Diagnostic monitoring of dynamic systems using artificial immune systems

Thesis (MScEng (Process Engineering))--University of Stellenbosch, 2006. === The natural immune system is an exceptional pattern recognition system based on memory and learning that is capable of detecting both known and unknown pathogens. Artificial immune systems (AIS) employ some of the functio...

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Main Author: Maree, Charl
Other Authors: Aldrich, C.
Format: Others
Language:en
Published: Stellenbosch : University of Stellenbosch 2008
Subjects:
Online Access:http://hdl.handle.net/10019.1/1780
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spelling ndltd-netd.ac.za-oai-union.ndltd.org-sun-oai-scholar.sun.ac.za-10019.1-17802016-01-29T04:03:43Z Diagnostic monitoring of dynamic systems using artificial immune systems Maree, Charl Aldrich, C. University of Stellenbosch. Faculty of Engineering. Dept. of Process Engineering. Artificial intelligence -- Modelliing Intelligent systems Dissertations -- Process engineering Theses -- Process engineering Immune system -- Computer simulation Computational intelligence Evolutionary computation Chemical process control Fault location (Engineering) Thesis (MScEng (Process Engineering))--University of Stellenbosch, 2006. The natural immune system is an exceptional pattern recognition system based on memory and learning that is capable of detecting both known and unknown pathogens. Artificial immune systems (AIS) employ some of the functionalities of the natural immune system in detecting change in dynamic process systems. The emerging field of artificial immune systems has enormous potential in the application of fault detection systems in process engineering. This thesis aims to firstly familiarise the reader with the various current methods in the field of fault detection and identification. Secondly, the notion of artificial immune systems is to be introduced and explained. Finally, this thesis aims to investigate the performance of AIS on data gathered from simulated case studies both with and without noise. Three different methods of generating detectors are used to monitor various different processes for anomalous events. These are: (1) Random Generation of detectors, (2) Convex Hulls, (3) The Hypercube Vertex Approach. It is found that random generation provides a reasonable rate of detection, while convex hulls fail to achieve the required objectives. The hypercube vertex method achieved the highest detection rate and lowest false alarm rate in all case studies. The hypercube vertex method originates from this project and is the recommended method for use with all real valued systems, with a small number of variables at least. It is found that, in some cases AIS are capable of perfect classification, where 100% of anomalous events are identified and no false alarms are generated. Noise has, expectedly so, some effect on the detection capability on all case studies. The computational cost of the various methods is compared, which concluded that the hypercube vertex method had a higher cost than other methods researched. This increased computational cost is however not exceeding reasonable confines therefore the hypercube vertex method nonetheless remains the chosen method. The thesis concludes with considering AIS’s performance in the comparative criteria for diagnostic methods. It is found that AIS compare well to current methods and that some of their limitations are indeed solved and their abilities surpassed in certain cases. Recommendations are made to future study in the field of AIS. Further the use of the Hypercube Vertex method is highly recommended in real valued scenarios such as Process Engineering. 2008-02-06T09:35:38Z 2010-06-01T08:33:04Z 2008-02-06T09:35:38Z 2010-06-01T08:33:04Z 2006-12 Thesis http://hdl.handle.net/10019.1/1780 en University of Stellenbosch 5478210 bytes application/pdf Stellenbosch : University of Stellenbosch
collection NDLTD
language en
format Others
sources NDLTD
topic Artificial intelligence -- Modelliing
Intelligent systems
Dissertations -- Process engineering
Theses -- Process engineering
Immune system -- Computer simulation
Computational intelligence
Evolutionary computation
Chemical process control
Fault location (Engineering)
spellingShingle Artificial intelligence -- Modelliing
Intelligent systems
Dissertations -- Process engineering
Theses -- Process engineering
Immune system -- Computer simulation
Computational intelligence
Evolutionary computation
Chemical process control
Fault location (Engineering)
Maree, Charl
Diagnostic monitoring of dynamic systems using artificial immune systems
description Thesis (MScEng (Process Engineering))--University of Stellenbosch, 2006. === The natural immune system is an exceptional pattern recognition system based on memory and learning that is capable of detecting both known and unknown pathogens. Artificial immune systems (AIS) employ some of the functionalities of the natural immune system in detecting change in dynamic process systems. The emerging field of artificial immune systems has enormous potential in the application of fault detection systems in process engineering. This thesis aims to firstly familiarise the reader with the various current methods in the field of fault detection and identification. Secondly, the notion of artificial immune systems is to be introduced and explained. Finally, this thesis aims to investigate the performance of AIS on data gathered from simulated case studies both with and without noise. Three different methods of generating detectors are used to monitor various different processes for anomalous events. These are: (1) Random Generation of detectors, (2) Convex Hulls, (3) The Hypercube Vertex Approach. It is found that random generation provides a reasonable rate of detection, while convex hulls fail to achieve the required objectives. The hypercube vertex method achieved the highest detection rate and lowest false alarm rate in all case studies. The hypercube vertex method originates from this project and is the recommended method for use with all real valued systems, with a small number of variables at least. It is found that, in some cases AIS are capable of perfect classification, where 100% of anomalous events are identified and no false alarms are generated. Noise has, expectedly so, some effect on the detection capability on all case studies. The computational cost of the various methods is compared, which concluded that the hypercube vertex method had a higher cost than other methods researched. This increased computational cost is however not exceeding reasonable confines therefore the hypercube vertex method nonetheless remains the chosen method. The thesis concludes with considering AIS’s performance in the comparative criteria for diagnostic methods. It is found that AIS compare well to current methods and that some of their limitations are indeed solved and their abilities surpassed in certain cases. Recommendations are made to future study in the field of AIS. Further the use of the Hypercube Vertex method is highly recommended in real valued scenarios such as Process Engineering.
author2 Aldrich, C.
author_facet Aldrich, C.
Maree, Charl
author Maree, Charl
author_sort Maree, Charl
title Diagnostic monitoring of dynamic systems using artificial immune systems
title_short Diagnostic monitoring of dynamic systems using artificial immune systems
title_full Diagnostic monitoring of dynamic systems using artificial immune systems
title_fullStr Diagnostic monitoring of dynamic systems using artificial immune systems
title_full_unstemmed Diagnostic monitoring of dynamic systems using artificial immune systems
title_sort diagnostic monitoring of dynamic systems using artificial immune systems
publisher Stellenbosch : University of Stellenbosch
publishDate 2008
url http://hdl.handle.net/10019.1/1780
work_keys_str_mv AT mareecharl diagnosticmonitoringofdynamicsystemsusingartificialimmunesystems
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