A multiscale, Bayesian and error-in-variables approach for linear dynamic data rectification

Citation
S. Ungarala et Br. Bakshi, A multiscale, Bayesian and error-in-variables approach for linear dynamic data rectification, COMPUT CH E, 24(2-7), 2000, pp. 445-451
Citations number
13
Categorie Soggetti
Chemical Engineering
Journal title
COMPUTERS & CHEMICAL ENGINEERING
ISSN journal
00981354 → ACNP
Volume
24
Issue
2-7
Year of publication
2000
Pages
445 - 451
Database
ISI
SICI code
0098-1354(20000715)24:2-7<445:AMBAEA>2.0.ZU;2-T
Abstract
A multiscale approach to data rectification is proposed for data containing features with different time and frequency localization. Noisy data are de composed into contributions at multiple scales and a Bayesian optimization problem is solved to rectify the wavelet coefficients at each scale. A line ar dynamic model is used to constrain the optimization problem, which facil itates an error-in-variables (EIV) formulation and reconciles all measured variables. Time-scale recursive algorithms are obtained by propagating the prior with temporal and scale models. The multiscale Kalman filter is a spe cial case of the proposed Bayesian EIV approach. (C) 2000 Elsevier Science Ltd. All rights reserved.