AR, ARMA, AND AR-IN-NOISE MODELING BY FITTING WINDOWED CORRELATION DATA.
Date of Original Version
A method for autoregressive (AR) modeling of stationary stochastic signals has been proposed based on fitting the model autocorrelation function to the estimated (biased) autocorrelation in the least-squares sense over more than the minimum number of autocorrelation values. The method is extended to the case of autoregressive-moving-average (ARMA) models, including the special case of AR signals in white noise, and both AR and ARMA examples are presented. This method differs from the method of over-determined normal equations in that fitting error, not equation error, is minimized. The bias in the estimated correlation values is also readily compensated without amplifying the higher (noisy) correlation lags. Iterative algorithms are derived to solve the resulting nonlinear equations.
ICASSP, IEEE International Conference on Acoustics, Speech and Signal Processing - Proceedings
Jackson, Leland B., Jianguo Huang, and Kevin P. Richards. "AR, ARMA, AND AR-IN-NOISE MODELING BY FITTING WINDOWED CORRELATION DATA.." ICASSP, IEEE International Conference on Acoustics, Speech and Signal Processing - Proceedings , (1987): 2039-2042. https://digitalcommons.uri.edu/ele_facpubs/632