Title :
Parameter estimation of exponentially damped sinusoids using a higher order correlation-based approach
Author :
Ruiz, Diego P. ; Carrión, Maria C. ; Gallego, Antolino ; Medouri, Abdellatif
Author_Institution :
Dept. de Fisica Aplicada, Granada Univ., Spain
fDate :
11/1/1995 12:00:00 AM
Abstract :
A very common problem in signal processing is parameter estimation of exponentially damped sinusoids from a finite subset of noisy observations. When the signal is contaminated with colored noise of unknown power spectral density, a cumulant-based approach provides an appropriate solution to this problem. We propose a new class of estimator, namely, a covariance-type estimator, which reduces the deterministic errors associated with imperfect estimation of higher order correlations from finite-data length. This estimator allows a higher order correlation sequence to be modeled as a damped exponential model in certain slices of the moments plane. This result shows a useful link with well-known linear-prediction-based methods, such as the minimum-norm principal-eigenvector method of Kumaresan and Tufts (1982), which can be subsequently applied to extracting frequencies and damping coefficients from the 1-D correlation sequence. This paper discusses the slices allowed in the moments plane, the uses and limitations of this estimator using multiple realizations, and a single record in a noisy environment. Monte Carlo simulations applied to standard examples are also performed, and the results are compared with the KT method and the standard biased-estimator-based approach. The comparison shows the effectiveness of the proposed estimator in terms of bias and mean-square error when the signals are contaminated with additive Gaussian noise and a single data record with short data length is available
Keywords :
Gaussian noise; correlation methods; covariance analysis; estimation theory; higher order statistics; parameter estimation; prediction theory; signal processing; spectral analysis; Monte Carlo simulations; additive Gaussian noise; colored noise; covariance-type estimator; damped exponential model; damping coefficients; deterministic errors reduction; exponentially damped sinusoids; finite-data length; higher order correlation; higher order correlation sequence; linear-prediction-based methods; mean-square error; minimum-norm principal-eigenvector method; moments plane; noisy observations; parameter estimation; power spectral density; short data length; signal processing; Additive noise; Colored noise; Damping; Frequency; Gaussian noise; Matrix decomposition; Maximum likelihood estimation; Parameter estimation; Signal processing; Signal to noise ratio;
Journal_Title :
Signal Processing, IEEE Transactions on