Abstract
Smart grids represent the future of energy distribution, offering enhanced efficiency, reliability, and sustainability. Deep learning techniques are playing a crucial role in optimizing energy consumption and distribution within these grids by enabling predictive modeling, fault detection, and demand forecasting. This article explores how deep learning is being applied in smart grid systems to improve energy efficiency, reduce operational costs, and integrate renewable energy sources. We discuss the challenges associated with implementing deep learning in smart grids, including data quality, model interpretability, and real-time processing, while also looking at future prospects for energy-efficient grids.
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