A combined framework for carbon emissions prediction integrating online search attention

Author:

Zhang Dabin12,Yu Zehui1,Ling Liwen12,Hu Huanling12,Lin Ruibin1

Affiliation:

1. College of Mathematics and Information, South China Agricultural University, Guangzhou, China

2. Institute of Rural Revitalization Research, South China Agricultural University, Guangzhou, China

Abstract

As CO2 emissions continue to rise, the problem of global warming is becoming increasingly serious. It is important to provide a robust management decision-making basis for the reductions of carbon emissions worldwide by predicting carbon emissions accurately. However, affected by various factors, the prediction of carbon emissions is challenging due to its nonlinear and nonstationary characteristics. Thus, we propose a combination forecast model, named CEEMDAN-GWO-SVR, which incorporates multiple features to predict trends in China’s carbon emissions. First, the impact of online search attention and public health emergencies are considered in carbon emissions prediction. Since the impact of different variables on carbon emissions is lagged, the grey relational degree is used to identify the appropriate lag series. Second, irrelevant features are eliminated through RFECV. To address the issue of feature redundancy of online search attention, we propose a dimensionality reduction method based on keyword classification. Finally, to evaluate the features of the proposed framework, four evaluation indicators are tested in multiple machine learning models. The best-performed model (SVR) is optimized by CEEMDAN and GWO to enhance prediction accuracy. The empirical results indicate that the proposed framework maintains good performance in both multi-scenario and multi-step prediction.

Publisher

IOS Press

Reference26 articles.

1. A building carbon emission prediction model byPSO-SVR method under multi-criteria evaluation;Chu;Journal ofIntelligent & Fuzzy Systems,2021

2. Towards carbon neutrality: What has beendone and what needs to be done for carbon emission reduction;Yao;Environmental Science and Pollution Research,2023

3. Does the audit qualityaffect the financing efficiency of photovoltaic enterprises;Pang;Evidence from listed companies in China Environmental Scienceand Pollution Research,2022

4. The coupling relationships and influence mechanisms of green credit andenergy-environment-economy under China’s goal of carbon neutrality;Chai;Journal of Systems Science and Complexity,2023

5. The prediction of carbon emissioninformation in Yangtze river economic zone by deep learning;Huang;Land,2021

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