Prediction of CO2 emissions in Saudi Arabia using genetic algorithms based on Grey Model GM (1,1)
Examining the economic elements of gas emissions and their effects is critical, especially given the present upward trend in its emission volume. Hence, this study aimed to predict CO2 emissions using Genetic Algorithms (GAs) based on the Grey Model GM (1,1) in Saudi Arabia. This involves constructi...
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my.utm.1079502024-10-17T06:10:39Z http://eprints.utm.my/107950/ Prediction of CO2 emissions in Saudi Arabia using genetic algorithms based on Grey Model GM (1,1) Althobaiti, Zahrah Fayez Shabri, Ani QA Mathematics Examining the economic elements of gas emissions and their effects is critical, especially given the present upward trend in its emission volume. Hence, this study aimed to predict CO2 emissions using Genetic Algorithms (GAs) based on the Grey Model GM (1,1) in Saudi Arabia. This involves constructing a high precision predicting model to find the optimal solution for the Grey Model using GAs (optimization method) based on the prediction error minimization. This study uses CO2 emissions in Saudi Arabia from 2007 to 2016 (in - sample and out - sample data sets) to evaluate the proposed prediction model, and which demonstrates how GAs may be used to improve the Grey theory. The mean absolute percentages error is criterion with which to compare the various forecasting models results. The results show that genetic algorithm based on Grey model GAGM (1,1) has highly accurate prediction than Grey model GM (1,1), which means that GAGM (1,1) can improve the precision of Grey forecasting model significantly. The suggested model is a highly accurate to predict CO2 emissions for Saudi Arabia in modelling and forecasting. So, the study results may be useful to the government in the development of the future economic policies. 2023-02-08 Conference or Workshop Item PeerReviewed Althobaiti, Zahrah Fayez and Shabri, Ani (2023) Prediction of CO2 emissions in Saudi Arabia using genetic algorithms based on Grey Model GM (1,1). In: 5th ISM International Statistical Conference 2021: Statistics in the Spotlight: Navigating the New Norm, ISM 2021, 17 August 2021 - 19 August 2021, Virtual, UTM Johor Bahru, Johor, Malaysia. http://dx.doi.org/10.1063/5.0109952 |
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QA Mathematics Althobaiti, Zahrah Fayez Shabri, Ani Prediction of CO2 emissions in Saudi Arabia using genetic algorithms based on Grey Model GM (1,1) |
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Examining the economic elements of gas emissions and their effects is critical, especially given the present upward trend in its emission volume. Hence, this study aimed to predict CO2 emissions using Genetic Algorithms (GAs) based on the Grey Model GM (1,1) in Saudi Arabia. This involves constructing a high precision predicting model to find the optimal solution for the Grey Model using GAs (optimization method) based on the prediction error minimization. This study uses CO2 emissions in Saudi Arabia from 2007 to 2016 (in - sample and out - sample data sets) to evaluate the proposed prediction model, and which demonstrates how GAs may be used to improve the Grey theory. The mean absolute percentages error is criterion with which to compare the various forecasting models results. The results show that genetic algorithm based on Grey model GAGM (1,1) has highly accurate prediction than Grey model GM (1,1), which means that GAGM (1,1) can improve the precision of Grey forecasting model significantly. The suggested model is a highly accurate to predict CO2 emissions for Saudi Arabia in modelling and forecasting. So, the study results may be useful to the government in the development of the future economic policies. |
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Conference or Workshop Item |
author |
Althobaiti, Zahrah Fayez Shabri, Ani |
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Althobaiti, Zahrah Fayez Shabri, Ani |
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Althobaiti, Zahrah Fayez |
title |
Prediction of CO2 emissions in Saudi Arabia using genetic algorithms based on Grey Model GM (1,1) |
title_short |
Prediction of CO2 emissions in Saudi Arabia using genetic algorithms based on Grey Model GM (1,1) |
title_full |
Prediction of CO2 emissions in Saudi Arabia using genetic algorithms based on Grey Model GM (1,1) |
title_fullStr |
Prediction of CO2 emissions in Saudi Arabia using genetic algorithms based on Grey Model GM (1,1) |
title_full_unstemmed |
Prediction of CO2 emissions in Saudi Arabia using genetic algorithms based on Grey Model GM (1,1) |
title_sort |
prediction of co2 emissions in saudi arabia using genetic algorithms based on grey model gm (1,1) |
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2023 |
url |
http://eprints.utm.my/107950/ http://dx.doi.org/10.1063/5.0109952 |
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1814043567006416896 |