Author :
O´Connell, Alison ; Keane, Andrew ; Flynn, Damian
Abstract :
Summary form only given. The integration of electric vehicles (EVs) poses potential issues for low voltage (LV) distribution networks, such as excessive voltage deviations and overloading of equipment. Controlled EV charging is seen as one possibility for reducing, or even eliminating, these issues. The implementation of controlled charging schemes, in particular centralized schemes, can require forecasts of a number of variables, e.g., household loads, EV availability, and battery requirements. The unpredictability of individual customer behavior may, however, lead to large variations between forecast and realized behavior. This work presents a multi-period, unbalanced load flow and rolling optimization method, which focuses on controlling the rate and times at which EVs charge over a 24-h time horizon, with a minimum cost objective, subject to certain constraints. Inputs are updated and a new optimization is performed at each time step so that deviations from the initial forecast can be readily accounted for.
Keywords :
distribution networks; electric vehicles; load flow; optimisation; secondary cells; EV charging; LV distribution networks; battery; electric vehicle charging control; equipment overloading; household loads; low voltage distribution networks; rolling multiperiod optimization; Availability; Educational institutions; Electric vehicles; IEEE Potentials; Low voltage; Optimization; Voltage control;