Title :
An unbiased equation error identifier and reduced-order approximations
Author :
Regalia, Phillip A.
Author_Institution :
Dept. Signal et Image, Inst. Nat. des Telecommun., Evry, France
fDate :
6/1/1994 12:00:00 AM
Abstract :
The equation error (EE) identification technique is modified to remove the parameter bias problem induced by uncorrelated measurement errors. The modification replaces a “monic” constraint with a “unit-norm” constraint; the asymptotic solution replaces a normal equation with an eigenequation. The resulting algorithm is simpler than previous schemes, while at the same time preserving the desirable properties of the conventional EE method: simplicity of an on-line algorithm, unimodality of the performance surface, and consistent identification in the sufficient-order case. In the more realistic undermodeled case, a robustness result shows that the mean optimal parameter values of both the monic and unit-norm EE schemes correspond to a stable transfer function for all degrees of undermodeling, and for all stationary output disturbances, provided the input sequence satisfies an autoregressive constraint; otherwise an unstable model may result. Model approximation properties for the undermodeled case are exposed in detail for the case of autoregressive inputs; although both the monic and unit-norm variants provide Pade approximation properties, the unit-norm version is capable of autocorrelation matching properties as as well, and yields the optimal solution to a first- and second-order interpolation problem. Finally, the mismodeling error for the undermodeled case is shown to be a well-behaved function of the Hankel singular values of the unknown system. This modification allows EE methods to be admitted to the class of unbiased identification and approximation techniques
Keywords :
error analysis; interpolation; measurement errors; parameter estimation; signal processing; Pade approximation properties; asymptotic solution; autocorrelation matching properties; autoregressive constraint; eigenequation; input sequence; interpolation problem; mismodeling error; model approximation properties; monic constraint; online algorithm; parameter bias problem; performance surface; reduced-order approximations; robustness; stable transfer function; stationary output disturbances; sufficient-order case; unbiased equation error identifier; uncorrelated measurement errors; undermodeled case; unit-norm constraint; Convergence; Equations; Error correction; Measurement errors; Parameter estimation; Robustness; Signal processing algorithms; Stability; Transfer functions; White noise;
Journal_Title :
Signal Processing, IEEE Transactions on