Abstract
Accurately predicting the carbon price sequence is important and necessary for promoting the development of China’s national carbon trading market. In this paper, a multiscale ensemble forecasting model that is based on ensemble empirical mode decomposition (EEMD-ADD) is proposed to predict the carbon price sequence. First, the ensemble empirical mode decomposition (EEMD) is applied to decompose a carbon price sequence, SZA2013, into several intrinsic mode functions (IMFs) and one residual. Second, the IMFs and the residual are restructured via a fine-to-coarse reconstruction algorithm to generate three stationary and regular frequency components that high frequency component, low frequency component, and trend component. The fluctuation of each component can effectively reveal the factors that influence market operation. Third, extreme learning machine (ELM) is applied to forecast the trend component, support vector machine (SVM) is applied to forecast the low frequency component and the high frequency component is predicted via PSO-ELM, which means extreme learning machine whose input weights and bias threshold were optimized by particle swarm optimization. Then, the predicted values are combined to form a final predicted value. Finally, using the relevant error-type and trend-type performance indexes, the proposed multiscale ensemble forecasting model is shown to be more robust and accurate than the single format models. Three additional emission allowances from the Shenzhen Emissions Exchange are used to validate the model. The empirical results indicate that the established model is effective, efficient, and practical in terms of its statistical measures and prediction performance.
Highlights
Global warming caused by greenhouse gas (GHG) emissions poses a severe challenge to the survival and development of human societies
This analysis shows that (a) the range of relative errors of the trend component is from 2.628 × 10−6 to 2.855 × 10−6, but the trend of the error gradually increases due to the effect of training set fitting. (b) The relative error of the low-frequency components is relatively stable, generally ranging between plus and minus 0.2
Four data points show errors that are greater than −0.4 due to the corresponding points in the low frequencies being biasedbeing against the trend of the the trend overall dataset. (c) Itdataset
Summary
Global warming caused by greenhouse gas (GHG) emissions poses a severe challenge to the survival and development of human societies. Energies 2018, 11, 1907 government has realized that it may not be easy to achieve the commitment of carbon emission reduction through traditional measures and proposals. The goal of carbon emission reductions allocated through market means allows for participants to achieve their own interests and needs. People tend to increase the use of cheaper coal, resulting in an increase of carbon dioxide emissions. This requires more carbon emissions quotas in order to promote the rise of carbon prices. People generally use less coal and reduce carbon dioxide emissions, resulting in decline in carbon prices. The volatility and predictability of the carbon price has become a popular topic
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