Abstract

Due to the nonlinear and non-stationary characteristics of the carbon price, it is difficult to predict the carbon price accurately. This paper proposes a new novel hybrid model for carbon price prediction. The proposed model consists of an extreme-point symmetric mode decomposition, an extreme learning machine, and a grey wolf optimizer algorithm. Firstly, the extreme-point symmetric mode decomposition is employed to decompose the carbon price into several intrinsic mode functions and one residue. Then, the partial autocorrelation function is utilized to determine the input variables of the intrinsic mode functions, and the residue of the extreme learning machine. In the end, the grey wolf optimizer algorithm is applied to optimize the extreme learning machine, to forecast the carbon price. To illustrate the superiority of the proposed model, the Hubei, Beijing, Shanghai, and Guangdong carbon price series are selected for the predictions. The empirical results confirm that the proposed model is superior to the other benchmark methods. Consequently, the proposed model can be employed as an effective method for carbon price series analysis and forecasting.

Highlights

  • With the growing concern about climate change, many countries and regions have begun to adopt the carbon emission trading mechanism to effectively control greenhouse gas emissions [1]

  • The results indicated that the model performed better than signal autoregressive integrated moving average model (ARIMA), artificial neural network (ANN), and least square support vector machine (LSSVM)

  • Sun et al [52] focused on the particle swarm optimization (PSO)-extreme learning machine (ELM) to predict carbon price, and the results indicated that PSO-ELM performed better

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Summary

Introduction

With the growing concern about climate change, many countries and regions have begun to adopt the carbon emission trading mechanism to effectively control greenhouse gas emissions [1]. The carbon trading market, playing a significant role in dealing with global climate change, is one of the most effective tools [2,3]. As one of the largest carbon emitters [4], China officially proposed to implement an initial carbon emissions trading system in 2010, which was response to the challenge of climate change. The Chinese government has established eight pilot carbon markets that have valid developments for reducing greenhouse gas emissions [7]. The ETS has become an extremely significant financial market, and it will play an increasingly important role in reducing emissions in the future

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