DocumentCode :
1383146
Title :
Estimating signal parameters using the nonlinear instantaneous least squares approach
Author :
Ängeby, Jakob
Author_Institution :
Dept. of Signal & Syst., Chalmers Univ. of Technol., Goteborg, Sweden
Volume :
48
Issue :
10
fYear :
2000
fDate :
10/1/2000 12:00:00 AM
Firstpage :
2721
Lastpage :
2732
Abstract :
A novel method for signal parameter estimation is presented, termed the nonlinear instantaneous least squares (NILS) estimator. The basic idea is to use the observations in a sliding window to compute an instantaneous (short-term) estimate of the amplitude used in the separated nonlinear least squares (NLLS) criterion. The effect is a significant improvement of the numerical properties in the criterion function, which becomes well-suited for a signal parameter search. For small-sized sliding windows, the global minimum in the NLIS criterion function is wide and becomes easy to find. For maximum size windows, the NILS is equivalent to the NLLS estimator, which implies statistical efficiency for Gaussian noise. A “blind” signal parameter search algorithm that does not use any a priori information is proposed. The NILS estimator can be interpreted as a signal-subspace projection-based algorithm. Moreover, the NILS estimator can be interpreted as an estimator based on the prediction error of a (structured) linear predictor. Hereby, a link is established between NLLS, signal-subspace fitting, and linear prediction-based estimation approaches. The NILS approach is primarily applicable to deterministic signal models. Specifically, polynomial-phase signals are studied, and the NILS approach is evaluated and compared with other approaches. Simulations show that the signal-to-noise ratio (SNR) threshold is significantly lower than that of the other methods, and it is confirmed that the estimates are statistically efficient. Just as the NLLS approach, the NILS estimator can be applied to nonuniformly sampled data
Keywords :
Gaussian noise; least squares approximations; parameter estimation; polynomials; prediction theory; search problems; signal sampling; Gaussian noise; NILS estimator; NLIS criterion function; SNR threshold; blind signal parameter search algorithm; criterion function; deterministic signal models; global minimum; instantaneous amplitude estimate; linear prediction-based estimation; maximum size windows; nonlinear instantaneous least squares; nonlinear least squares; nonuniformly sampled data; numerical properties; polynomial-phase signals; prediction error; short-term amplitude estimate; signal parameter estimation; signal parameter search; signal-subspace fitting; signal-subspace projection-based algorithm; signal-to-noise ratio; simulations; sliding window observations; small-sized sliding windows; statistical efficiency; structured linear predictor; Amplitude estimation; Gaussian noise; Least squares approximation; Least squares methods; Maximum likelihood estimation; Nonuniform sampling; Parameter estimation; Polynomials; Signal processing; Signal to noise ratio;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/78.869022
Filename :
869022
Link To Document :
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