Electric Vehicles, as storage devices, may have an impact on distribution feeder voltage and regulation. As the penetration level of such devices increases, reverse power flow on the distribution feeder leads to voltage rise and hence violations of voltage boundaries defined by the American National Standards Institute (ANSI) [
3,
4]. Many studies have been conducted on distribution feeders to assess the performance of commonly used voltage regulation schemes under reverse power flow. The simulation results show that the power quality of the system can be improved by suitable location selection of the photovoltaic (PV) system or storage devices [
4]. Reference [
5,
6] provides a broad overview of the impacts of EVs on the system voltage stability and frequency. The introduction of local charging and discharging EVs to balance the loads negatively influences the efficiency of short-term load forecasting modules. Electric Vehicles characteristics are broken down into vehicle characteristics, charging characteristics, and when EVs are plugged in [
7]. The impacts of EVs are determined through regional grid analysis based on the number of vehicles, vehicle demand profile, and the effect that demand has on supply and demand. The study done in reference [
7] does not come to any specific conclusions about optimal charging patterns or grid reliability, but it does suggest that work must be done to investigate further how EVs will impact the grid. Reference [
8] provides detailed information on the distribution system modeling, which provides a valuable resource for modeling and simulating the distribution grid used in our study, the IEEE 34 bus feeder, which was released in 2003 by the IEEE power society [
9]. References [
10,
11] study the potential of EVs in the market and the value it creates through its connection to the local electrical grid. The V2G technology could have great potential for improving the reliability of the power distribution grid, where references [
12,
13] provide comprehensive studies on the applications of a smart grid that could be used in this manner, of which V2G could play a pivotal part of it. Also, the idea of charging EVs, considering renewable energy sources, has been widely investigated, especially when current governmental policies, such as the 2014 Carbone Dioxide Standards of the Environmental Protection Agency (EPA), are currently forcing the power utilities to lessen their reliance on fossil fuels via adopting strict mandates such as setting a prohibited limit on the amount of gases released from their power plants [
14]. For instance, in [
15] the researchers analyzed the day ahead scheduling of a photovoltaic-based EV charging park connected to a micro-grid. The scheduling was based on two objectives, to minimize the percentage fading in the station’s battery capacity and simultaneously maximize the daily profit of the PV-EV owner. The dynamics of the battery model were considered in their study. Reference [
16] addresses some of the technical and economic challenges during the process of designing a green recharge area for EVs with an overall goal to reduce costs and pollution connected to the charging process. Reference [
17] provides modelling of a smart charging station for electric vehicles (EVs) for DC fast charging while ensuring minimum stress on the power grid. Furthermore, they analyzed a business model with that aim to provide a cost estimation for the deployment of charging facilities in a residential area. Reference [
18] proposes a methodology aimed to allow the aggregated EV charging demand to be identified. Specifically, their methodology is based on an agent-based approach to calculate the EV charging demand in a given area. Their model simulates each EV driver in order to obtain the EV model characteristics, mobility needs, and charging processes required to reach its destination. Reference [
19] presents EVs charging and discharging the load model based on three tiers of electricity rates to study the impact of the power flow of the distribution feeder, considering EV integration utilizing a probabilistic power flow model. Their model suggests that the operational risk of the distribution network can be estimated and quantified for proper grid operation. Reference [
20] studies an optimal PEV charging control technique, taking into consideration the incorporation of the demand response (DR) signals with an overall goal to mitigate the impact of PEV charging on grid operation. The simulation of their model is verified by using GridLAB-D software, which shows that the negative impacts of PEV charging on the residential grid was successfully reduced. Reference [
21] provides more insights on the load demand on a household level, which could be a good reference for those who want to incorporate the charging of EVs on the households’ level, as most of the studies, like our own, investigate the integration on the bus and grid levels. Reference shows the management of the households’ demands that EVs could be a substantial part of it during specific hours of the day. It provides an innovative methodology for short term load forecasting of household load demand. Their approach is constructed from Feed-Forward Artificial Neural Network (FFANN), and a pre-processing Stage of Energy Disaggregation (SOED) based Data Mining Algorithms (DMA), which could incorporate the kW consumption of EV charging into the future load determination of the house demand. Finally, another important aspect to consider while reading about EVs may be to read about the importance of the power electronic circuits during the charging process of an electric vehicle, where reference [
22] provides an in-depth study about commanding the power flow conversion between the battery pack of the EVs and the load center of the power utilities, as they present a novel bidirectional converter to oversee the process of this critical power management.