Smart Grids and Renewable Integration: A Pathway to Sustainable Energy Futures
Abstract
This research investigates the role of smart grid technologies in enhancing the reliability, efficiency, and sustainability of energy systems. We focus on the integration of renewable energy sources, real-time demand management, and decentralized grid architectures. Using simulation models, the paper evaluates the environmental and economic benefits of implementing AI-driven demand forecasting and IoT-enabled grid monitoring. The findings highlight the transformative potential of smart grids in accelerating the global shift toward low-carbon energy ecosystems.
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