P. Teppola et al., Kalman filter for updating the coefficients of regression models. A case study from an activated sludge waste-water treatment plant, CHEM INTELL, 45(1-2), 1999, pp. 371-384
A Kalman filter was developed to overcome the problems caused by process dr
ifting. Different types of models were used to predict response variables o
f an activated sludge waste-water treatment plant. These models were constr
ucted using MLR, PCR, and PLS, The MLR-type regression coefficients were ca
lculated for both the PCR and PLS models. After that, the Kalman filter was
used to estimate these coefficients, recursively. Both the PCR and PLS 'in
ner relation' coefficient vectors were also estimated in this way and the r
esults were then compared. The effect of the number of variables was also b
riefly studied. The testing was carried out using sequential process data.
The prediction ability was measured by a Q(2)-value as a function of a lag
in the updating of the coefficients. (C) 1999 Elsevier Science B.V. All rig
hts reserved.