Nonlinear Effects of the Lms Predictor for Chirped Input Signals
نویسنده
چکیده
This paper shows that it is possible for an adaptive transversal prediction filter to outperform the fixed Wiener predictor of the same length for narrowband input signal embedded in Added White Gaussian Noise (AWGN). The error transfer function approach, which takes into account of the correlation of predictor error feedback and input signal, is derived for stationary and chirped input signals. It shows that with a narrowband input signal, the nonlinear effect is small for a 1-step predictor, but increases in magnitude as the prediction distance is increased. We also show that the LMS predictor uses information from the past errors more effectively than the Recursive Least Square (RLS) predictor, as a consequence, the magnitude of nonlinear effects of the LMS predictor are more significant than for the RLS predictor.
منابع مشابه
Nonlinear Effects of the LMS Adaptive Predictor for Chirped Input Signals
This paper investigates the nonlinear effects of the LeastMean Square (LMS) adaptive predictor. Traditional analysis of the adaptive filter ignores the statistical dependence among successive tap-input vectors and bounds the performance of the adaptive filter by that of the finite-length Wiener filter. It is shown that the nonlinear effects make it possible for an adaptive transversal predictio...
متن کاملAdaptive nonlinear prediction based on order statistics for speech signals
This paper proposes a novel adaptive algorithm for nonlinear prediction of speech signals, which turns out to be the adaptation procedure for an order statistic LMS predictor. The LMS-L lter Pitas et al. addressed is modied to preserve the time information in the input vector for the adaptation, in which a coe cient matrix is utilized to update the predictor coe cients. Computer simulations dem...
متن کاملComparative tracking performance of the LMS and RLS algorithms for chirped narrowband signal recovery
This paper studies the comparative tracking performance of the recursive least squares (RLS) and least mean square (LMS) algorithms for time-varying inputs, specifically for linearly chirped narrowband input signals in additive white Gaussian noise. It is shown that the structural differences in the implementation of the LMS and RLS weight updates produce regions where the LMS performance excee...
متن کاملDevelopment of Nonlinear Lattice-Hammerstein Filters for Gaussian Signals
In this paper, the nonlinear lattice-Hammerstein filter and its properties are derived. It is shown that the error signals are orthogonal to the input signal and also backward errors of different stages are orthogonal to each other. Numerical results confirm all the theoretical properties of the lattice-Hammerstein structure.
متن کاملPotentials of Evolving Linear Models in Tracking Control Design for Nonlinear Variable Structure Systems
Evolving models have found applications in many real world systems. In this paper, potentials of the Evolving Linear Models (ELMs) in tracking control design for nonlinear variable structure systems are introduced. At first, an ELM is introduced as a dynamic single input, single output (SISO) linear model whose parameters as well as dynamic orders of input and output signals can change through ...
متن کامل