Hybrid renewable energy systems, load and generation forecasting, new grids structure, and smart technologies

Abstract This chapter gives the brief introduction to the management of energy in smart grids focusing on the hybrid renewable energy systems, load and generation forecasting, new grids structure, and smart technologies. The classification of smart infrastructure systems and smart energy management systems is provided and discussed with focus on both demand-side management and supply-side management.

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