Forecasting Renewable Energy Generation with Machine learning and Deep Learning: Current Advances and Future Prospects
27 Mar 2023
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TL;DR: A review of current advances and future prospects in the field of forecasting renewable energy generation using machine learning (ML) and deep learning (DL) techniques is presented in this paper , where different approaches and models have been used for renewable energy forecasting and discusses their strengths and limitations.
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Abstract: This article presents a review of current advances and future prospects in the field of forecasting renewable energy generation using machine learning (ML) and deep learning (DL) techniques. With the increasing penetration of renewable energy sources (RES) into the electricity grid, accurate forecasting of their generation becomes crucial for efficient grid operation and energy management. Traditional forecasting methods have limitations, and thus ML and DL algorithms have gained popularity due to their ability to learn complex relationships from data and provide accurate predictions. This paper reviews the different approaches and models that have been used for renewable energy forecasting and discusses their strengths and limitations. It also highlights the challenges and future research directions in the field, such as dealing with uncertainty and variability in renewable energy generation, data availability, and model interpretability. Finally, this paper emphasizes the importance of developing robust and accurate renewable energy forecasting models to enable the integration of RES into the electricity grid and facilitate the transition towards a sustainable energy future.
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Forecasting Renewable Energy Generation with Machine learning and Deep Learning: Current Advances and Future Prospects
27 Mar 2023
TL;DR: A review of current advances and future prospects in the field of forecasting renewable energy generation using machine learning (ML) and deep learning (DL) techniques is presented in this paper , where different approaches and models have been used for renewable energy forecasting and discusses their strengths and limitations.
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