Cyberattack on the Microgrids Through Price Modification
- URL: http://arxiv.org/abs/2005.08757v1
- Date: Fri, 15 May 2020 17:14:45 GMT
- Title: Cyberattack on the Microgrids Through Price Modification
- Authors: Subhankar Mishra
- Abstract summary: We study the effect of price modification of electricity attack on the microgrid, given that they are able to operate independently from the main grid.
This attack consists of two stages, 1) Separate the microgrids from the main grid (islanding) and 2) Failing the nodes inside the microgrid.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recent massive failures in the power grid acted as a wake up call for all
utilities and consumers. This leads to aggressive pursue a more intelligent
grid which addresses the concerns of reliability, efficiency, security, quality
and sustainability for the energy consumers and producers alike. One of the
many features of the smart grid is a discrete energy system consisting of
distributed energy sources capable of operating independently from the main
grid known as the microgrid. The main focus of the microgrid is to ensure a
reliable and affordable energy security. However, it also can be vulnerable to
cyber attack and we study the effect of price modification of electricity
attack on the microgrid, given that they are able to operate independently from
the main grid. This attack consists of two stages, 1) Separate the microgrids
from the main grid (islanding) and 2) Failing the nodes inside the microgrid.
Empirical results on IEEE Bus data help us evaluate our approach under various
settings of grid parameters.
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