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Proceedings ArticleDOI

Multichannel adaptive filtering with a feedback convergence function

C. Chang
- Vol. 7, pp 667-670
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TLDR
The revised adaptive filtering algorithm is shown to be more effective in suppressing coherent noises than the previous one, and is well suited for processing the highly time-varying nonstationary data.
Abstract
A new set of multichannel adaptive filtering algorithms containing a feedback convergence function is described The algorithms represent an extension of the Kalman filtering approach to the linearly constrained multichannel adaptive filtering In essence, the convergence function in the adaptive filtering algorithm, which is designed to control stability and rate of adaptation, is modified to fashion the Kalman gain structure Through adaptive feedback schemes, the algorithms are capable of tracking not only the prediction errors with respect to the input multichannel signals, but also the performance errors in the estimated filter weights by means of updating the error covariance matrix Thus, with double monitoring capability, the revised adaptive filtering algorithm is shown to be more effective in suppressing coherent noises than the previous one, and is well suited for processing the highly time-varying nonstationary data

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References
More filters
Journal ArticleDOI

An algorithm for linearly constrained adaptive array processing

O.L. Frost
TL;DR: A constrained least mean-squares algorithm has been derived which is capable of adjusting an array of sensors in real time to respond to a signal coming from a desired direction while discriminating against noises coming from other directions.
Book ChapterDOI

Stationary and nonstationary learning characteristics of the LMS adaptive filter

TL;DR: It is shown that for stationary inputs the LMS adaptive algorithm, based on the method of steepest descent, approaches the theoretical limit of efficiency in terms of misadjustment and speed of adaptation when the eigenvalues of the input correlation matrix are equal or close in value.
Journal ArticleDOI

Relationships between digital signal processing and control and estimation theory

TL;DR: Topics such as stability theory, linear prediction, and parameter identification, system synthesis and implementation, two-dimensional filtering, decentralized control and estimation, and image processing are examined in order to uncover some of the basic similarities and differences in the goals, techniques, and philosophy of the two disciplines.
Journal ArticleDOI

A technique for the continuous representation of dispersion in seismic data

John C. Robinson
- 01 Aug 1979 - 
TL;DR: In this article, the dispersion relation derived by Futterman (1962) for an absorption model which is linear with frequency has been analyzed and it has been found that the relation can be viewed as a frequencydependent time rescaling, which transforms into a simple frequency-dependent inverse frequency rescaling.
Journal ArticleDOI

A Rapidly Converging First-Order Training Algorithm for an Adaptive Equalizer

TL;DR: Bounds on the variance, valid for large signal-to-noise ratios, indicate that the new algorithm not only converges faster, but also has a smaller variance asymptotically than the present algorithm for moderate intersymbol interference and the same variance asyspymbol interference.