Forecasting carbon emissions from energy consumption in Guangdong Province, China with a novel grey multivariate model

Environ Sci Pollut Res Int. 2022 Aug;29(39):59534-59546. doi: 10.1007/s11356-022-19805-8. Epub 2022 Apr 6.

Abstract

Carbon dioxide has a significant impact on global climate change due to its natural greenhouse effect. The objective and credible forecast of carbon emissions is very important for the government to formulate and implement the corresponding emission reduction targets. For controlling the growth of carbon emissions, Chinese government has put forward the low-carbon pilot policy and carbon trading policy. However, the existing grey models cannot measure the impact of policies and their interactions. In order to remedy the defect, a novel grey multivariable model based on dummy variables and their interactions is established. Two kinds of grey multivariable models and back propagation neural network model are chosen as comparison models to highlight that the introduction of dummy variables and their interactions plays an important part in improving the model performance. To verify the effectiveness, these four models are selected to simulate and predict the carbon emissions generated from primary energy consumption in Guangdong Province of China. The empirical results indicate that the mean absolute percentage errors of the novel model are 2.87% and 0.86%, respectively, which is significantly better than these three competing models. Finally, based on the outstanding performance of the novel model, it is chosen to forecast the fluctuating tendency of carbon emissions in the next 5 years.

Keywords: Carbon emissions; Dummy variable; Grey multivariable mode; Interaction.

MeSH terms

  • Carbon Dioxide* / analysis
  • China
  • Climate Change
  • Forecasting
  • Neural Networks, Computer*

Substances

  • Carbon Dioxide