A novel hybrid method based on Cuckoo optimization algorithm and artificial neural network to forecast world's carbon dioxide emission

This paper deals with the global energy consumption to forecast future projections based on primary energy, global oil, coal and natural gas consumption using a hybrid Cuckoo optimization algorithm and information of British Petroleum Company plc and BP Amoco plc. The Artificial Neural Network (ANN)...

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Main Authors: Sayyed Abdolmajid Jalaee, Alireza Shakibaei, Hossein Akbarifard, Hamid Reza Horry, Amin GhasemiNejad, Fateme Nazari Robati, Naeeme Amani zarin, Reza Derakhshani
Format: Article
Language:English
Published: Elsevier 2021-01-01
Series:MethodsX
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2215016121001035
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author Sayyed Abdolmajid Jalaee
Alireza Shakibaei
Hossein Akbarifard
Hamid Reza Horry
Amin GhasemiNejad
Fateme Nazari Robati
Naeeme Amani zarin
Reza Derakhshani
author_facet Sayyed Abdolmajid Jalaee
Alireza Shakibaei
Hossein Akbarifard
Hamid Reza Horry
Amin GhasemiNejad
Fateme Nazari Robati
Naeeme Amani zarin
Reza Derakhshani
author_sort Sayyed Abdolmajid Jalaee
collection DOAJ
description This paper deals with the global energy consumption to forecast future projections based on primary energy, global oil, coal and natural gas consumption using a hybrid Cuckoo optimization algorithm and information of British Petroleum Company plc and BP Amoco plc. The Artificial Neural Network (ANN) has some significant disadvantages, such as training slowly, easiness to fall into local optimal point, and sensitivity of the initial weights and bias. To overcome the shortcomings, an improved ANN structure, that is optimized by the Cuckoo Optimization Algorithm (COA), is proposed in this paper (COANN). The performance of the COANN is evaluated with Mean Squared Error (MSE), Root Mean Squared Error (RMSE), Mean Absolute Error (MAE), and Correlation Coefficient (CC) between the output of the model and the actual dataset. Finally, CO2 emission in the world by 2050 is forecasted using COANN. The findings showed that COANN is a helpful and reliable tool for monitoring global warming. This proposed method will assist experts, policy planners and researchers who study greenhouse gases. • The method can be used as a potential tool for policymakers and governments to make policy on global warming monitoring and control. • The proposed method can play a key role in the global climate changes policies and can have a significant impact on the efficiency or inefficiency of government's intervention policies.
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spelling doaj.art-6d08abc9dc8f45e98766cda04f285bd72022-12-21T18:44:31ZengElsevierMethodsX2215-01612021-01-018101310A novel hybrid method based on Cuckoo optimization algorithm and artificial neural network to forecast world's carbon dioxide emissionSayyed Abdolmajid Jalaee0Alireza Shakibaei1Hossein Akbarifard2Hamid Reza Horry3Amin GhasemiNejad4Fateme Nazari Robati5Naeeme Amani zarin6Reza Derakhshani7Department of Economics, Faculty of Management and Economics, Shahid Bahonar University of Kerman, Kerman, IranDepartment of Economics, Faculty of Management and Economics, Shahid Bahonar University of Kerman, Kerman, IranDepartment of Economics, Faculty of Management and Economics, Shahid Bahonar University of Kerman, Kerman, IranDepartment of Economics, Faculty of Management and Economics, Shahid Bahonar University of Kerman, Kerman, IranDepartment of Economics, Faculty of Management and Economics, Shahid Bahonar University of Kerman, Kerman, IranDepartment of Economics, Faculty of Management and Economics, Shahid Bahonar University of Kerman, Kerman, IranDepartment of Economics, Faculty of Management and Economics, Shahid Bahonar University of Kerman, Kerman, IranDepartment of Geology, Shahid Bahonar University of Kerman, Kerman, Iran; Department of Earth Sciences, Utrecht University, Utrecht, the Netherlands; Corresponding author at: Department of Earth Sciences, Utrecht University, Utrecht, the Netherlands.This paper deals with the global energy consumption to forecast future projections based on primary energy, global oil, coal and natural gas consumption using a hybrid Cuckoo optimization algorithm and information of British Petroleum Company plc and BP Amoco plc. The Artificial Neural Network (ANN) has some significant disadvantages, such as training slowly, easiness to fall into local optimal point, and sensitivity of the initial weights and bias. To overcome the shortcomings, an improved ANN structure, that is optimized by the Cuckoo Optimization Algorithm (COA), is proposed in this paper (COANN). The performance of the COANN is evaluated with Mean Squared Error (MSE), Root Mean Squared Error (RMSE), Mean Absolute Error (MAE), and Correlation Coefficient (CC) between the output of the model and the actual dataset. Finally, CO2 emission in the world by 2050 is forecasted using COANN. The findings showed that COANN is a helpful and reliable tool for monitoring global warming. This proposed method will assist experts, policy planners and researchers who study greenhouse gases. • The method can be used as a potential tool for policymakers and governments to make policy on global warming monitoring and control. • The proposed method can play a key role in the global climate changes policies and can have a significant impact on the efficiency or inefficiency of government's intervention policies.http://www.sciencedirect.com/science/article/pii/S2215016121001035COANN- a hybrid Cuckoo optimization algorithm with Artificial neural network
spellingShingle Sayyed Abdolmajid Jalaee
Alireza Shakibaei
Hossein Akbarifard
Hamid Reza Horry
Amin GhasemiNejad
Fateme Nazari Robati
Naeeme Amani zarin
Reza Derakhshani
A novel hybrid method based on Cuckoo optimization algorithm and artificial neural network to forecast world's carbon dioxide emission
MethodsX
COANN- a hybrid Cuckoo optimization algorithm with Artificial neural network
title A novel hybrid method based on Cuckoo optimization algorithm and artificial neural network to forecast world's carbon dioxide emission
title_full A novel hybrid method based on Cuckoo optimization algorithm and artificial neural network to forecast world's carbon dioxide emission
title_fullStr A novel hybrid method based on Cuckoo optimization algorithm and artificial neural network to forecast world's carbon dioxide emission
title_full_unstemmed A novel hybrid method based on Cuckoo optimization algorithm and artificial neural network to forecast world's carbon dioxide emission
title_short A novel hybrid method based on Cuckoo optimization algorithm and artificial neural network to forecast world's carbon dioxide emission
title_sort novel hybrid method based on cuckoo optimization algorithm and artificial neural network to forecast world s carbon dioxide emission
topic COANN- a hybrid Cuckoo optimization algorithm with Artificial neural network
url http://www.sciencedirect.com/science/article/pii/S2215016121001035
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