The innovation process modelling for ethanol gas sensing using artificial neural network / Muhammad Afiq Wazini Jemani ... [et al.]

Ethanol gas is one of the most common sources of pollution in the majority of installation and emission units, and it can be toxic if overexposed. A precautionary measure to control this pollutant such as a gas sensor may be designed to limit the amount of ethanol released into the air. The performa...

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Main Authors: Jemani, Muhammad Afiq Wazini, Inderan, Vicinisvarri, Senin, Syahrul Fithry, Isa, Norain, Lee, Hooi Ling
Format: Conference or Workshop Item
Language:en
Published: 2021
Subjects:
Online Access:https://ir.uitm.edu.my/id/eprint/56821/1/56821.pdf
https://ir.uitm.edu.my/id/eprint/56821/
https://ispike2021.uitm.edu.my/
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author Jemani, Muhammad Afiq Wazini
Inderan, Vicinisvarri
Senin, Syahrul Fithry
Isa, Norain
Lee, Hooi Ling
author_facet Jemani, Muhammad Afiq Wazini
Inderan, Vicinisvarri
Senin, Syahrul Fithry
Isa, Norain
Lee, Hooi Ling
author_sort Jemani, Muhammad Afiq Wazini
building Tun Abdul Razak Library
collection Institutional Repository
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
continent Asia
country Malaysia
description Ethanol gas is one of the most common sources of pollution in the majority of installation and emission units, and it can be toxic if overexposed. A precautionary measure to control this pollutant such as a gas sensor may be designed to limit the amount of ethanol released into the air. The performance of a particular gas sensor is mainly dependent on the operating temperature. SnO2 is one of the most used sensor materials in ethanol gas sensors. Although the host material of the sensor is the same, doping with different metals often resulted in different response values at specific operating temperatures. Hence, this research successfully develops a process modelling using Artificial Neural Network (ANN) that can predict the response of different doped SnO2 towards ethanol gas at different temperatures. In this context, ANN is an artificial program that can create a linear and non-linear model without making any assumptions. Three input neurons which are time, temperature and concentration of target gas were applied with one output neuron, which is the response of the sensor. The optimal numbers of hidden layers were achieved by the trial-and-error concept. Four models were developed which involve undoped SnO2, cobalt, nickel and iron-doped SnO2. For the method involved, each of the network structures of the model was built with two hidden layers. Training rule and transfer function of Levenberg-Marquardt (trainlm) and tangent sigmoid (TanSig) were used. The mean square error (MSE) performance plots and coefficient of determination (R2) graphs were observed to evaluate the performance of the ANN model developed, where for all results obtained the value ranged from 0.0-0.1 for MSE and performance plots. The finding shows that the constructed ANN model can produce a decent recognition. This novel process modelling is highly demanding in controlling ethanol gas pollution from industrial activities.
format Conference or Workshop Item
id my.uitm.ir-56821
institution Universiti Teknologi Mara
language en
publishDate 2021
record_format eprints
spelling my.uitm.ir-568212023-03-12T23:45:10Z https://ir.uitm.edu.my/id/eprint/56821/ The innovation process modelling for ethanol gas sensing using artificial neural network / Muhammad Afiq Wazini Jemani ... [et al.] Jemani, Muhammad Afiq Wazini Inderan, Vicinisvarri Senin, Syahrul Fithry Isa, Norain Lee, Hooi Ling QD Chemistry Extraction (Chemistry) Ethanol gas is one of the most common sources of pollution in the majority of installation and emission units, and it can be toxic if overexposed. A precautionary measure to control this pollutant such as a gas sensor may be designed to limit the amount of ethanol released into the air. The performance of a particular gas sensor is mainly dependent on the operating temperature. SnO2 is one of the most used sensor materials in ethanol gas sensors. Although the host material of the sensor is the same, doping with different metals often resulted in different response values at specific operating temperatures. Hence, this research successfully develops a process modelling using Artificial Neural Network (ANN) that can predict the response of different doped SnO2 towards ethanol gas at different temperatures. In this context, ANN is an artificial program that can create a linear and non-linear model without making any assumptions. Three input neurons which are time, temperature and concentration of target gas were applied with one output neuron, which is the response of the sensor. The optimal numbers of hidden layers were achieved by the trial-and-error concept. Four models were developed which involve undoped SnO2, cobalt, nickel and iron-doped SnO2. For the method involved, each of the network structures of the model was built with two hidden layers. Training rule and transfer function of Levenberg-Marquardt (trainlm) and tangent sigmoid (TanSig) were used. The mean square error (MSE) performance plots and coefficient of determination (R2) graphs were observed to evaluate the performance of the ANN model developed, where for all results obtained the value ranged from 0.0-0.1 for MSE and performance plots. The finding shows that the constructed ANN model can produce a decent recognition. This novel process modelling is highly demanding in controlling ethanol gas pollution from industrial activities. 2021 Conference or Workshop Item PeerReviewed text en https://ir.uitm.edu.my/id/eprint/56821/1/56821.pdf The innovation process modelling for ethanol gas sensing using artificial neural network / Muhammad Afiq Wazini Jemani ... [et al.]. (2021) In: International Exhibition & Symposium on Productivity, Innovation, Knowledge, Education & Design (i-SPiKe 2021). (Submitted) https://ispike2021.uitm.edu.my/
spellingShingle QD Chemistry
Extraction (Chemistry)
Jemani, Muhammad Afiq Wazini
Inderan, Vicinisvarri
Senin, Syahrul Fithry
Isa, Norain
Lee, Hooi Ling
The innovation process modelling for ethanol gas sensing using artificial neural network / Muhammad Afiq Wazini Jemani ... [et al.]
title The innovation process modelling for ethanol gas sensing using artificial neural network / Muhammad Afiq Wazini Jemani ... [et al.]
title_full The innovation process modelling for ethanol gas sensing using artificial neural network / Muhammad Afiq Wazini Jemani ... [et al.]
title_fullStr The innovation process modelling for ethanol gas sensing using artificial neural network / Muhammad Afiq Wazini Jemani ... [et al.]
title_full_unstemmed The innovation process modelling for ethanol gas sensing using artificial neural network / Muhammad Afiq Wazini Jemani ... [et al.]
title_short The innovation process modelling for ethanol gas sensing using artificial neural network / Muhammad Afiq Wazini Jemani ... [et al.]
title_sort innovation process modelling for ethanol gas sensing using artificial neural network / muhammad afiq wazini jemani ... [et al.]
topic QD Chemistry
Extraction (Chemistry)
url https://ir.uitm.edu.my/id/eprint/56821/1/56821.pdf
https://ir.uitm.edu.my/id/eprint/56821/
https://ispike2021.uitm.edu.my/
url_provider http://ir.uitm.edu.my/