Long term individual load forecast under different electrical vehicles uptake scenarios
Authored by Anush Poghosyan, Danica Vukadinovic Greetham, Stephen Haben, Tamsin Lee
Date Published: 2015
DOI: 10.1016/j.apenergy.2015.02.069
Sponsors:
Ofgem
Platforms:
Repast
Java
Model Documentation:
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Model Code URLs:
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Abstract
More and more households are purchasing electric vehicles (EVs), and
this will continue as we move towards a low carbon future. There are
various projections as to the rate of EV uptake, but all predict an
increase over the next ten years. Charging these EVs will produce one of
the biggest loads on the low voltage network. To manage the network, we
must not only take into account the number of EVs taken up, but where on
the network they are charging, and at what time. To simulate the impact
on the network from high, medium and low EV uptake (as outlined by the
UK government), we present an agent-based model. We initialise the model
to assign an EV to a household based on either random distribution or
social influences - that is, a neighbour of an EV owner is more likely
to also purchase an EV. Additionally, we examine the effect of peak
behaviour on the network when charging is at day-time, night-time, or a
mix of both. The model is implemented on a neighbourhood in south-east
England using smart meter data (half hourly electricity readings) and
real life charging patterns from an EV trial. Our results indicate that
social influence can increase the peak demand on a local level (street
or feeder), meaning that medium EV uptake can create higher peak demand
than currently expected. (C) 2015 Elsevier Ltd. All rights reserved.
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