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Ingeniería Electrónica, Automática y Comunicaciones
On-line version ISSN 1815-5928
Abstract
GUTIERREZ HERNANDEZ, Mélany; TORRES GOMEZ, Jorge and PERDOMO HOURNE, Elias A.. Digital Spectrum Sensing Technique implemented on FPGA devices for Digital Television Applications. EAC [online]. 2018, vol.39, n.2, pp. 10-23. ISSN 1815-5928.
The rapid growth of wireless technology demands to employ the available spectrum efficiently. In this work, an Energy Detector is designed to be used in a Cognitive Radio scenario using a platform based on Software Defined Radio principles. The design of this detector is developed by using Simulink and Xilinx System Generator MATLAB software to be implemented on a Field Programmable Gate Array (FPGA) device. To sense the spectrum, the energy detector (ED) is the most used approach due to its low computational complexity. Furthermore, ED offers the ability to identify spectrum holes without prior knowledge regarding transmission characteristics of primary users. However, setting a threshold for energy detection requires to estimate noise power, which can be established by appropriate estimation methods. In this regard, a new method is proposed and implemented on FPGA to establish a threshold and detect properly the available spectrum. Results obtained reveal a proper performance of the proposed detector given by Pd>0.9 and Pfa=0.1, respectively, in the SNR range [-8, 15] dB. On the other hand, Digital Television in Cuba requires a robust and efficient automatic signal detection method to identify Television white spaces. Cognitive radio users would use these spectral holes to increase bandwidth and improve connectivity for wireless communications applications. To this end, this work is aimed to detect white spaces of the Digital Television spectrum using energy detector method. Simulation results show that the detector performs correctly on this scenario
Keywords : Spectrum Sensing; Cognitive Radio; Energy Detector; Noise Estimation; FPGA; Digital Television.