Analysis of Boiler Operational Variables Prior to Tube Leakage Fault by Artificial Intelligent System

Steam boilers are considered as a core of any steam power plant. Boilers are subjected to various types of trips leading to shut down of the entire plant. The tube leakage is the worse among the common boiler faults, where the shutdown period lasts for around four to five days. This paper describes...

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Main Authors: Al-Kayiem Hussain H., Al-Naimi Firas B. I., Amat Wan N. Bt Wan
Format: Article
Language:English
Published: EDP Sciences 2014-07-01
Series:MATEC Web of Conferences
Online Access:http://dx.doi.org/10.1051/matecconf/20141305004
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spelling doaj-20484536e0194b1cb36139096331e3262021-02-02T01:34:18ZengEDP SciencesMATEC Web of Conferences2261-236X2014-07-01130500410.1051/matecconf/20141305004matecconf_icper2014_05004Analysis of Boiler Operational Variables Prior to Tube Leakage Fault by Artificial Intelligent SystemAl-Kayiem Hussain H.0Al-Naimi Firas B. I.1Amat Wan N. Bt Wan2Universiti Teknologi PETRONASCollege of Engineering, Universiti Tenaga NasionalCollege of Engineering, Universiti Tenaga Nasional Steam boilers are considered as a core of any steam power plant. Boilers are subjected to various types of trips leading to shut down of the entire plant. The tube leakage is the worse among the common boiler faults, where the shutdown period lasts for around four to five days. This paper describes the rules of the Artificial Intelligent Systems to diagnosis the boiler variables prior to tube leakage occurrence. An Intelligent system based on Artificial Neural Network was designed and coded in MATLAB environment. The ANN was trained and validated using real site data acquired from coal fired power plant in Malaysia. Ninety three boiler operational variables were identified for the present investigation based on the plant operator experience. Various neural networks topology combinations were investigated. The results showed that the NN with two hidden layers performed better than one hidden layer using Levenberg-Maquardt training algorithm. Moreover, it was noticed that hyperbolic tangent function for input and output nodes performed better than other activation function types. http://dx.doi.org/10.1051/matecconf/20141305004
collection DOAJ
language English
format Article
sources DOAJ
author Al-Kayiem Hussain H.
Al-Naimi Firas B. I.
Amat Wan N. Bt Wan
spellingShingle Al-Kayiem Hussain H.
Al-Naimi Firas B. I.
Amat Wan N. Bt Wan
Analysis of Boiler Operational Variables Prior to Tube Leakage Fault by Artificial Intelligent System
MATEC Web of Conferences
author_facet Al-Kayiem Hussain H.
Al-Naimi Firas B. I.
Amat Wan N. Bt Wan
author_sort Al-Kayiem Hussain H.
title Analysis of Boiler Operational Variables Prior to Tube Leakage Fault by Artificial Intelligent System
title_short Analysis of Boiler Operational Variables Prior to Tube Leakage Fault by Artificial Intelligent System
title_full Analysis of Boiler Operational Variables Prior to Tube Leakage Fault by Artificial Intelligent System
title_fullStr Analysis of Boiler Operational Variables Prior to Tube Leakage Fault by Artificial Intelligent System
title_full_unstemmed Analysis of Boiler Operational Variables Prior to Tube Leakage Fault by Artificial Intelligent System
title_sort analysis of boiler operational variables prior to tube leakage fault by artificial intelligent system
publisher EDP Sciences
series MATEC Web of Conferences
issn 2261-236X
publishDate 2014-07-01
description Steam boilers are considered as a core of any steam power plant. Boilers are subjected to various types of trips leading to shut down of the entire plant. The tube leakage is the worse among the common boiler faults, where the shutdown period lasts for around four to five days. This paper describes the rules of the Artificial Intelligent Systems to diagnosis the boiler variables prior to tube leakage occurrence. An Intelligent system based on Artificial Neural Network was designed and coded in MATLAB environment. The ANN was trained and validated using real site data acquired from coal fired power plant in Malaysia. Ninety three boiler operational variables were identified for the present investigation based on the plant operator experience. Various neural networks topology combinations were investigated. The results showed that the NN with two hidden layers performed better than one hidden layer using Levenberg-Maquardt training algorithm. Moreover, it was noticed that hyperbolic tangent function for input and output nodes performed better than other activation function types.
url http://dx.doi.org/10.1051/matecconf/20141305004
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