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Carbon Dioxide Emission Prediction of Four CIS Countries by Applying a Correlation and GMDH Artificial Neural Network
[post]
2019
unpublished
Increase in the emission of Greenhouse Gases (GHS) is among the significant concerns of government, societies, and policymakers. Due to the highest share of carbon dioxide in the produced GHGs, it is necessary to assess the factors that influence its emission. Energy systems and economic activities noticeably influence the amount of carbon dioxide production of countries. In this article, Artificial Neural Network (ANN) in addition to a linear correlation used to predict carbon dioxide emission
doi:10.20944/preprints201906.0227.v1
fatcat:3hp6wtyskzhcnihrbv7oimdmma