Multidimensional Minimization Training Algorithms for Steam Boiler Drum Level Trip Using Artificial Intelligence Monitoring System

This paper deals with the Fault Detection and Diagnosis of steam boiler drum low level by artificial Neural Networks using two different interpretation algorithms. The BFGS quasi-Newton (TRAINBFG) and Levenberg-Marquart (TRAINLV) have been adopted as training algorithms of the neural network model....

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Main Authors: Ismail, F. B., Al-Kayiem, Hussain H.
Format: Article
Published: IEEE Catalog Number CFP1066c-CDR 2010
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spelling my.utp.eprints.42152017-01-19T08:23:57Z Multidimensional Minimization Training Algorithms for Steam Boiler Drum Level Trip Using Artificial Intelligence Monitoring System Ismail, F. B. Al-Kayiem, Hussain H. TJ Mechanical engineering and machinery This paper deals with the Fault Detection and Diagnosis of steam boiler drum low level by artificial Neural Networks using two different interpretation algorithms. The BFGS quasi-Newton (TRAINBFG) and Levenberg-Marquart (TRAINLV) have been adopted as training algorithms of the neural network model. Real site data was captured from a 3x700MWatt coal-fired thermal power plant in Perak state - Malaysia. Among three power units in the plant, the boiler drum data of unit3 was considered. The selection of the relevant variables for the neural networks is based on merging between theoretical analysis base and the plant operator experience. The merging procedure is described in the paper. Results are obtained from one hidden layer neural network and two hidden layers neural network structures, for both adopted algorithms. Comparisons have been made between the results from the two algorithms based on the Root Mean Square Error. The one hidden layer with one neuron using BFG training algorithm provides the best optimum neural network structure. Keywords Steam Boiler, Drum Level Trip, Fault Detection and Diagnosis(FDD), Artificial Neural Networks (ANN). IEEE Catalog Number CFP1066c-CDR 2010-06-17 Article PeerReviewed application/pdf http://eprints.utp.edu.my/4215/1/cookiedetectresponse.jsp http://ieeexplore.ieee.org/xpls Ismail, F. B. and Al-Kayiem, Hussain H. (2010) Multidimensional Minimization Training Algorithms for Steam Boiler Drum Level Trip Using Artificial Intelligence Monitoring System. Proceedings of the 3rd International Conference on Intelligent and Advanced Systems (ICIAS2010) . ISSN ISBN:978-1-4244-6624-5 http://eprints.utp.edu.my/4215/
institution Universiti Teknologi Petronas
building UTP Resource Centre
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Petronas
content_source UTP Institutional Repository
url_provider http://eprints.utp.edu.my/
topic TJ Mechanical engineering and machinery
spellingShingle TJ Mechanical engineering and machinery
Ismail, F. B.
Al-Kayiem, Hussain H.
Multidimensional Minimization Training Algorithms for Steam Boiler Drum Level Trip Using Artificial Intelligence Monitoring System
description This paper deals with the Fault Detection and Diagnosis of steam boiler drum low level by artificial Neural Networks using two different interpretation algorithms. The BFGS quasi-Newton (TRAINBFG) and Levenberg-Marquart (TRAINLV) have been adopted as training algorithms of the neural network model. Real site data was captured from a 3x700MWatt coal-fired thermal power plant in Perak state - Malaysia. Among three power units in the plant, the boiler drum data of unit3 was considered. The selection of the relevant variables for the neural networks is based on merging between theoretical analysis base and the plant operator experience. The merging procedure is described in the paper. Results are obtained from one hidden layer neural network and two hidden layers neural network structures, for both adopted algorithms. Comparisons have been made between the results from the two algorithms based on the Root Mean Square Error. The one hidden layer with one neuron using BFG training algorithm provides the best optimum neural network structure. Keywords Steam Boiler, Drum Level Trip, Fault Detection and Diagnosis(FDD), Artificial Neural Networks (ANN).
format Article
author Ismail, F. B.
Al-Kayiem, Hussain H.
author_facet Ismail, F. B.
Al-Kayiem, Hussain H.
author_sort Ismail, F. B.
title Multidimensional Minimization Training Algorithms for Steam Boiler Drum Level Trip Using Artificial Intelligence Monitoring System
title_short Multidimensional Minimization Training Algorithms for Steam Boiler Drum Level Trip Using Artificial Intelligence Monitoring System
title_full Multidimensional Minimization Training Algorithms for Steam Boiler Drum Level Trip Using Artificial Intelligence Monitoring System
title_fullStr Multidimensional Minimization Training Algorithms for Steam Boiler Drum Level Trip Using Artificial Intelligence Monitoring System
title_full_unstemmed Multidimensional Minimization Training Algorithms for Steam Boiler Drum Level Trip Using Artificial Intelligence Monitoring System
title_sort multidimensional minimization training algorithms for steam boiler drum level trip using artificial intelligence monitoring system
publisher IEEE Catalog Number CFP1066c-CDR
publishDate 2010
url http://eprints.utp.edu.my/4215/1/cookiedetectresponse.jsp
http://ieeexplore.ieee.org/xpls
http://eprints.utp.edu.my/4215/
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score 13.19449