Carbon Emission Forecasting Study Based on Influence Factor Mining and Mini-Batch Stochastic Gradient Optimization

Author:

Yang Wei1,Yuan Qiheng1,Wang Yongli2,Zheng Fei3,Shi Xin1,Li Yi2

Affiliation:

1. Big Data Center of State Grid Corporation of China, Beijing 100052, China

2. School of Economics and Management, North China Electric Power University, Beijing 102206, China

3. Beijing China-Power Information Technology Co., Ltd., Beijing 100089, China

Abstract

With the increasing prominence of the global carbon emission problem, the accurate prediction of carbon emissions has become an increasingly urgent need. Existing carbon emission prediction methods have the problems of slow calculation speed, inaccurate prediction, and insufficient deep mining of influencing factors when dealing with large-scale data. In this study, a comprehensive carbon emission prediction method is proposed. Firstly, multiple influencing factors including economic factors and demographic factors are considered, and a pathway analysis method is introduced to mine the long-term relationship between these factors and carbon emissions. Then, indirect influence terms are added to the multiple regression equation, and the variable is used to represent the indirect influence relationship. Finally, this study proposes the PCA-PA-MBGD method, which applies the results of principal component analysis to the pathway analysis. By reducing the data dimensions and extracting the main influencing factors, and optimizing the carbon emission prediction model by using a mini-batch stochastic gradient descent algorithm, the results show that this method can process a large amount of data quickly and efficiently, and realize an accurate prediction of carbon emissions. This provides strong support for solving the carbon emission problem and offers new ideas and methods for future related research.

Funder

Big Data Center of State Grid Corporation of China Science and Technology Project Grant

Publisher

MDPI AG

Subject

Energy (miscellaneous),Energy Engineering and Power Technology,Renewable Energy, Sustainability and the Environment,Electrical and Electronic Engineering,Control and Optimization,Engineering (miscellaneous),Building and Construction

Reference18 articles.

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4. Liu, H., and Hu, D. (2023). Construction and Analysis of Transportation Carbon Emission Prediction Model Based on Machine Learning. Environ. Sci., 1–17.

5. Chen, C., He, Y., and Cai, X. (2023). Forecasting carbon emission scenarios and analyzing emission reduction potential of power grid enterprises based on LEAP model. J. North China Electr. Power Univ., 1–8.

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