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This paper explores the field of machine learning (ML) techniques to improve the precision of renewable energy forecasting, with a focus on hydroelectric power production. Since accurate forecasts of water inflow and reservoir levels are critical to optimizing hydroelectricity potential, traditional forecasting techniques frequently fail to account for the complex interactions that occur within hydrological systems. ML models are used to increase predicting accuracy in order to close this gap. Using a dataset of historical meteorological and hydrological data in conjunction with machine learning (ML) algorithms, the study shows that ML models outperform conventional methods in capturing the non-linear trends inherent in hydropower systems. The performance of the model is further improved by the identification of crucial variables influencing energy generation through careful feature engineering and selection. The work also looks at how temporal and spatial aspects affect forecast accuracy, which adds to our understanding of hydroelectricity dynamics in a more complex way. The study highlights the promise of machine learning (ML) models for real-time forecasting applications by demonstrating their capacity to adjust to changing environmental variables. The results highlight the effectiveness of machine learning in improving hydroelectric energy projections and provide crucial information for decision-makers, energy providers, and scholars pursuing sustainable energy integration. The application of machine learning to hydropower forecasting becomes essential as the energy landscape changes in order to maximize resource use and speed up the shift to cleaner, more reliable energy sources.
Dhar et al. (Tue,) studied this question.
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