Affiliation:
1. Department of Electrical Engineering, Mashhad Branch, Islamic Azad University, Mashhad, Iran
Abstract
Demand response (DR) could serve as an effective tool to further balance the
electricity demand and supply in smart grids. It is also defined as the
changes in normal electricity usage by end-use customers in response to
pricing and incentive payments. Electric cars (EVs) are potentially
distributed energy sources, which support the grid-to-vehicle (G2V) and
vehicle-to-grid (V2G) modes, and their participation in time-based (e.g.,
time of use) and incentive-based (e.g., regulation services) DR programs
helps improve the stability and reduce the potential risks to the grid.
Moreover, the smart scheduling of EV charging and discharging activities
supports the high penetration of renewable energies with volatile energy
generation. This article was focused on DR in the presence of EVs to assess
the effects of transmission line congestion on a 33-bit grid. A random model
from the standpoint of an independent system operator was used to manage the
risk and participation of EVs in the DR of smart grids. The main risk
factors were those caused by the uncertainties in renewable energies (e.g.,
wind and solar), imbalance between demand and renewable energy sources, and
transmission line congestion. The effectiveness of the model in a 33-bit
grid in response to various settings (e.g., penetration rate of EVs and risk
level) was evaluated based on the transmission line congestion and system
exploitation costs. According to the results, the use of services such as
time-based DR programs was effective in the reduction of the electricity
costs for independent system operators and aggregators. In addition, the
results demonstrated that the participation of EVs in incentive-based DR
programs with the park model was particularly effective in this regard.
Publisher
National Library of Serbia