Compressive power spectral density estimation with non-uniform sampling

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Date
2013Author
Version
Acceso abierto / Sarbide irekia
Type
Proyecto Fin de Carrera / Ikasketen Amaierako Proiektua
Impact
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nodoi-noplumx
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Abstract
Wireless communications have experienced a fast growth over the last two decades, which is
still going on nowadays. This fact, together with the current static spectrum allocation, has
made spectral resources scarce and has left very few bandwidth to new applications. However, actual measurements of spectrum utilization show that many assigned bands are not
being used at every location and tim ...
[++]
Wireless communications have experienced a fast growth over the last two decades, which is
still going on nowadays. This fact, together with the current static spectrum allocation, has
made spectral resources scarce and has left very few bandwidth to new applications. However, actual measurements of spectrum utilization show that many assigned bands are not
being used at every location and time. A solution that allows secondary users to transmit
information using available spectrum is cognitive radio. A cognitive radio transceiver performs spectrum sensing, that is, it estimates the power spectral density of the received signal
and then reliably detects whether unused spectrum is available or not. The estimation has
to be done over a wide frequency range in order to increase the probability of finding available spectrum. With uniform sampling, the scheme considered in classical sampling theory,
estimation over a wide frequency band requires very high sampling rates, which for current
analog-to-digital conversion technology means a high power consumption.
In this thesis, we study several methods for estimation of the power spectral density.
They use non-uniform sampling schemes which allow reductions in the sampling rate, hence
the word "compressive". These methods are least squares with hard limiting, maximum likelihood and a correlogram approach. The first two strategies use compressive sampling, while
the last one employs random sampling. The performance of each method is studied by means
of computer simulations. Besides, we have attempted to find new sampling matrices that
guarantee the statistical identifiability of the power spectral density when compressive sampling is employed. [--]
Subject
Densidad espectral de potencia,
Muestreo no uniforme,
Compressive power spectral density,
Non-uniform sampling
Departament
Universidad Pública de Navarra. Departamento de Ingeniería Eléctrica y Electrónica /
Nafarroako Unibertsitate Publikoa. Ingeniaritza Elektrikoa eta Elektronikoa Saila
Degree
Ingeniería de Telecomunicación /
Telekomunikazio Ingeniaritza