An Efficient Taguchi Approach for the Performance Optimization of Health, Safety, Environment and Ergonomics in Generation Companies
Background: A unique framework for performance optimization of generation companies (GENCOs) based on health, safety, environment, and ergonomics (HSEE) indicators is presented. Methods: To rank this sector of industry, the combination of data envelopment analysis (DEA), principal component analysis...
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doaj-aa08f0a85791486782f7a73b942b43e92020-11-24T22:06:46ZengElsevierSafety and Health at Work2093-79112015-06-0162778410.1016/j.shaw.2014.11.001An Efficient Taguchi Approach for the Performance Optimization of Health, Safety, Environment and Ergonomics in Generation CompaniesAli Azadeh0Mohammad Sheikhalishahi1School of Industrial and Systems Engineering and Center of Excellence for Intelligent Based Experimental Mechanics, College of Engineering, University of Tehran, IranCentre for Industrial Management/Traffic and Infrastructure, KU Leuven, Heverlee, BelgiumBackground: A unique framework for performance optimization of generation companies (GENCOs) based on health, safety, environment, and ergonomics (HSEE) indicators is presented. Methods: To rank this sector of industry, the combination of data envelopment analysis (DEA), principal component analysis (PCA), and Taguchi are used for all branches of GENCOs. These methods are applied in an integrated manner to measure the performance of GENCO. The preferred model between DEA, PCA, and Taguchi is selected based on sensitivity analysis and maximum correlation between rankings. To achieve the stated objectives, noise is introduced into input data. Results: The results show that Taguchi outperforms other methods. Moreover, a comprehensive experiment is carried out to identify the most influential factor for ranking GENCOs. Conclusion: The approach developed in this study could be used for continuous assessment and improvement of GENCO's performance in supplying energy with respect to HSEE factors. The results of such studies would help managers to have better understanding of weak and strong points in terms of HSEE factors.http://www.sciencedirect.com/science/article/pii/S2093791114000948data envelopment analysisgeneration companieshealth, safety, environment, and ergonomicsperformance optimizationTaguchi methods |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ali Azadeh Mohammad Sheikhalishahi |
spellingShingle |
Ali Azadeh Mohammad Sheikhalishahi An Efficient Taguchi Approach for the Performance Optimization of Health, Safety, Environment and Ergonomics in Generation Companies Safety and Health at Work data envelopment analysis generation companies health, safety, environment, and ergonomics performance optimization Taguchi methods |
author_facet |
Ali Azadeh Mohammad Sheikhalishahi |
author_sort |
Ali Azadeh |
title |
An Efficient Taguchi Approach for the Performance Optimization of Health, Safety, Environment and Ergonomics in Generation Companies |
title_short |
An Efficient Taguchi Approach for the Performance Optimization of Health, Safety, Environment and Ergonomics in Generation Companies |
title_full |
An Efficient Taguchi Approach for the Performance Optimization of Health, Safety, Environment and Ergonomics in Generation Companies |
title_fullStr |
An Efficient Taguchi Approach for the Performance Optimization of Health, Safety, Environment and Ergonomics in Generation Companies |
title_full_unstemmed |
An Efficient Taguchi Approach for the Performance Optimization of Health, Safety, Environment and Ergonomics in Generation Companies |
title_sort |
efficient taguchi approach for the performance optimization of health, safety, environment and ergonomics in generation companies |
publisher |
Elsevier |
series |
Safety and Health at Work |
issn |
2093-7911 |
publishDate |
2015-06-01 |
description |
Background: A unique framework for performance optimization of generation companies (GENCOs) based on health, safety, environment, and ergonomics (HSEE) indicators is presented.
Methods: To rank this sector of industry, the combination of data envelopment analysis (DEA), principal component analysis (PCA), and Taguchi are used for all branches of GENCOs. These methods are applied in an integrated manner to measure the performance of GENCO. The preferred model between DEA, PCA, and Taguchi is selected based on sensitivity analysis and maximum correlation between rankings. To achieve the stated objectives, noise is introduced into input data.
Results: The results show that Taguchi outperforms other methods. Moreover, a comprehensive experiment is carried out to identify the most influential factor for ranking GENCOs.
Conclusion: The approach developed in this study could be used for continuous assessment and improvement of GENCO's performance in supplying energy with respect to HSEE factors. The results of such studies would help managers to have better understanding of weak and strong points in terms of HSEE factors. |
topic |
data envelopment analysis generation companies health, safety, environment, and ergonomics performance optimization Taguchi methods |
url |
http://www.sciencedirect.com/science/article/pii/S2093791114000948 |
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