Soft Sensors - Modern Chemical Engineering Tool

Control systems and optimization procedures require regular and reliable measurements at the appropriate frequency. At the same time, legal regulations dictate strict product quality specifications and refinery emissions. As a result, a greater number of process variables need to be measured and new...

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Main Author: N. Bolf
Format: Article
Language:English
Published: Croatian Society of Chemical Engineers 2011-04-01
Series:Kemija u Industriji
Subjects:
Online Access:http://pierre.fkit.hr/hdki/kui/vol60/broj04/193.pdf
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spelling doaj-e456877773d6447aab3dcc1f71a431092020-11-25T00:57:54ZengCroatian Society of Chemical EngineersKemija u Industriji0022-98301334-90902011-04-016004193199Soft Sensors - Modern Chemical Engineering ToolN. BolfControl systems and optimization procedures require regular and reliable measurements at the appropriate frequency. At the same time, legal regulations dictate strict product quality specifications and refinery emissions. As a result, a greater number of process variables need to be measured and new expensive process analyzers need to be installed to achieve efficient process control. This involves synergy between plant experts, system analysts and process operators. One of the common problems in industrial plants is the inability of the real time and continuous measurement of key process variables.Absence of key value measurement in a timely manner aggravates control, but it does not mean that it is always an impossible step. As an alternative, the use of soft sensors as a substitute for process analyzers and laboratory testing is suggested. With the soft sensors, the objective is to develop an inferential model to estimate infrequently measured variables and laboratory assays using the frequently measured variables. By development of soft sensors based on measurement of continuous variables (such as flow, temperature, pressure) it is possible to estimate the difficult- -to-measure variables as well as product quality and emissions usually carried by laboratory assays.Software sensors, as part of virtual instrumentation, are focused on assessing the system state variables and quality products by applying the model, thus replacing the physical measurement and laboratory analysis. Multiple linear/nonlinear regression methods and artificial intelligence methods (such as neural network, fuzzy logic and genetic algorithms) are usually applied in the design of soft sensor models for identification of nonlinear processes.Review of published research and industrial application in the field of soft sensors is given with the methods of soft sensor development and nonlinear dynamic model identification. Based on soft sensors, it is possible to estimate product properties in a continuous manner as well as apply the methods of inferential control. By real plant application of the soft sensors, considerable savings could be expected, as well as compliance with strict legal regulations for product quality specifications and emissions. http://pierre.fkit.hr/hdki/kui/vol60/broj04/193.pdfControl systems
collection DOAJ
language English
format Article
sources DOAJ
author N. Bolf
spellingShingle N. Bolf
Soft Sensors - Modern Chemical Engineering Tool
Kemija u Industriji
Control systems
author_facet N. Bolf
author_sort N. Bolf
title Soft Sensors - Modern Chemical Engineering Tool
title_short Soft Sensors - Modern Chemical Engineering Tool
title_full Soft Sensors - Modern Chemical Engineering Tool
title_fullStr Soft Sensors - Modern Chemical Engineering Tool
title_full_unstemmed Soft Sensors - Modern Chemical Engineering Tool
title_sort soft sensors - modern chemical engineering tool
publisher Croatian Society of Chemical Engineers
series Kemija u Industriji
issn 0022-9830
1334-9090
publishDate 2011-04-01
description Control systems and optimization procedures require regular and reliable measurements at the appropriate frequency. At the same time, legal regulations dictate strict product quality specifications and refinery emissions. As a result, a greater number of process variables need to be measured and new expensive process analyzers need to be installed to achieve efficient process control. This involves synergy between plant experts, system analysts and process operators. One of the common problems in industrial plants is the inability of the real time and continuous measurement of key process variables.Absence of key value measurement in a timely manner aggravates control, but it does not mean that it is always an impossible step. As an alternative, the use of soft sensors as a substitute for process analyzers and laboratory testing is suggested. With the soft sensors, the objective is to develop an inferential model to estimate infrequently measured variables and laboratory assays using the frequently measured variables. By development of soft sensors based on measurement of continuous variables (such as flow, temperature, pressure) it is possible to estimate the difficult- -to-measure variables as well as product quality and emissions usually carried by laboratory assays.Software sensors, as part of virtual instrumentation, are focused on assessing the system state variables and quality products by applying the model, thus replacing the physical measurement and laboratory analysis. Multiple linear/nonlinear regression methods and artificial intelligence methods (such as neural network, fuzzy logic and genetic algorithms) are usually applied in the design of soft sensor models for identification of nonlinear processes.Review of published research and industrial application in the field of soft sensors is given with the methods of soft sensor development and nonlinear dynamic model identification. Based on soft sensors, it is possible to estimate product properties in a continuous manner as well as apply the methods of inferential control. By real plant application of the soft sensors, considerable savings could be expected, as well as compliance with strict legal regulations for product quality specifications and emissions.
topic Control systems
url http://pierre.fkit.hr/hdki/kui/vol60/broj04/193.pdf
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