STEAM COAL PRICE FORECASTING VIA LK-LC RIDGE REGRESSION ENSEMBLE LEARNING

Author:

TANG MINGZHU1ORCID,MENG WEITING1ORCID,HONG QIANG2ORCID,WU HUAWEI2ORCID,WANG YANG34ORCID,YANG GUANGYI5ORCID,HU YUEHUI1ORCID,LIU BEIYUAN1ORCID,CHEN DONGLIN1ORCID,XIONG FUQIANG67ORCID

Affiliation:

1. College of Energy and Power Engineering, Changsha University of Science & Technology, Changsha 410114, P. R. China

2. Hubei Key Laboratory of Power System Design and Test for Electrical Vehicle, Hubei University of Arts and Science, Xiangyang 441053, P. R. China

3. School of Electric Engineering, Shanghai Dianji University, Shanghai 201306, P. R. China

4. State Key Laboratory of Industrial Control Technology, Institute of Industrial Process Control, College of Control Science and Engineering, Zhejiang University, Hangzhou 310058, P. R. China

5. Information Center Hunan Institute of Metrology and Test, Changsha, Hunan 410014, P. R. China

6. State Grid Hunan Extra High Voltage Substation Company, Changsha 410029, P. R. China

7. Substation Intelligent Operation and Inspection Laboratory, State Grid Hunan Electric Power Co., Ltd., Changsha 410029, P. R. China

Abstract

Steam coal is the blood of China industry. Forecasting steam coal prices accurately and reliably is of great significance to the stable development of China’s economy. For the predictive model of existing steam coal prices, it is difficult to dig the law of nonlinearity of power coal price data and with poor stability. To address the problems that steam coal price features are highly nonlinear and models lack robustness, Laplacian kernel–log hyperbolic loss–Ridge regression (LK-LC-Ridge-Ensemble) model is proposed, which uses ensemble learning model for steam coal price prediction. First, in each sliding window, two kinds of correlation coefficient are employed to identify the optimal time interval, while the optimal feature set is selected to reduce the data dimension. Second, the Laplace kernel functions are adopted for constructing kernel Ridge regression (LK-Ridge), which boosts the capacity to learn nonlinear laws; the logarithmic loss function is introduced to form the LK-LC-Ridge to enhance the robustness. Finally, the prediction results of each single regression models are utilized to build a results matrix that is input into the meta-model SVR for ensemble learning, which further develops the model performance. Empirical results from three typical steam coal price datasets indicate that the proposed ensemble strategy is reliable for the model performance enhancement. Furthermore, the proposed model outperforms all single primitive models including accuracy of prediction results and robustness of model. Grouping cross-comparison between the different models suggests that the proposed ensemble model is more accurate and robust for steam coal price forecasting.

Funder

National Natural Science Foundation of China

Natural Science Foundation of Hunan Province

Energy Conservation and Emission Reduction Hunan University Student Innovation and Entrepreneurship Education Center

Changsha University of Science and Technology’s “The Double First Class University Plan” International Cooperation and Development Project in Scientific Research in 2018

Innovation and Entrepreneurship Training Program in 2022

Graduate Scientific Research Innovation Project of Changsha University of Science and Technology

Science and Technology Project of the State Administration for Market Regulation

Open Fund of Hubei Key Laboratory of Power System Design and Test for Electrical Vehicle

Publisher

World Scientific Pub Co Pte Ltd

Subject

Applied Mathematics,Geometry and Topology,Modeling and Simulation

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