Intelligent monitoring system of unburned carbon of fly ash for coal fired power plant boiler

Coal fired power plant becoming preferable power plant type to support electricity demand mainly in Asia due to stable coal price and low maintenance. However, most coal fired plant operator struggle with condition where coal undergo incomplete combustion and produced unburned carbon where can be fo...

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Main Authors: Gurusingam Pogganeswaran, Basim Ismail Firas, Gunnasegaran Prem, Sundaram Taneshwaren
Format: Article
Language:English
Published: EDP Sciences 2017-01-01
Series:MATEC Web of Conferences
Online Access:https://doi.org/10.1051/matecconf/201713102003
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spelling doaj-ed722fecfefe484fab03715e4179756a2021-03-02T10:57:16ZengEDP SciencesMATEC Web of Conferences2261-236X2017-01-011310200310.1051/matecconf/201713102003matecconf_ses2017_02003Intelligent monitoring system of unburned carbon of fly ash for coal fired power plant boilerGurusingam PogganeswaranBasim Ismail FirasGunnasegaran PremSundaram TaneshwarenCoal fired power plant becoming preferable power plant type to support electricity demand mainly in Asia due to stable coal price and low maintenance. However, most coal fired plant operator struggle with condition where coal undergo incomplete combustion and produced unburned carbon where can be found in ashes especially in fly ash. Higher percentage of unburned carbon in fly ash reflects the lower efficiency of furnace and contributes to financial loses for plant operators. This problem also leads to technical issues such as slagging and clinkering and further reduces the efficiency of furnace. The plant operator determines the amount of unburned carbon by using conventional method and this proves be a challenge to identify and rectify the problem on day basis due time constraint to obtain results of unburned carbon. Thus in this paper, best Artificial Neural Network model was derived to develop intelligent monitoring system to predict unburned carbon level on more daily basis. By this model, the power producer can predict the unburned carbon level by using data in power plant to predict the unburned carbon level in short period of time.https://doi.org/10.1051/matecconf/201713102003
collection DOAJ
language English
format Article
sources DOAJ
author Gurusingam Pogganeswaran
Basim Ismail Firas
Gunnasegaran Prem
Sundaram Taneshwaren
spellingShingle Gurusingam Pogganeswaran
Basim Ismail Firas
Gunnasegaran Prem
Sundaram Taneshwaren
Intelligent monitoring system of unburned carbon of fly ash for coal fired power plant boiler
MATEC Web of Conferences
author_facet Gurusingam Pogganeswaran
Basim Ismail Firas
Gunnasegaran Prem
Sundaram Taneshwaren
author_sort Gurusingam Pogganeswaran
title Intelligent monitoring system of unburned carbon of fly ash for coal fired power plant boiler
title_short Intelligent monitoring system of unburned carbon of fly ash for coal fired power plant boiler
title_full Intelligent monitoring system of unburned carbon of fly ash for coal fired power plant boiler
title_fullStr Intelligent monitoring system of unburned carbon of fly ash for coal fired power plant boiler
title_full_unstemmed Intelligent monitoring system of unburned carbon of fly ash for coal fired power plant boiler
title_sort intelligent monitoring system of unburned carbon of fly ash for coal fired power plant boiler
publisher EDP Sciences
series MATEC Web of Conferences
issn 2261-236X
publishDate 2017-01-01
description Coal fired power plant becoming preferable power plant type to support electricity demand mainly in Asia due to stable coal price and low maintenance. However, most coal fired plant operator struggle with condition where coal undergo incomplete combustion and produced unburned carbon where can be found in ashes especially in fly ash. Higher percentage of unburned carbon in fly ash reflects the lower efficiency of furnace and contributes to financial loses for plant operators. This problem also leads to technical issues such as slagging and clinkering and further reduces the efficiency of furnace. The plant operator determines the amount of unburned carbon by using conventional method and this proves be a challenge to identify and rectify the problem on day basis due time constraint to obtain results of unburned carbon. Thus in this paper, best Artificial Neural Network model was derived to develop intelligent monitoring system to predict unburned carbon level on more daily basis. By this model, the power producer can predict the unburned carbon level by using data in power plant to predict the unburned carbon level in short period of time.
url https://doi.org/10.1051/matecconf/201713102003
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