Impact of solar and wind forecast uncertainties on demand response of isolated microgrids

A flexible load management may improve significantly the economic dispatch, especially for isolated energy systems with a significant share of renewables. For that purpose, renewable resources and load forecasts ought to be taken in account for optimal demand response programs.

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