A hybrid genetic algorithm and linear regression for prediction of NOx emission in power generation plant

This paper presents a new approach of gas emission estimation in power generation plant using a hybrid Genetic Algorithm (GA) and Linear Regression (LR) (denoted as GA-LR). The LR is one of the approaches that model the relationship between an output dependant variable, y, with one or more explanato...

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Main Authors: Bunyamin M.A., Yap K.S., Aziz N.L.A.A., Tiong S.K., Wong S.Y., Kamal M.F.
Other Authors: 55812855600
Format: Conference paper
Published: Institute of Physics Publishing 2023
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Institution: Universiti Tenaga Nasional
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spelling my.uniten.dspace-301712023-12-29T15:45:13Z A hybrid genetic algorithm and linear regression for prediction of NOx emission in power generation plant Bunyamin M.A. Yap K.S. Aziz N.L.A.A. Tiong S.K. Wong S.Y. Kamal M.F. 55812855600 24448864400 55812399400 15128307800 55812054100 55812401300 Estimation Gas emissions Genetic algorithms Nitrogen oxides Optimal systems Accurate prediction Emission estimation Explanatory variables Hybrid genetic algorithms Model parameters Optimal solutions Power generation plants Prediction errors comparative study electricity generation error analysis estimation method genetic algorithm industrial emission numerical model optimization parameterization regression analysis Forecasting This paper presents a new approach of gas emission estimation in power generation plant using a hybrid Genetic Algorithm (GA) and Linear Regression (LR) (denoted as GA-LR). The LR is one of the approaches that model the relationship between an output dependant variable, y, with one or more explanatory variables or inputs which denoted as x. It is able to estimate unknown model parameters from inputs data. On the other hand, GA is used to search for the optimal solution until specific criteria is met causing termination. These results include providing good solutions as compared to one optimal solution for complex problems. Thus, GA is widely used as feature selection. By combining the LR and GA (GA-LR), this new technique is able to select the most important input features as well as giving more accurate prediction by minimizing the prediction errors. This new technique is able to produce more consistent of gas emission estimation, which may help in reducing population to the environment. In this paper, the study's interest is focused on nitrous oxides (NOx) prediction. The results of the experiment are encouraging. � Published under licence by IOP Publishing Ltd. Final 2023-12-29T07:45:13Z 2023-12-29T07:45:13Z 2013 Conference paper 10.1088/1755-1315/16/1/012101 2-s2.0-84881088317 https://www.scopus.com/inward/record.uri?eid=2-s2.0-84881088317&doi=10.1088%2f1755-1315%2f16%2f1%2f012101&partnerID=40&md5=49efb57d7428274ab7a728d8c053b1f3 https://irepository.uniten.edu.my/handle/123456789/30171 16 1 12101 All Open Access; Gold Open Access Institute of Physics Publishing Scopus
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
topic Estimation
Gas emissions
Genetic algorithms
Nitrogen oxides
Optimal systems
Accurate prediction
Emission estimation
Explanatory variables
Hybrid genetic algorithms
Model parameters
Optimal solutions
Power generation plants
Prediction errors
comparative study
electricity generation
error analysis
estimation method
genetic algorithm
industrial emission
numerical model
optimization
parameterization
regression analysis
Forecasting
spellingShingle Estimation
Gas emissions
Genetic algorithms
Nitrogen oxides
Optimal systems
Accurate prediction
Emission estimation
Explanatory variables
Hybrid genetic algorithms
Model parameters
Optimal solutions
Power generation plants
Prediction errors
comparative study
electricity generation
error analysis
estimation method
genetic algorithm
industrial emission
numerical model
optimization
parameterization
regression analysis
Forecasting
Bunyamin M.A.
Yap K.S.
Aziz N.L.A.A.
Tiong S.K.
Wong S.Y.
Kamal M.F.
A hybrid genetic algorithm and linear regression for prediction of NOx emission in power generation plant
description This paper presents a new approach of gas emission estimation in power generation plant using a hybrid Genetic Algorithm (GA) and Linear Regression (LR) (denoted as GA-LR). The LR is one of the approaches that model the relationship between an output dependant variable, y, with one or more explanatory variables or inputs which denoted as x. It is able to estimate unknown model parameters from inputs data. On the other hand, GA is used to search for the optimal solution until specific criteria is met causing termination. These results include providing good solutions as compared to one optimal solution for complex problems. Thus, GA is widely used as feature selection. By combining the LR and GA (GA-LR), this new technique is able to select the most important input features as well as giving more accurate prediction by minimizing the prediction errors. This new technique is able to produce more consistent of gas emission estimation, which may help in reducing population to the environment. In this paper, the study's interest is focused on nitrous oxides (NOx) prediction. The results of the experiment are encouraging. � Published under licence by IOP Publishing Ltd.
author2 55812855600
author_facet 55812855600
Bunyamin M.A.
Yap K.S.
Aziz N.L.A.A.
Tiong S.K.
Wong S.Y.
Kamal M.F.
format Conference paper
author Bunyamin M.A.
Yap K.S.
Aziz N.L.A.A.
Tiong S.K.
Wong S.Y.
Kamal M.F.
author_sort Bunyamin M.A.
title A hybrid genetic algorithm and linear regression for prediction of NOx emission in power generation plant
title_short A hybrid genetic algorithm and linear regression for prediction of NOx emission in power generation plant
title_full A hybrid genetic algorithm and linear regression for prediction of NOx emission in power generation plant
title_fullStr A hybrid genetic algorithm and linear regression for prediction of NOx emission in power generation plant
title_full_unstemmed A hybrid genetic algorithm and linear regression for prediction of NOx emission in power generation plant
title_sort hybrid genetic algorithm and linear regression for prediction of nox emission in power generation plant
publisher Institute of Physics Publishing
publishDate 2023
_version_ 1806426257957584896