Application of multivariable model predictive control to overcome the intervariable interaction in CO2 removal process

Multivariable model predictive control (MMPC) was applied in CO2 removal process in a natural gas treatment from an industry located in Subang field, which used chemical absorption. MMPC is a variation of model predictive control (MPC) which can account for more than one control variable at once and...

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Main Authors: Wahid Abdul, Meizvira Fitriani, Wiranoto Yoga
Format: Article
Language:English
Published: EDP Sciences 2018-01-01
Series:E3S Web of Conferences
Online Access:https://doi.org/10.1051/e3sconf/20186703049
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spelling doaj-68e82a45c1d040d48c444f113747889c2021-02-02T06:28:33ZengEDP SciencesE3S Web of Conferences2267-12422018-01-01670304910.1051/e3sconf/20186703049e3sconf_i-trec2018_03049Application of multivariable model predictive control to overcome the intervariable interaction in CO2 removal processWahid AbdulMeizvira FitrianiWiranoto YogaMultivariable model predictive control (MMPC) was applied in CO2 removal process in a natural gas treatment from an industry located in Subang field, which used chemical absorption. MMPC is a variation of model predictive control (MPC) which can account for more than one control variable at once and is classified in advanced control category. MMPC is expected to give a better performance in handling the process as well as being able to overcome intervariable interaction that is prone to happen in multiple input multiple output (MIMO) system. MMPC was applied in the process to get a better process control performance compared to the one using PI controller and to make any intervariable interaction in the process more manageable. The indicator for each goal was integral square error (ISE). The result showed that identified intervariable interaction was between the pressure of gas feed in and the flow of make-up water to absorber. By using MMPC, the ISE of controller’s performance was improved from the PI-controller that was used in the plant. The improvement for ISE was 32.62% (PIC-1101) and 72.67% (FIC-1102) in the SP tracking, and 52.54% (PIC-1101) and 57.41% (FIC-1102) in the disturbance rejection. MMPC implementation also showed a better response in handling intervariable interaction in the process.https://doi.org/10.1051/e3sconf/20186703049
collection DOAJ
language English
format Article
sources DOAJ
author Wahid Abdul
Meizvira Fitriani
Wiranoto Yoga
spellingShingle Wahid Abdul
Meizvira Fitriani
Wiranoto Yoga
Application of multivariable model predictive control to overcome the intervariable interaction in CO2 removal process
E3S Web of Conferences
author_facet Wahid Abdul
Meizvira Fitriani
Wiranoto Yoga
author_sort Wahid Abdul
title Application of multivariable model predictive control to overcome the intervariable interaction in CO2 removal process
title_short Application of multivariable model predictive control to overcome the intervariable interaction in CO2 removal process
title_full Application of multivariable model predictive control to overcome the intervariable interaction in CO2 removal process
title_fullStr Application of multivariable model predictive control to overcome the intervariable interaction in CO2 removal process
title_full_unstemmed Application of multivariable model predictive control to overcome the intervariable interaction in CO2 removal process
title_sort application of multivariable model predictive control to overcome the intervariable interaction in co2 removal process
publisher EDP Sciences
series E3S Web of Conferences
issn 2267-1242
publishDate 2018-01-01
description Multivariable model predictive control (MMPC) was applied in CO2 removal process in a natural gas treatment from an industry located in Subang field, which used chemical absorption. MMPC is a variation of model predictive control (MPC) which can account for more than one control variable at once and is classified in advanced control category. MMPC is expected to give a better performance in handling the process as well as being able to overcome intervariable interaction that is prone to happen in multiple input multiple output (MIMO) system. MMPC was applied in the process to get a better process control performance compared to the one using PI controller and to make any intervariable interaction in the process more manageable. The indicator for each goal was integral square error (ISE). The result showed that identified intervariable interaction was between the pressure of gas feed in and the flow of make-up water to absorber. By using MMPC, the ISE of controller’s performance was improved from the PI-controller that was used in the plant. The improvement for ISE was 32.62% (PIC-1101) and 72.67% (FIC-1102) in the SP tracking, and 52.54% (PIC-1101) and 57.41% (FIC-1102) in the disturbance rejection. MMPC implementation also showed a better response in handling intervariable interaction in the process.
url https://doi.org/10.1051/e3sconf/20186703049
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AT wiranotoyoga applicationofmultivariablemodelpredictivecontroltoovercometheintervariableinteractioninco2removalprocess
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