IEEE GLOBECOM 2007-2007 IEEE Global Telecommunications Conference 2007
DOI: 10.1109/glocom.2007.581
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Initialization Techniques for Improved Convergence of LMS DFEs in Strong Interference Environments

Abstract: The least-mean square (LMS) decision-feedback equalizer (DFE) was previously shown [1], [2] to possess an extended convergence time in an interference limited environment. In [1] it was shown that the convergence time can be significantly reduced by using the received samples and the training data to initialize (data-aided initialization) the LMS weights with an estimate for the Wiener weights. In this paper, two dataaided initialization techniques for equalization in the presence of severe narrowband interfer… Show more

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Cited by 3 publications
(2 citation statements)
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“…Several reduced-rank methods have been proposed in the last several years, namely, MNWF [4] and consequent modified filters [5], which have been widely applied in navigation applications [6]. Although several researchers [7], [8] have investigated how to improve convergence of LMS and reduce complexity based on reduced-rank adaptive filter, a challenging problem which remains unsolved by conventional techniques is that there is a contradictory between performance of the filter and its complexity, especially for navigation receiver applications. Thus, the implementation of joint more filters to develop adaptive filter, according to their own characters is probably a more effective way to deal with this problem.…”
Section: Introductionmentioning
confidence: 99%
“…Several reduced-rank methods have been proposed in the last several years, namely, MNWF [4] and consequent modified filters [5], which have been widely applied in navigation applications [6]. Although several researchers [7], [8] have investigated how to improve convergence of LMS and reduce complexity based on reduced-rank adaptive filter, a challenging problem which remains unsolved by conventional techniques is that there is a contradictory between performance of the filter and its complexity, especially for navigation receiver applications. Thus, the implementation of joint more filters to develop adaptive filter, according to their own characters is probably a more effective way to deal with this problem.…”
Section: Introductionmentioning
confidence: 99%
“…Several reduced-rank methods have been proposed in the last several years, namely, MNWF [1] and consequent modified filters [2], which have been widely applied in navigation applications [3]. Although several researchers [4], [5] have investigated how to improve convergence of LMS and reduce complexity based on reduced-rank adaptive filter, a challenging problem which remains unsolved by conventional techniques is that there is a contradictory between performance of the filter and its complexity, especially for navigation receiver applications. Thus, the implementation of joint more filters to develop adaptive filter, according to their own characters is probably a more effective way to deal with this problem.…”
Section: Introductionmentioning
confidence: 99%