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Proceedings ArticleDOI

Performance of AdaBoost classifier in recognition of superposed modulations for MIMO TWRC with physical-layer network coding

TLDR
An algorithm for recognition of sources modulations for MIMO TWRC with PLNC is proposed and simulation results show the ability of the proposed algorithm to provide a good recognition performance at acceptable signal-to-noise values.
Abstract
Modulation recognition algorithms have recently received a great deal of attention in academia and industry. In addition to their application in the military field, these algorithms found civilian use in reconfigurable systems, such as cognitive radios. Most previously existing algorithms are focused on recognition of a single modulation. However, a multiple-input multiple-output two-way relaying channel (MIMO TWRC) with physical-layer network coding (PLNC) requires the recognition of the pair of sources modulations from the superposed constellation at the relay. In this paper, we propose an algorithm for recognition of sources modulations for MIMO TWRC with PLNC. The proposed algorithm is divided in two steps. The first step uses the higher order statistics based features in conjunction with genetic algorithm as a features selection method, while the second step employs AdaBoost as a classifier. Simulation results show the ability of the proposed algorithm to provide a good recognition performance at acceptable signal-to-noise values.

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Citations
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Journal ArticleDOI

Modulation Signal Recognition Based on Information Entropy and Ensemble Learning

TL;DR: The simulation results show that the feature subsets selected by SFS and SFFS algorithms are the best, with a 48% increase in recognition rate over the original feature set when using KNN classifier and a 34% increase when using SVM classifier.
Journal ArticleDOI

A Coherent Performance for Noncoherent Wireless Systems Using AdaBoost Technique

TL;DR: The AdaBoost algorithm is utilized to improve the bit error rate (BER) of different modulation techniques to achieve a coherent performance for the noncoherent system.
Proceedings ArticleDOI

A Survey of Some Important Algorithms Used in Military Applications

TL;DR: This is a short survey of ten algorithms that are often used for military purposes, followed by analysis of their potential suitability for dataflow and GaAs, which are a specific architecture and technology for supercomputers on a chip, respectively.
References
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Journal ArticleDOI

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Journal ArticleDOI

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