Abstract

In response to climate change and environmental issues, many countries have gradually optimized carbon market management and improved the carbon market trading mechanism. Carbon price prediction plays a pivotal role in promoting carbon market management when investors are guided by prediction to conduct rational carbon trading. A novel carbon price prediction methodology is constructed based on ensemble empirical mode decomposition, improved bat algorithm, and extreme learning machine (EEMD-IBA-ELM) in this study. Firstly, the carbon price is decomposed into multiple regular intrinsic mode function (IMF) components by the ensemble empirical mode decomposition, and partial autocorrelation analysis (PACF) is used to find IMF historical data affecting the current value of IMF. Secondly, the improved bat algorithm (IBA) is used to heighten extreme learning machine (ELM) while adaptive parameters are obtained. Finally, EEMD-IBA-ELM was established to predict carbon price. Simultaneously, energy price fluctuation is introduced into the carbon price prediction model. As a consequence, EEMD-IBA-ELM carbon price prediction ability is further improved. In the empirical analysis, the historical carbon price of European Climate Exchange (ECX) and Korea Exchange (KRX) markets are used to examine the effectiveness and stability of the model. Errors of carbon price prediction in ECX and KRX is 2.1982% and 1.1762%, respectively. The results show that the EEMD-IBA-ELM carbon price prediction model can accurately predict carbon price when prediction effect shows strong stability. Furthermore, carbon price prediction accurateness was significantly enhanced by using energy price fluctuation as an influencing factor of carbon price prediction.

Highlights

  • Since the beginning of the 21st century, carbon dioxide emissions and climate change have aroused widespread concern around the world

  • The results show that the Ensemble empirical mode decomposition (EEMD)-improved bat algorithm (IBA)-extreme learning machine (ELM) carbon price prediction model can accurately predict carbon price when prediction effect shows strong stability

  • The EEMD-IBA-ELM model and the simple random walk model are compared by the Morgan-Granger-Newbold test [31]

Read more

Summary

Introduction

Since the beginning of the 21st century, carbon dioxide emissions and climate change have aroused widespread concern around the world. The European Union has established carbon market and carbon emission transaction mechanisms that provide new ideas and methods to cope with climate and environmental issues [1]. In 2019, the trading volume and turnover of the European carbon market ranked first in the world, reaching 6777 million tons and 168 billion euros, respectively. With the increase in carbon trading demand, the Korean market transaction price is constantly pushed up. Aiming to improve the trading mechanism of the market and improve management levels, it is necessary to predict carbon price accurately and efficiently [2]. Through the establishment of carbon price prediction methods and technologies, the carbon market trading system and mechanism

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call