Back to Search Start Over

Quantification of model uncertainty from experimental data: a mixed deterministic-probabilistic approach

Authors :
D. de Vries
P.M.J. Van den Hof
Source :
Proceedings of 32nd IEEE Conference on Decision and Control.
Publication Year :
2002
Publisher :
IEEE, 2002.

Abstract

In this paper a procedure is presented to obtain an upper bound on the modelling error for a reduced order finite impulse response (FIR) estimate of the transfer function of a linear system, using only minor a priori information. By applying a procedure similar to Bartlett's procedure of periodogram averaging to the FIR estimate, in conjunction with a periodic input signal, the statistics of the modelling error asymptotically can be obtained from the data. The modelling error consists of two parts: an averaging (probabilistic) part, due to the stochastic noise disturbance on the data, and a worst case (deterministic) part, due to the unmodelled dynamics. The latter is explicitly bounded with a hard error bound, while for the former a confidence interval can be specified asymptotically. The resulting error bounds appear to be highly realistic and, as a consequence, suitable for high performance robust control design purposes. >

Details

Database :
OpenAIRE
Journal :
Proceedings of 32nd IEEE Conference on Decision and Control
Accession number :
edsair.doi...........bf47ceff43593dbf9f1bb8524e5e9b18
Full Text :
https://doi.org/10.1109/cdc.1993.325871