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Machine learning-based wind speed forecasting: a comparative study

Alireza Zabihi, Vishwaraj B Manur, Yeswanth Dintakurthy, K. R. K. V. Prasad, Prenc Rene, V. B. Murali Krishna

2025Scientific Reports6 citationsDOIOpen Access PDF

Abstract

Wind turbines (WTs) are increasingly replacing fossil fuel-based power plants as a primary source of energy generation due to the limited supply of fossil resources in many nations. Accurate wind speed prediction is essential to developing the efficiency of wind energy generation and ensuring grid compatibility. This research evaluates several machine learning (ML) techniques, support vector machine (SVM), random forest, artificial neural networks (ANN), and XGBoost for wind speed prediction using the selected dataset. Framework performance is evaluated using root mean square error (RMSE) and mean absolute error (MAE). The results show that the SVM model achieved the highest accuracy, with an RMSE of 0.83609 and an MAE of 0.69623. The findings show the effectiveness of applying multiple ML approaches to wind speed forecasting, supporting the development of sustainable cities and enhancing the efficiency of power generation units.

Topics & Concepts

Wind powerMean squared errorWind speedSupport vector machineMean absolute percentage errorComputer scienceArtificial neural networkElectricity generationRandom forestRenewable energyGridMean absolute errorEnergy (signal processing)Power (physics)Efficient energy useApproximation errorEnvironmental scienceRoot mean squareTip-speed ratioSimulationTraining (meteorology)Machine learningFossil fuelMeteorologyEnergy Load and Power ForecastingWind Energy Research and DevelopmentWind Turbine Control Systems
Machine learning-based wind speed forecasting: a comparative study | Litcius