Nonlinear Data Driven Techniques for Process Monitoring

The goal of this research is to develop process monitoring technology capable of taking advantage of the large stores of data accumulating in modern chemical plants. There is demand for new techniques for the monitoring of non-linear topology and behavior, and this research presents a topological pr...

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Main Author: Thomas, Michael C
Other Authors: Romagnoli, Jose A
Format: Others
Language:en
Published: LSU 2014
Subjects:
Online Access:http://etd.lsu.edu/docs/available/etd-04102014-144149/
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spelling ndltd-LSU-oai-etd.lsu.edu-etd-04102014-1441492014-04-26T03:44:43Z Nonlinear Data Driven Techniques for Process Monitoring Thomas, Michael C Chemical Engineering The goal of this research is to develop process monitoring technology capable of taking advantage of the large stores of data accumulating in modern chemical plants. There is demand for new techniques for the monitoring of non-linear topology and behavior, and this research presents a topological preservation method for process monitoring using Self Organizing Maps (SOM). The novel architecture presented adapts SOM to a full spectrum of process monitoring tasks including fault detection, fault identification, fault diagnosis, and soft sensing. The key innovation of the new technique is its use of multiple SOM (MSOM) in the data modeling process as well as the use of a Gaussian Mixture Model (GMM) to model the probability density function of classes of data. For comparison, a linear process monitoring technique based on Principal Component Analysis (PCA) is also used to demonstrate the improvements SOM offers. Data for the computational experiments was generated using a simulation of the Tennessee Eastman process (TEP) created in Simulink by (Ricker 1996). Previous studies focus on step changes from normal operations, but this work adds operating regimes with time dependent dynamics not previously considered with a SOM. Results show that MSOM improves upon both linear PCA as well as the standard SOM technique using one map for fault diagnosis, and also shows a superior ability to isolate which variables in the data are responsible for the faulty condition. With respect to soft sensing, SOM and MSOM modeled the compositions equally well, showing that no information was lost in dividing the map representation of process data. Future research will attempt to validate the technique on a real chemical process. Romagnoli, Jose A Chen, Jianhua Flake, John C LSU 2014-04-25 text application/pdf http://etd.lsu.edu/docs/available/etd-04102014-144149/ http://etd.lsu.edu/docs/available/etd-04102014-144149/ en unrestricted I hereby certify that, if appropriate, I have obtained and attached herein a written permission statement from the owner(s) of each third party copyrighted matter to be included in my thesis, dissertation, or project report, allowing distribution as specified below. I certify that the version I submitted is the same as that approved by my advisory committee. I hereby grant to LSU or its agents the non-exclusive license to archive and make accessible, under the conditions specified below and in appropriate University policies, my thesis, dissertation, or project report in whole or in part in all forms of media, now or hereafter known. I retain all other ownership rights to the copyright of the thesis, dissertation or project report. I also retain the right to use in future works (such as articles or books) all or part of this thesis, dissertation, or project report.
collection NDLTD
language en
format Others
sources NDLTD
topic Chemical Engineering
spellingShingle Chemical Engineering
Thomas, Michael C
Nonlinear Data Driven Techniques for Process Monitoring
description The goal of this research is to develop process monitoring technology capable of taking advantage of the large stores of data accumulating in modern chemical plants. There is demand for new techniques for the monitoring of non-linear topology and behavior, and this research presents a topological preservation method for process monitoring using Self Organizing Maps (SOM). The novel architecture presented adapts SOM to a full spectrum of process monitoring tasks including fault detection, fault identification, fault diagnosis, and soft sensing. The key innovation of the new technique is its use of multiple SOM (MSOM) in the data modeling process as well as the use of a Gaussian Mixture Model (GMM) to model the probability density function of classes of data. For comparison, a linear process monitoring technique based on Principal Component Analysis (PCA) is also used to demonstrate the improvements SOM offers. Data for the computational experiments was generated using a simulation of the Tennessee Eastman process (TEP) created in Simulink by (Ricker 1996). Previous studies focus on step changes from normal operations, but this work adds operating regimes with time dependent dynamics not previously considered with a SOM. Results show that MSOM improves upon both linear PCA as well as the standard SOM technique using one map for fault diagnosis, and also shows a superior ability to isolate which variables in the data are responsible for the faulty condition. With respect to soft sensing, SOM and MSOM modeled the compositions equally well, showing that no information was lost in dividing the map representation of process data. Future research will attempt to validate the technique on a real chemical process.
author2 Romagnoli, Jose A
author_facet Romagnoli, Jose A
Thomas, Michael C
author Thomas, Michael C
author_sort Thomas, Michael C
title Nonlinear Data Driven Techniques for Process Monitoring
title_short Nonlinear Data Driven Techniques for Process Monitoring
title_full Nonlinear Data Driven Techniques for Process Monitoring
title_fullStr Nonlinear Data Driven Techniques for Process Monitoring
title_full_unstemmed Nonlinear Data Driven Techniques for Process Monitoring
title_sort nonlinear data driven techniques for process monitoring
publisher LSU
publishDate 2014
url http://etd.lsu.edu/docs/available/etd-04102014-144149/
work_keys_str_mv AT thomasmichaelc nonlineardatadriventechniquesforprocessmonitoring
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