Intelligent Prediction of Clinker Formation Condition for Steam Boiler Tubes Using Artificial Neural Network

Ash, as one of the by-product of combustion either accumulates onto boiler tubes as slag or is collected by electrostatic precipitators attached to the backend of the boiler. Flue gas will transport these ash particles either to the inner surfaces of the boiler or to the dust collecting facilities a...

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Main Authors: Firas Basim Ismail, Yeo Kee Wei, Noor Fazreen Ahmad Fuzi
Format: Article
Language:English
Published: EDP Sciences 2019-01-01
Series:MATEC Web of Conferences
Online Access:https://doi.org/10.1051/matecconf/201925506007
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spelling doaj-795e4553e44a406ab0f275126ab86e792021-02-02T04:31:11ZengEDP SciencesMATEC Web of Conferences2261-236X2019-01-012550600710.1051/matecconf/201925506007matecconf_eaaic2018_06007Intelligent Prediction of Clinker Formation Condition for Steam Boiler Tubes Using Artificial Neural NetworkFiras Basim Ismail0Yeo Kee Wei1Noor Fazreen Ahmad Fuzi2Institute of Power Generation, Faculty of Mechanical Engineering, Universiti Tenaga NasionalInstitute of Power Generation, Faculty of Mechanical Engineering, Universiti Tenaga NasionalInstitute of Power Generation, Faculty of Mechanical Engineering, Universiti Tenaga NasionalAsh, as one of the by-product of combustion either accumulates onto boiler tubes as slag or is collected by electrostatic precipitators attached to the backend of the boiler. Flue gas will transport these ash particles either to the inner surfaces of the boiler or to the dust collecting facilities at the backend of the boiler. Sintered ash deposits formed in the radiant section of the boiler are known as clinkers and they contribute to a wide variety of problems to the boiler. Preventative measures to combat clinker formation is in dire need to the energy sector. In this study, a prediction model using real plan data was developed for detection of clinker formation conditions. Several variations of Artificial Neural Networks were tried and test, with emphasis given on the feed-forward neural network, cascade neural network and recurrent neural network. In addition, sensitivity analysis was also conducted to determine the influence of random input variables to their respective response variables. The Tornado Diagram is selected as the method to determine the most influential parameter for clinker formation. It is expected that the Recurrent Neural Network prediction model and the identified most influential input parameter for clinker formation will assist operators in decision making for the maintenance of boilers.https://doi.org/10.1051/matecconf/201925506007
collection DOAJ
language English
format Article
sources DOAJ
author Firas Basim Ismail
Yeo Kee Wei
Noor Fazreen Ahmad Fuzi
spellingShingle Firas Basim Ismail
Yeo Kee Wei
Noor Fazreen Ahmad Fuzi
Intelligent Prediction of Clinker Formation Condition for Steam Boiler Tubes Using Artificial Neural Network
MATEC Web of Conferences
author_facet Firas Basim Ismail
Yeo Kee Wei
Noor Fazreen Ahmad Fuzi
author_sort Firas Basim Ismail
title Intelligent Prediction of Clinker Formation Condition for Steam Boiler Tubes Using Artificial Neural Network
title_short Intelligent Prediction of Clinker Formation Condition for Steam Boiler Tubes Using Artificial Neural Network
title_full Intelligent Prediction of Clinker Formation Condition for Steam Boiler Tubes Using Artificial Neural Network
title_fullStr Intelligent Prediction of Clinker Formation Condition for Steam Boiler Tubes Using Artificial Neural Network
title_full_unstemmed Intelligent Prediction of Clinker Formation Condition for Steam Boiler Tubes Using Artificial Neural Network
title_sort intelligent prediction of clinker formation condition for steam boiler tubes using artificial neural network
publisher EDP Sciences
series MATEC Web of Conferences
issn 2261-236X
publishDate 2019-01-01
description Ash, as one of the by-product of combustion either accumulates onto boiler tubes as slag or is collected by electrostatic precipitators attached to the backend of the boiler. Flue gas will transport these ash particles either to the inner surfaces of the boiler or to the dust collecting facilities at the backend of the boiler. Sintered ash deposits formed in the radiant section of the boiler are known as clinkers and they contribute to a wide variety of problems to the boiler. Preventative measures to combat clinker formation is in dire need to the energy sector. In this study, a prediction model using real plan data was developed for detection of clinker formation conditions. Several variations of Artificial Neural Networks were tried and test, with emphasis given on the feed-forward neural network, cascade neural network and recurrent neural network. In addition, sensitivity analysis was also conducted to determine the influence of random input variables to their respective response variables. The Tornado Diagram is selected as the method to determine the most influential parameter for clinker formation. It is expected that the Recurrent Neural Network prediction model and the identified most influential input parameter for clinker formation will assist operators in decision making for the maintenance of boilers.
url https://doi.org/10.1051/matecconf/201925506007
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AT yeokeewei intelligentpredictionofclinkerformationconditionforsteamboilertubesusingartificialneuralnetwork
AT noorfazreenahmadfuzi intelligentpredictionofclinkerformationconditionforsteamboilertubesusingartificialneuralnetwork
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