Predictive Control Based Energy Management of a Residential Hybrid AC-DC Nanogrid

The depletion of conventional energy sources and the spread of renewable distributed ones are rapidly drawing attentions towards new smart systems and solutions for energy efficiency and saving energy cost in residential sector. In order to meet these needs, a model predictive control based energy management algorithm has been proposed and applied to a residential hybrid AC-DC nanogrid in this paper. Residential hybrid AC-DC nanogrid is characterized by an innovative conductive flat tape, while a mixed-integer linear programming approach has been considered in the design of proposed algorithm. Furthermore, the simulation tests have been performed to check the effectiveness of proposed algorithm for residential hybrid AC-DC nanogrid by considering various kinds AC and DC loads.

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