Inputs and Outputs Selection of Data Envelopment Analysis to Evaluate the Performance of Regional Electricity Companies in Iran by Neural Network

Input and output selection in Data Envelopment Analysis (DEA) has many important. In this research, inputs and outputs of reginal power companies are selected with artifitial neural network. The application of neural network in the selection of inputs and outputs of reginal power companies is not a...

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Main Author: Akram Oveysiomran
Format: Article
Language:fas
Published: Allameh Tabataba'i University Press 2019-01-01
Series:Muṭāli̒āt-i Mudīriyyat-i Ṣan̒atī
Subjects:
Online Access:http://jims.atu.ac.ir/article_9240_289d2614f5a3e4fe2602a1e26754db24.pdf
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spelling doaj-d71cfe2577f042fb869c6b97bd874a922020-11-25T03:44:31ZfasAllameh Tabataba'i University PressMuṭāli̒āt-i Mudīriyyat-i Ṣan̒atī2251-80292019-01-01165118120610.22054/JIMS.2018.15618.1551Inputs and Outputs Selection of Data Envelopment Analysis to Evaluate the Performance of Regional Electricity Companies in Iran by Neural NetworkAkram Oveysiomran0Ph.D candidateInput and output selection in Data Envelopment Analysis (DEA) has many important. In this research, inputs and outputs of reginal power companies are selected with artifitial neural network. The application of neural network in the selection of inputs and outputs of reginal power companies is not a precedent in the literature and it is considered the main advantage of the proposed method. In order to train two layers MLP neural network, after presenting of error resilience, learning method was used. After neural network training, neural network performance is examined by using the test set. RMSE value for 15 test set equals 0/0269 which reflects the high accuracy of training network. The Sensitivity Analysis of the studied parameters which are the same inputs and outputs of Data Envelopment Analysis, with ten percent increase of parameter, compared to the prior one was carried out and output relative error average for neural network parameters was calculated. Based on the output relative error average, inputs and outputs were determined. By comparing the efficiency scores of regional electricity companies before and after reducing the number of variables, it is noticed that the number of efficient companies during the above four periods decreased from 50 percent to 11 percent. Finally, the neural network application in inputs and outputs selection of the regional electricity companies was unprecedented in the literature and this is the main advantage of this method. http://jims.atu.ac.ir/article_9240_289d2614f5a3e4fe2602a1e26754db24.pdfinput and output selection data envelopment analysis neural network window analysis regional electricity companies
collection DOAJ
language fas
format Article
sources DOAJ
author Akram Oveysiomran
spellingShingle Akram Oveysiomran
Inputs and Outputs Selection of Data Envelopment Analysis to Evaluate the Performance of Regional Electricity Companies in Iran by Neural Network
Muṭāli̒āt-i Mudīriyyat-i Ṣan̒atī
input and output selection data envelopment analysis neural network window analysis regional electricity companies
author_facet Akram Oveysiomran
author_sort Akram Oveysiomran
title Inputs and Outputs Selection of Data Envelopment Analysis to Evaluate the Performance of Regional Electricity Companies in Iran by Neural Network
title_short Inputs and Outputs Selection of Data Envelopment Analysis to Evaluate the Performance of Regional Electricity Companies in Iran by Neural Network
title_full Inputs and Outputs Selection of Data Envelopment Analysis to Evaluate the Performance of Regional Electricity Companies in Iran by Neural Network
title_fullStr Inputs and Outputs Selection of Data Envelopment Analysis to Evaluate the Performance of Regional Electricity Companies in Iran by Neural Network
title_full_unstemmed Inputs and Outputs Selection of Data Envelopment Analysis to Evaluate the Performance of Regional Electricity Companies in Iran by Neural Network
title_sort inputs and outputs selection of data envelopment analysis to evaluate the performance of regional electricity companies in iran by neural network
publisher Allameh Tabataba'i University Press
series Muṭāli̒āt-i Mudīriyyat-i Ṣan̒atī
issn 2251-8029
publishDate 2019-01-01
description Input and output selection in Data Envelopment Analysis (DEA) has many important. In this research, inputs and outputs of reginal power companies are selected with artifitial neural network. The application of neural network in the selection of inputs and outputs of reginal power companies is not a precedent in the literature and it is considered the main advantage of the proposed method. In order to train two layers MLP neural network, after presenting of error resilience, learning method was used. After neural network training, neural network performance is examined by using the test set. RMSE value for 15 test set equals 0/0269 which reflects the high accuracy of training network. The Sensitivity Analysis of the studied parameters which are the same inputs and outputs of Data Envelopment Analysis, with ten percent increase of parameter, compared to the prior one was carried out and output relative error average for neural network parameters was calculated. Based on the output relative error average, inputs and outputs were determined. By comparing the efficiency scores of regional electricity companies before and after reducing the number of variables, it is noticed that the number of efficient companies during the above four periods decreased from 50 percent to 11 percent. Finally, the neural network application in inputs and outputs selection of the regional electricity companies was unprecedented in the literature and this is the main advantage of this method.
topic input and output selection data envelopment analysis neural network window analysis regional electricity companies
url http://jims.atu.ac.ir/article_9240_289d2614f5a3e4fe2602a1e26754db24.pdf
work_keys_str_mv AT akramoveysiomran inputsandoutputsselectionofdataenvelopmentanalysistoevaluatetheperformanceofregionalelectricitycompaniesiniranbyneuralnetwork
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