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      1 *Corresponding author: [email protected]

      2

      Power and Energy Management in Microgrid

       Jayesh J. Joglekar

       MIT World Peace University, Pune, India

       Abstract

      The microgrid voltage management has a significant concern during unstable system condition due to limited power to frequency ratio (MW/Hz). The selection of sources for microgrid would play an essential role and power management techniques could save the microgrid from the complete blackout. The modification in the power flow controller could achieve desirable results with an appropriate position of the power flow controller.

      Keywords: BESS, fuel cell, energy storage, microgrid, renewable source

Schematic illustration of the basic structure of microgrid.

      2.2.1 Selection of Source for DG

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