A Rigorous Model for Evaluating Moving Window Soft Sensors for Industrial Distillation Processes
Traditionally, soft sensors are developed based on measurement data only, but here we consider a moving window (MW) soft sensor (SS) that uses data generated from a calibrated, rigorous model of the distillation columns of an FFC unit at Gazpromneft-Omsk Refinery. The contribution of the paper is th...
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AIDIC Servizi S.r.l.
2018-10-01
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Series: | Chemical Engineering Transactions |
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doaj-05d829b00b934207bf42d99e01dfb0cb2021-02-16T21:17:55ZengAIDIC Servizi S.r.l.Chemical Engineering Transactions2283-92162018-10-016910.3303/CET1869082A Rigorous Model for Evaluating Moving Window Soft Sensors for Industrial Distillation ProcessesAndrei TorgashovSigurd SkogestadDmitry AnTraditionally, soft sensors are developed based on measurement data only, but here we consider a moving window (MW) soft sensor (SS) that uses data generated from a calibrated, rigorous model of the distillation columns of an FFC unit at Gazpromneft-Omsk Refinery. The contribution of the paper is that a procedure is developed for MW SS design that incorporates a priori knowledge, which is especially suitable when the training sample is small and contains measurement errors. In addition, we propose a continuous adaptation of all model parameters based on new data, instead of the usual procedure of only updating the bias. The accuracy of the predicted product quality is investigated by calculating the coefficient of determination (R2) and root mean squared error (RMSE) for the test sample. Several approaches were considered, and we found that a constrained optimization approach was superior. The constraints on the model parameters of SSs are derived from a calibrated, rigorous distillation unit model. The improved estimator quality resulted in the successful industrial application of advanced process control (APC) systems.https://www.cetjournal.it/index.php/cet/article/view/9205 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Andrei Torgashov Sigurd Skogestad Dmitry An |
spellingShingle |
Andrei Torgashov Sigurd Skogestad Dmitry An A Rigorous Model for Evaluating Moving Window Soft Sensors for Industrial Distillation Processes Chemical Engineering Transactions |
author_facet |
Andrei Torgashov Sigurd Skogestad Dmitry An |
author_sort |
Andrei Torgashov |
title |
A Rigorous Model for Evaluating Moving Window Soft Sensors for Industrial Distillation Processes |
title_short |
A Rigorous Model for Evaluating Moving Window Soft Sensors for Industrial Distillation Processes |
title_full |
A Rigorous Model for Evaluating Moving Window Soft Sensors for Industrial Distillation Processes |
title_fullStr |
A Rigorous Model for Evaluating Moving Window Soft Sensors for Industrial Distillation Processes |
title_full_unstemmed |
A Rigorous Model for Evaluating Moving Window Soft Sensors for Industrial Distillation Processes |
title_sort |
rigorous model for evaluating moving window soft sensors for industrial distillation processes |
publisher |
AIDIC Servizi S.r.l. |
series |
Chemical Engineering Transactions |
issn |
2283-9216 |
publishDate |
2018-10-01 |
description |
Traditionally, soft sensors are developed based on measurement data only, but here we consider a moving window (MW) soft sensor (SS) that uses data generated from a calibrated, rigorous model of the distillation columns of an FFC unit at Gazpromneft-Omsk Refinery. The contribution of the paper is that a procedure is developed for MW SS design that incorporates a priori knowledge, which is especially suitable when the training sample is small and contains measurement errors. In addition, we propose a continuous adaptation of all model parameters based on new data, instead of the usual procedure of only updating the bias. The accuracy of the predicted product quality is investigated by calculating the coefficient of determination (R2) and root mean squared error (RMSE) for the test sample. Several approaches were considered, and we found that a constrained optimization approach was superior. The constraints on the model parameters of SSs are derived from a calibrated, rigorous distillation unit model. The improved estimator quality resulted in the successful industrial application of advanced process control (APC) systems. |
url |
https://www.cetjournal.it/index.php/cet/article/view/9205 |
work_keys_str_mv |
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