Energies, Vol. 18, Pages 5037: Forecasting Renewable Power Generation by Employing a Probabilistic Accumulation Non-Homogeneous Grey Model

Energies, Vol. 18, Pages 5037: Forecasting Renewable Power Generation by Employing a Probabilistic Accumulation Non-Homogeneous Grey Model

Energies doi: 10.3390/en18185037

Authors:
Peng Zhang
Jinsong Hu
Kelong Zheng
Wenqing Wu
Xin Ma

Accurately predicting annual renewable power generation is critical for advancing energy structure transformation, ensuring energy security, and fostering sustainable development. In this study, a probabilistic non-homogeneous grey model (PNGM) is proposed to address this forecasting challenge. Firstly, the proposed model is constructed by integrating a Probabilistic Accumulation Generation Operator with the classical non-homogeneous grey model. Secondly, the Whale Optimization Algorithm is utilized to tune the parameters of the operator, thereby enhancing the extraction of valid information required for modeling. Furthermore, the superiority of the new model in information extraction and predictive performance is validated using synthetic datasets. Finally, it is applied to forecast renewable power generation in the United States, Russia, and India. The result exhibits significantly superior performance compared to the comparative models. Additionally, this study provides projections of renewable power generation for the United States, Russia, and India from 2025 to 2030, and the uncertainty intervals of the predicted values are estimated using the Bootstrap method. These results can provide reliable decision support for energy sectors and policymakers.

More From Author

Energies, Vol. 18, Pages 5039: Design and Techno-Economic Evaluation for Large-Scale Offshore Wind Power Transmission Scheme

Energies, Vol. 18, Pages 5038: Comparative Study on the Effects of Diesel Fuel, Hydrotreated Vegetable Oil, and Its Blends with Pyrolytic Oils on Pollutant Emissions and Fuel Consumption of a Diesel Engine Under WLTC Dynamic Test Conditions

Leave a Reply

Your email address will not be published. Required fields are marked *