This work presents original developed methods, belonging to the soft computing area, that have been applied to solve complex signal processing problems arising in communication systems with “adverse” conditions. The adverse conditions are given by the fact that the considered physical channel is non-linear, non stationary, and the noise is coloured impulsive noise. Modified vector quantization algorithms have been developed for adaptive channel estimation and equalization inside a digital transmission. An unsupervised hierarchical clustering method based on fuzzy partitions has been proposed and application to identification of different noise sources is discussed. The presented soft computing techniques have been developed within the area of digital communication, nevertheless they posses general applicability

SOFT COMPUTING METHODS FOR CHANNEL AND NOISE ESTIMATION IN POWER-LINE COMMUNICATIONS

2008

Abstract

This work presents original developed methods, belonging to the soft computing area, that have been applied to solve complex signal processing problems arising in communication systems with “adverse” conditions. The adverse conditions are given by the fact that the considered physical channel is non-linear, non stationary, and the noise is coloured impulsive noise. Modified vector quantization algorithms have been developed for adaptive channel estimation and equalization inside a digital transmission. An unsupervised hierarchical clustering method based on fuzzy partitions has been proposed and application to identification of different noise sources is discussed. The presented soft computing techniques have been developed within the area of digital communication, nevertheless they posses general applicability
1-mar-2008
Italiano
Raugi, Marco
Università degli Studi di Pisa
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14242/151283
Il codice NBN di questa tesi è URN:NBN:IT:UNIPI-151283