SOFT SENSOR MODELS FOR A FRACTIONATION REFORMATE PLANT USING SMALL AND BOOTSTRAPPED DATA SETS

Abstract In refinery plants key process variables, like contents of process stream and various fuel properties, need to be continuously monitored using adequate on-line measuring devices. Such measuring devices are often unavailable or malfunction and, hence, laboratory assays which are irregular an...

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Main Authors: Željka Ujević Andrijić, Matija Cvetnić, Nenad Bolf
Format: Article
Language:English
Published: Brazilian Society of Chemical Engineering
Series:Brazilian Journal of Chemical Engineering
Subjects:
Online Access:http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0104-66322018000200745&lng=en&tlng=en
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spelling doaj-74b9cc0dd7204f01aa15b1cc5992782e2020-11-24T22:11:24ZengBrazilian Society of Chemical EngineeringBrazilian Journal of Chemical Engineering1678-438335274575610.1590/0104-6632.20180352s20150727S0104-66322018000200745SOFT SENSOR MODELS FOR A FRACTIONATION REFORMATE PLANT USING SMALL AND BOOTSTRAPPED DATA SETSŽeljka Ujević AndrijićMatija CvetnićNenad BolfAbstract In refinery plants key process variables, like contents of process stream and various fuel properties, need to be continuously monitored using adequate on-line measuring devices. Such measuring devices are often unavailable or malfunction and, hence, laboratory assays which are irregular and time consuming and therefore not suitable for process control are inevitable alternatives. This research shows a comparison of different soft sensor models developed from a small industrial data set with soft sensor models developed from data generated by a bootstrap resampling method. Soft sensors were developed applying multiple linear regression, multivariable adaptive regression splines (MARSpline) and neural networks. The purpose of the developed soft sensors is the assessing of benzene content in light reformate of a fractionation reformate plant. The best results were obtained by the neural network-based model developed on bootstrapped data.http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0104-66322018000200745&lng=en&tlng=enbootstrapneural networkmultivariable adaptive regression splinessoft sensorprocess modeling
collection DOAJ
language English
format Article
sources DOAJ
author Željka Ujević Andrijić
Matija Cvetnić
Nenad Bolf
spellingShingle Željka Ujević Andrijić
Matija Cvetnić
Nenad Bolf
SOFT SENSOR MODELS FOR A FRACTIONATION REFORMATE PLANT USING SMALL AND BOOTSTRAPPED DATA SETS
Brazilian Journal of Chemical Engineering
bootstrap
neural network
multivariable adaptive regression splines
soft sensor
process modeling
author_facet Željka Ujević Andrijić
Matija Cvetnić
Nenad Bolf
author_sort Željka Ujević Andrijić
title SOFT SENSOR MODELS FOR A FRACTIONATION REFORMATE PLANT USING SMALL AND BOOTSTRAPPED DATA SETS
title_short SOFT SENSOR MODELS FOR A FRACTIONATION REFORMATE PLANT USING SMALL AND BOOTSTRAPPED DATA SETS
title_full SOFT SENSOR MODELS FOR A FRACTIONATION REFORMATE PLANT USING SMALL AND BOOTSTRAPPED DATA SETS
title_fullStr SOFT SENSOR MODELS FOR A FRACTIONATION REFORMATE PLANT USING SMALL AND BOOTSTRAPPED DATA SETS
title_full_unstemmed SOFT SENSOR MODELS FOR A FRACTIONATION REFORMATE PLANT USING SMALL AND BOOTSTRAPPED DATA SETS
title_sort soft sensor models for a fractionation reformate plant using small and bootstrapped data sets
publisher Brazilian Society of Chemical Engineering
series Brazilian Journal of Chemical Engineering
issn 1678-4383
description Abstract In refinery plants key process variables, like contents of process stream and various fuel properties, need to be continuously monitored using adequate on-line measuring devices. Such measuring devices are often unavailable or malfunction and, hence, laboratory assays which are irregular and time consuming and therefore not suitable for process control are inevitable alternatives. This research shows a comparison of different soft sensor models developed from a small industrial data set with soft sensor models developed from data generated by a bootstrap resampling method. Soft sensors were developed applying multiple linear regression, multivariable adaptive regression splines (MARSpline) and neural networks. The purpose of the developed soft sensors is the assessing of benzene content in light reformate of a fractionation reformate plant. The best results were obtained by the neural network-based model developed on bootstrapped data.
topic bootstrap
neural network
multivariable adaptive regression splines
soft sensor
process modeling
url http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0104-66322018000200745&lng=en&tlng=en
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AT matijacvetnic softsensormodelsforafractionationreformateplantusingsmallandbootstrappeddatasets
AT nenadbolf softsensormodelsforafractionationreformateplantusingsmallandbootstrappeddatasets
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