Adaptive non-uniform sampling of sparse signals for Green Cognitive Radio

نویسندگان

  • Samba Traore
  • Babar Aziz
  • Daniel Le Guennec
  • Yves Louët
چکیده

Based on previous results on periodic non-uniform sampling (Multi-Coset) and using the well known Non-Uniform Fourier Transform through Bartlett's method for Power Spectral Density estimation, we propose a new smart sampling scheme named the Dynamic Single Branch Non-uniform Sampler. The idea of our scheme is to reduce the average sampling frequency, the number of samples collected, and consequently the power consumption of the Analog to Digital Converter. In addition to that our proposed method detects the location of the bands in order to adapt the sampling rate. In this paper, through we show simulation results that compared to classical uniform sampler or existing multicoset based samplers, our proposed sampler, in certain conditions, provides superior performance, in terms of sampling rate or energy consumption. It is not constrained by the in exibility of hardware circuitry and is easily recon gurable. We also show the e ect of the false detection of active bands on the average sampling rate of our new adaptive non-uniform sub-Nyquist sampler scheme.

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عنوان ژورنال:
  • Computers & Electrical Engineering

دوره 52  شماره 

صفحات  -

تاریخ انتشار 2016