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Ridge regression ensemble of machine learning models applied to solar and wind forecasting in Brazil and Spain

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  • Carneiro, Tatiane C.
  • Rocha, Paulo A.C.
  • Carvalho, Paulo C.M.
  • Fernández-Ramírez, Luis M.

Abstract

In recent years, with the rapid development of wind and solar power generation, some problems arise gradually and are often inherent to intermittency. Currently, one of the essential methods to solve these problems is the application of forecasting methodologies. Our article proposes an ensemble learning method based on crest regression (penalized L2) which integrates consolidated wind and solar forecasting methodologies applied to two locations with different latitudes and climatic profiles. From the simulations carried out, the methodology is efficient to improve the predictions performance of isolated methods and applicable to different locations around the world. For solar data from Brazil and Spain, the ensemble model achieves MAPE values of 14.191% and 11.261%, respectively; for the same data, the best model applied individually (CFBP) shows a higher MAPE of 24.207% and 12.465%, respectively. For wind data from Brazil and Spain, the ensemble model has a MAPE of 3.927% and 5.491%, respectively. The best model applied individually to Brazilian wind data is CFBP, with MAPE of 9.345%. For the Spanish data, the best individual model is MLP, with MAPE of 7.186%. The ensemble modeling reduces the forecast errors and can be useful in optimizing the planning for the use of intermittent solar and wind resources in the electrical matrices.

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  • Carneiro, Tatiane C. & Rocha, Paulo A.C. & Carvalho, Paulo C.M. & Fernández-Ramírez, Luis M., 2022. "Ridge regression ensemble of machine learning models applied to solar and wind forecasting in Brazil and Spain," Applied Energy, Elsevier, vol. 314(C).
  • Handle: RePEc:eee:appene:v:314:y:2022:i:c:s0306261922003555
    DOI: 10.1016/j.apenergy.2022.118936
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    3. Konduru Sudharshan & C. Naveen & Pradeep Vishnuram & Damodhara Venkata Siva Krishna Rao Kasagani & Benedetto Nastasi, 2022. "Systematic Review on Impact of Different Irradiance Forecasting Techniques for Solar Energy Prediction," Energies, MDPI, vol. 15(17), pages 1-39, August.
    4. Song, Zhe & Cao, Sunliang & Yang, Hongxing, 2023. "Assessment of solar radiation resource and photovoltaic power potential across China based on optimized interpretable machine learning model and GIS-based approaches," Applied Energy, Elsevier, vol. 339(C).
    5. Ghimire, Sujan & Nguyen-Huy, Thong & AL-Musaylh, Mohanad S. & Deo, Ravinesh C. & Casillas-Pérez, David & Salcedo-Sanz, Sancho, 2023. "A novel approach based on integration of convolutional neural networks and echo state network for daily electricity demand prediction," Energy, Elsevier, vol. 275(C).
    6. Oliveira Santos, Victor & Costa Rocha, Paulo Alexandre & Scott, John & Van Griensven Thé, Jesse & Gharabaghi, Bahram, 2023. "Spatiotemporal analysis of bidimensional wind speed forecasting: Development and thorough assessment of LSTM and ensemble graph neural networks on the Dutch database," Energy, Elsevier, vol. 278(PA).
    7. Mehmood, Faiza & Ghani, Muhammad Usman & Ghafoor, Hina & Shahzadi, Rehab & Asim, Muhammad Nabeel & Mahmood, Waqar, 2022. "EGD-SNet: A computational search engine for predicting an end-to-end machine learning pipeline for Energy Generation & Demand Forecasting," Applied Energy, Elsevier, vol. 324(C).
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