Studies on non-linear dynamic process monitoring
Owing to the numerous benefits of process monitoring, the subject has attracted a lot of attention in the last two decades. Process monitoring is an art of identifying abnormal deviations in a process from the normal operating condition using various techniques. Generally, the development of these m...
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ndltd-CRANFIELD1-oai-dspace.lib.cranfield.ac.uk-1826-74552013-04-19T15:26:00ZStudies on non-linear dynamic process monitoringIketubosin, P. P.Owing to the numerous benefits of process monitoring, the subject has attracted a lot of attention in the last two decades. Process monitoring is an art of identifying abnormal deviations in a process from the normal operating condition using various techniques. Generally, the development of these monitoring techniques is geared towards applying these techniques to industrial processes. In addition, most industrial processes are dynamic and non-linear in nature. Therefore, in the development of the monitoring algorithms, the dynamic as well as the non-linear properties of the plant should be taken into consideration. Process monitoring techniques like the Principal Component Analysis (PCA) and Partial Least Squares (PLS) regression analysis were developed based on the assumption that the process data is normally distributed. Nevertheless, this assumption of normality is invalid for most industrial processes due to the non-linear nature of these plants. For such processes, the distribution of the process variables in general will be non-Gaussian, therefore making the widely applied PCA and PLS approaches inappropriate for the monitoring of plants. To address this limitation of the PCA and PLS for Dynamic processes, the Dynamic PCA (DPCA) and dynamic PLS (DPLS) approaches were developed. The challenge of efficiently monitoring process plants with dynamic and non-linear characteristics is the motivation for this study. The overall aim of this study is to develop process monitoring strategies that are able to take the dynamic and nonlinear properties of the plant into account. With these strategies, more efficient performance monitoring of the plant can be achieved. Cont/d.Cranfield UniversityCao, Yi2012-07-30T11:12:10Z2012-07-30T11:12:10Z2011-07Thesis or dissertationDoctoralPhDhttp://dspace.lib.cranfield.ac.uk/handle/1826/7455en© Cranfield University 2011. All rights reserved. No part of this publication may be reproduced without the written permission of the copyright owner. |
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NDLTD |
language |
en |
sources |
NDLTD |
description |
Owing to the numerous benefits of process monitoring, the subject has attracted a
lot of attention in the last two decades. Process monitoring is an art of identifying
abnormal deviations in a process from the normal operating condition using various
techniques. Generally, the development of these monitoring techniques is geared towards
applying these techniques to industrial processes. In addition, most industrial
processes are dynamic and non-linear in nature. Therefore, in the development of
the monitoring algorithms, the dynamic as well as the non-linear properties of the
plant should be taken into consideration.
Process monitoring techniques like the Principal Component Analysis (PCA) and
Partial Least Squares (PLS) regression analysis were developed based on the assumption
that the process data is normally distributed. Nevertheless, this assumption
of normality is invalid for most industrial processes due to the non-linear nature of
these plants. For such processes, the distribution of the process variables in general
will be non-Gaussian, therefore making the widely applied PCA and PLS approaches
inappropriate for the monitoring of plants. To address this limitation of the PCA
and PLS for Dynamic processes, the Dynamic PCA (DPCA) and dynamic PLS
(DPLS) approaches were developed.
The challenge of efficiently monitoring process plants with dynamic and non-linear
characteristics is the motivation for this study. The overall aim of this study is to
develop process monitoring strategies that are able to take the dynamic and nonlinear
properties of the plant into account. With these strategies, more efficient
performance monitoring of the plant can be achieved. Cont/d. |
author2 |
Cao, Yi |
author_facet |
Cao, Yi Iketubosin, P. P. |
author |
Iketubosin, P. P. |
spellingShingle |
Iketubosin, P. P. Studies on non-linear dynamic process monitoring |
author_sort |
Iketubosin, P. P. |
title |
Studies on non-linear dynamic process monitoring |
title_short |
Studies on non-linear dynamic process monitoring |
title_full |
Studies on non-linear dynamic process monitoring |
title_fullStr |
Studies on non-linear dynamic process monitoring |
title_full_unstemmed |
Studies on non-linear dynamic process monitoring |
title_sort |
studies on non-linear dynamic process monitoring |
publisher |
Cranfield University |
publishDate |
2012 |
url |
http://dspace.lib.cranfield.ac.uk/handle/1826/7455 |
work_keys_str_mv |
AT iketubosinpp studiesonnonlineardynamicprocessmonitoring |
_version_ |
1716581532422897664 |