Title :
Frequency-domain adaptation of causal digital filters
Author :
Elliott, Stephen J. ; Rafaely, Boaz
Author_Institution :
Inst. of Sound & Vibration Res., Southampton Univ., UK
fDate :
5/1/2000 12:00:00 AM
Abstract :
The adaptation of causal FIR digital filters in the discrete frequency domain is considered, and it is shown how the bin-normalized form of the LMS algorithm can converge to a biased solution for problems such as linear prediction. A discrete frequency-domain version of Newton´s algorithm is derived, and it is demonstrated how this can converge to the optimal causal solution, even for linear prediction problems. The algorithm employs a spectral factorization of the estimated power spectral density of the reference signal, the entirely noncausal part of which is used before the causality constraint in the adaptation algorithm, and the entirely causal part is applied after the causality constraint. The spectral factors can be calculated online from a recursive estimate of the power spectral density without too great a loss of convergence speed. The extension of the algorithm to the adaptation of feedforward controllers is also described, in which case, the spectral factors of the reference signals filtered by the plant response are required, and these are shown to be equal to the spectral factors of the reference signal multiplied by the minimum phase part or the plant frequency response
Keywords :
FIR filters; Newton method; Wiener filters; adaptive filters; controllers; convergence of numerical methods; digital filters; feedforward; frequency-domain analysis; least mean squares methods; prediction theory; spectral analysis; Newton´s algorithm; Wiener filter; adaptation algorithm; biased solution; bin-normalized LMS algorithm; causal FIR digital filters; causality constraint; convergence speed; discrete frequency domain; discrete frequency-domain; feedforward controllers; frequency-domain adaptation; linear prediction; minimum phase; optimal causal solution; plant response; power spectral density; recursive estimate; reference signal; spectral factorization; spectral factors; Adaptive filters; Convergence; Convolution; Digital filters; Filtering; Finite impulse response filter; Frequency domain analysis; Least squares approximation; Nonlinear filters; Recursive estimation;
Journal_Title :
Signal Processing, IEEE Transactions on