In recent works, the statistical information of the channel traffic has been increasingly exploited to make effective decisions in spectrum sharing systems. However, these statistics cannot be obtained perfectly under (realistic) Imperfect Spectrum Sensing (ISS). Therefore, in this work we study comprehensively the approaches in the literature that correct the estimation of the channel traffic statistics under ISS, namely the closed-form expression approach and the algorithmic reconstruction approach. Then, we introduce a novel approach named Traffic Learning as a Deep Learning (DL) approach for providing accurate estimation of the channel traffic statistics under ISS. For this novel approach, deep neural networks using Multilayer Perceptro...
Abstract Dynamic Spectrum Access (DSA) / Cognitive Radio (CR) systems utilize spectrum sensing to m...
The opening of the unlicensed radio spectrum creates new opportunities and new challenges for commun...
This dissertation presents the results of channel estimation and signal detection using deep learnin...
In recent works, the statistical information of the channel traffic has been increasingly exploited ...
As we are stepping into the era of beyond 5G, the demand for frequency bands will increase significa...
Traffic Classification (TC) systems allow inferring the application that is generating the traffic b...
Dynamic spectrum allocation (DSA) permits unlicensed users to access spectrum owned by a licensed us...
With the advent of Internet of Things telecommunications will play a crucial role in every day life....
Deep Learning techniques are expected to play a key role in the development of wireless systems at t...
Learning the channel occupancy patterns to reuse the underutilised spectrum frequencies without int...
unlicensed users to share the spectrum with the licensed users on a non-interfering basis. Spectrum ...
Shared spectrum systems facilitate spectrum allocation to unlicensed users without harming the licen...
With the increase in demand for spectrum resources, cognitive radio is dependent heavily to efficien...
The ability to represent complex thoughts into a structured symbolic set, a language, and communicat...
Spectrum monitoring is one of the significant tasks required during the spectrum sharing process in ...
Abstract Dynamic Spectrum Access (DSA) / Cognitive Radio (CR) systems utilize spectrum sensing to m...
The opening of the unlicensed radio spectrum creates new opportunities and new challenges for commun...
This dissertation presents the results of channel estimation and signal detection using deep learnin...
In recent works, the statistical information of the channel traffic has been increasingly exploited ...
As we are stepping into the era of beyond 5G, the demand for frequency bands will increase significa...
Traffic Classification (TC) systems allow inferring the application that is generating the traffic b...
Dynamic spectrum allocation (DSA) permits unlicensed users to access spectrum owned by a licensed us...
With the advent of Internet of Things telecommunications will play a crucial role in every day life....
Deep Learning techniques are expected to play a key role in the development of wireless systems at t...
Learning the channel occupancy patterns to reuse the underutilised spectrum frequencies without int...
unlicensed users to share the spectrum with the licensed users on a non-interfering basis. Spectrum ...
Shared spectrum systems facilitate spectrum allocation to unlicensed users without harming the licen...
With the increase in demand for spectrum resources, cognitive radio is dependent heavily to efficien...
The ability to represent complex thoughts into a structured symbolic set, a language, and communicat...
Spectrum monitoring is one of the significant tasks required during the spectrum sharing process in ...
Abstract Dynamic Spectrum Access (DSA) / Cognitive Radio (CR) systems utilize spectrum sensing to m...
The opening of the unlicensed radio spectrum creates new opportunities and new challenges for commun...
This dissertation presents the results of channel estimation and signal detection using deep learnin...