Publication | Closed Access
A Recursive Frequency Estimator Using Linear Prediction and a Kalman-Filter-Based Iterative Algorithm
27
Citations
10
References
2008
Year
State EstimationLinear Prediction ErrorAdaptive FilterStatistical Signal ProcessingNonlinear FilteringEngineeringRobust ModelingFiltering TechniqueLinear Prediction CoefficientsKalman-filter-based Iterative AlgorithmLinear Prediction ApproachSpectrum EstimationSignal ProcessingInverse ProblemsEstimation TheoryTracking ControlStatistics
This paper proposes a new Kalman-filter-based recursive frequency estimator for discrete-time multicomponent sinusoidal signals whose frequencies may be time-varying. The frequency estimator is based on the linear prediction approach and it employs the Kalman filter to track the linear prediction coefficients (LPCs) recursively. Frequencies of the sinusoids can then be computed using the estimated LPCs. Due to the coloredness of the linear prediction error, an iterative algorithm is employed to estimate the covariance matrix of the prediction error and the LPCs alternately in the Kalman filter in order to improve the tracking performance. Simulation results show that the proposed Kalman-filter-based iterative frequency estimator can achieve better tracking results than the conventional recursive least-squares-based estimators.
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