Title :
Discarding data may help in system identification
Author :
Carrette, Pierre ; Bastin, Georges ; Genin, Yves Y. ; GEVERS, Michel
Author_Institution :
CESAME, Univ. Catholique de Louvain, Belgium
fDate :
9/1/1996 12:00:00 AM
Abstract :
We present results concerning the parameter estimates obtained by prediction error methods in the case of input that are insufficiently rich. Such input signals are typical of industrial measurements where occasional stepwise reference changes occur. As is intuitively obvious, the data located around the input signal discontinuities carry most of the useful information. Using singular value decomposition (SVD) techniques, we show that in noise undermodeling situations, the remaining data may introduce large bias on the model parameters with a possible increase of their total mean square error. A data selection criterion is then proposed to discard such poorly informative data to increase the accuracy of the transfer function estimate. The system discussed in particular is a SISO ARMAX system
Keywords :
least squares approximations; noise; parameter estimation; prediction theory; singular value decomposition; SISO ARMAX system; accuracy; industrial measurements; input signals; noise undermodeling situations; parameter estimates; prediction error methods; signal discontinuities; single input single output system; singular value decomposition; stepwise reference change; system identification; transfer function estimate; Computational modeling; Filtering; Frequency; Mean square error methods; Parameter estimation; Predictive models; System identification; Transfer functions; White noise;
Journal_Title :
Signal Processing, IEEE Transactions on