Volume : 2, Issue : 11, NOV 2016
ADVANCED STUDY OF FUTURE GENERATION ANTENNA FOR WIRE-FREE APPLICATIONS
Sumit Singh, Mr. Gaurav kumar Sharma, Mr. Gajanand Sharma
Abstract
channel equalization is a process of compensating the disruptive effects caused mainly by inter symbol interference in a band-limited channel and plays a vital role for enabling higher data rate in digital communication. The development of new training algorithms, structures and the selection of the design parameters for equalizers are active fields of research which are exploiting the benefits of different signal processing techniques. Here in our paper work for equalization we use the various adaptive algorithms like least mean square (lms), recursive least square (rls), and constant modules algorithms (cma) with 16-ary quadrature amplitude modulation (qam) and 16-ary phase shift keying (psk) modulation technique and then compare the mean square error of all these combinations of adaptive algorithms and modulation techniques. The simulation work has been done on matlab -2008 software.
Keywords
“equalizer”,” adaptive algorithms”,” digital modulation techniques”.
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