On ways to improve adaptive filter performance | | Posted on:2000-11-24 | Degree:Ph.D | Type:Dissertation | | University:Virginia Polytechnic Institute and State University | Candidate:Sankaran, Sundar Gandhi | Full Text:PDF | | GTID:1468390014463487 | Subject:Engineering | | Abstract/Summary: | PDF Full Text Request | | The performance of an adaptive filtering algorithm is evaluated based on its convergence rate, misadjustment, computational requirements, and numerical robustness. We attempt to improve the performance by developing new adaptation algorithms and by using “unconventional” structures for adaptive filters.; Part I of this dissertation presents a new adaptation algorithm, which we have termed the Normalized LMS algorithm with Orthogonal Correction Factors (NLMS-OCF). The NLMS-OCF algorithm updates the adaptive filter coefficients (weights) on the basis of multiple input signal vectors, while NLMS updates the weights on the basis of a single input vector. The well-known Affine Projection Algorithm (APA) is a special case of our NLMS-OCF algorithm.; We derive convergence and tracking properties of NLMS-OCF using a simple model for the input vector. Our analysis shows that the convergence rate of NLMS-OCF (and also APA) is exponential and that it improves with an increase in the number of input signal vectors used for adaptation. While we show that, in theory, the misadjustment of the APA class is independent of the number of vectors used for adaptation, simulation results show a weak dependence. For white input the mean squared error drops by 20 dB in about 5N /(M + 1) iterations, where N is the number of taps in the adaptive filter and (M + 1) is the number of vectors used for adaptation.; We also derive a fast version of our NLMS-OCF algorithm that has a complexity of O(NM). The fast version of the algorithm performs orthogonalization using a forward-backward prediction lattice. We demonstrate the advantages of using NLMS-OCF in a practical application, namely stereophonic acoustic echo cancellation. We find that NLMS-OCF can provide faster convergence, as well as better echo rejection, than the widely used APA.; While the first part of this dissertation attempts to improve adaptive filter performance by refining the adaptation algorithm, the second part of this work looks at improving the convergence rate by using different structures.; A balanced realization is known to minimize the parameter sensitivity as well as the condition number for Grammians. Furthermore, a balanced realization is useful in model order reduction.; The third part of this dissertation proposes a unit-norm-constrained equation-error based adaptive IIR filtering algorithm. The proposed algorithm uses the hyper-spherical transformation to convert this constrained optimization problem into an unconstrained optimization problem. It is shown that the hyper-spherical transformation does not introduce any new minima in the equation error surface. (Abstract shortened by UMI.)... | | Keywords/Search Tags: | Adaptive filter, Algorithm, Performance, NLMS-OCF, Vectors used for adaptation, Convergence rate, Improve, APA | PDF Full Text Request | Related items |
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