP), Support Vector Machines (SVM) with Linear Kernel and SVM with Gaussian Kernel, among which, the best one is chosen for prediction based opportunistic spectrum access. The results highlight the analysis of the learning techniques with respect to the traffic intensity. Moreover, a significant improvement in spectrum utilization of the secondary user with reduction in sensing energy and channel switching has been found in case of predictive dynamic channel allocation as compared to random channel selection.
[1]
Z. Hasan.
A Survey on Shari’Ah Governance Practices in Malaysia, GCC Countries and the UK
,
2011
.
[2]
Wei Cheng,et al.
Spectrum prediction in cognitive radio networks
,
2013,
IEEE Wireless Communications.
[3]
An He,et al.
A Survey of Artificial Intelligence for Cognitive Radios
,
2010,
IEEE Transactions on Vehicular Technology.
[4]
Geoffrey E. Hinton,et al.
Learning representations by back-propagating errors
,
1986,
Nature.
[5]
Yunfei Chen,et al.
Analysis of Spectrum Occupancy Using Machine Learning Algorithms
,
2015,
IEEE Transactions on Vehicular Technology.
[6]
Dusit Niyato,et al.
A Neural Network Based Spectrum Prediction Scheme for Cognitive Radio
,
2010,
2010 IEEE International Conference on Communications.
[7]
Sofie Pollin,et al.
Improving the performance of cognitive radios through classification, learning and predictive channel selection
,
2011
.
[8]
Hyung-Kun Park,et al.
Channel prediction-based channel allocation scheme for multichannel cognitive radio networks
,
2014,
Journal of Communications and Networks.