Aggregate Interference Prediction Based on Back-Propagation Neural Network

In dynamic spectrum access (DSA) scenarios, dense and complex deployment (e.g., in nonuniform or unknown radio propagation environment) of secondary systems (SSs) will make aggregate interference estimation highly complicated or challenging for reliable primary system (PS) protection. To tackle this problem, a back-propagation (BP) neural network based aggregate interference prediction method is proposed and evaluated via simulations. This paper also gives design guidelines of BP neural network appropriate for aggregate interference prediction via revealing the impact of several key factors on the prediction accuracy, such as the number of input parameters to the neural network, the coordinate system in use, and the number of hidden neurons.

[1]  Ying-Yi Hong,et al.  Locating Switched Capacitor Using Wavelet Transform and Hybrid Principal Component Analysis Network , 2007, IEEE Transactions on Power Delivery.

[2]  Laura Pierucci,et al.  A Neural Network for Quality of Experience Estimation in Mobile Communications , 2016, IEEE MultiMedia.

[3]  Simon Haykin,et al.  Cognitive radio: brain-empowered wireless communications , 2005, IEEE Journal on Selected Areas in Communications.

[4]  Jens Zander,et al.  Aggregate Interference in Secondary Access with Interference Protection , 2011, IEEE Communications Letters.

[5]  Hector Reyes,et al.  A Bayesian model of the aggregate interference power in cognitive radio networks , 2016, 2016 IEEE 7th Annual Ubiquitous Computing, Electronics & Mobile Communication Conference (UEMCON).

[6]  P. Venkateswaran,et al.  Artificial Neural Networks for Cognitive Radio: A Preliminary Survey , 2012, 2012 8th International Conference on Wireless Communications, Networking and Mobile Computing.

[7]  Luis F. Pedraza,et al.  A Model to Determine the Propagation Losses Based on the Integration of Hata-Okumura and Wavelet Neural Models , 2017 .

[8]  Cheng-Xiang Wang,et al.  Aggregate Interference Modeling in Cognitive Radio Networks with Power and Contention Control , 2012, IEEE Transactions on Communications.

[9]  Gang Wu,et al.  Wireless Channel Identification Algorithm Based on Feature Extraction and BP Neural Network , 2017, J. Inf. Process. Syst..

[10]  Anirudh Ranga To evaluate aggregate interference for underlay cognitive radio network , 2015, 2015 International Conference on Communications and Signal Processing (ICCSP).