Title :
Robust estimation of covariance matrices
Author :
Reynolds, Reid G.
Author_Institution :
TRW, Rondondo Beach, CA, USA
fDate :
9/1/1990 12:00:00 AM
Abstract :
Data manipulations which increase the robustness and accuracy of estimators of covariance parameters by using the innovations correlation approach are considered. The procedures are especially useful for improving estimates of process-noise covariance parameters for slowly varying systems when measurement noise is large. The innovations correlate covariance estimation technique developed by P.R. Belanger (1974) is extended to the case where process noise is weak in magnitude compared to measurement noise. Belanger´s method exploits the linear relationship between the desired noise covariance parameters and the correlations of the innovation sequence of a suboptimal Kalman filter to formulate a least-squares algorithm. The estimates of the process-noise covariance parameters are improved by low-pass prefiltering and downsampling the data before applying the least-squares innovations correlation algorithm. Results for a single-output, linear time-invariant system are stated, and the subsequent analysis treats only this case
Keywords :
correlation methods; filtering and prediction theory; matrix algebra; parameter estimation; sampled data systems; Belanger´s method; Kalman filter; covariance matrices; covariance parameter estimation; data downsampling; innovations correlation approach; least-squares algorithm; low-pass prefiltering; single output linear time invariant systems; Correlation; Covariance matrix; Finite impulse response filter; IIR filters; Noise robustness; Parameter estimation; Riccati equations; State estimation; Technological innovation; Yield estimation;
Journal_Title :
Automatic Control, IEEE Transactions on