Simulation as enabler for Engineering Future Smart Grids

  • Agostino G. Bruzzone 
  • Kirill Sinelshchikov,
  • Antonio Giovanetti
  • a,c Simulation Team, SIM4Future, via Trento 43, 16145 Genova, Italy
  • Simulation Team, Genova, Italy
Cite as
Bruzzone A., Sinelshchikov K., Giovanetti A. (2021). Simulation as enabler for Engineering Future Smart Grids. Proceedings of the 9th International Workshop on Simulation for Energy, Sustainable Development & Environment (SESDE 2021), pp. 85-88. DOI: https://doi.org/10.46354/i3m.2021.sesde.012

Abstract

The article presents a study on utilization of simulation to support engineering and governance of smart grids. In particular, it is provided analysis of key factors responsible for efficiency of energy production in smart grids, developed a conceptual model of the target system as well as provided a hypothetical case study in which the proposed solution is expected to be tested.

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