The Research of Adaptive Filtering Algorithm and System Modeling

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Abstract:

This paper introduces an adaptive adjusting FIR filter’s parameters (LMS) method and presents a system recognition model based on the adaptive filter theory. The adaptive filter is directly with adjustable coefficient h (0),h (1),...h (N-1).The unknown system and FIR model have the same input sequence. The simulation result confirms the feasibility of the model.

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3722-3725

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May 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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