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Article

Economic Assessment of Photovoltaics Sizing on a Sports Center’s Microgrid Equipped with PEV Chargers

by
Emmanuel Karapidakis
1,*,
George Konstantinidis
1,
Nectarios Vidakis
2 and
Sofia Yfanti
2
1
Department of Electrical and Computer Engineering, Hellenic Mediterranean University, GR-71410 Heraklion, Greece
2
Department of Mechanical Engineering, Hellenic Mediterranean University, GR-71410 Heraklion, Greece
*
Author to whom correspondence should be addressed.
Appl. Syst. Innov. 2022, 5(4), 78; https://doi.org/10.3390/asi5040078
Submission received: 21 June 2022 / Revised: 4 August 2022 / Accepted: 8 August 2022 / Published: 11 August 2022
(This article belongs to the Special Issue Smart Grids and Contemporary Electricity Markets)

Abstract

:
Large sports centers are characterized by special energy demand profiles compared to other facilities. The aim of this work is to assess the economic investment of photovoltaics (PVs) on a sport center microgrid using different charging methods and by efficiently exploiting the PV generation. The overall work is performed in the following three steps. The first step is the energy requirement analysis, the second focuses on a PEV charging strategy proposition in order to exploit the PV generation, grid electricity price, and Vehicle-to-Grid (V2G), and the third step is the net present value (NPV) analysis of the PV investment in the different scenarios. The simulations showed that the proposed charging strategy increases the NPV. In addition, the increment of PEV penetration rate leads to the maximization of the NPV. The energy and costs analysis are carried out for an application case in the Olympic Athletic Centre of Athens.

1. Introduction

1.1. Motivation

The superiority of plug-in electric vehicles (PEVs) over the conventional vehicles in terms of technical, operational and environmental benefits has led to a wide spread of their technology in various commercial applications [1]. Τhe majority of citizens living in an urban area are not expected to own a private PEV charger at home or nearby. As an extension, they are anticipated to charge their PEV somewhere they can combine some kind of activity with a charging point supply, like for instance at a working place, at the supermarket, a drive-by movie place, etc. A sport center would be an ideal site to charge their PEV, as the drivers would stay on the facility for at least an hour. Chargers at the sport center will also serve the PEV drivers that live nearby.
Due to the high load, a sport center with installed renewable energy sources (RES) can be considered as a microgrid [2,3], while grid ancillary services during normal or faulty grid conditions can further support its operation [4]. In fact, PEVs can also be considered as batteries with wheels. PEVs can store energy from RES when the electricity price is low and sell it back to the grid when the electricity price is high or when it is needed, i.e., during a demand peak shaving, a demand response, etc. Hence, a smart PEV charging station which takes into consideration RES generation can be beneficial for a microgrid to reduce its expenses, to extend RES share and to reduce the fossil fuel dependency.

1.2. Literature Review

In the literature, the sizing and operation of a microgrid have been studied taking into consideration several points of view, methodologies, and scenarios.
The authors of [5] propose an energy management system for public EV charging stations (CSs) integrated into the microgrid based on the switching mechanism from one trading market to another. The vehicle-to-grid (V2G) is considered in order to deal with the balancing of total load demand and generation. The study in [6] presents a day-ahead optimal scheduling strategy for a microgrid with EV charging station. The paper develops a mixed integer linear programming algorithm to minimize the cost of microgrid and EV charging. Only EVs with state of charge (SoC) of 80% and up can participate in V2G.
Kamankesh et al. in [7] examine the optimal day of microgrids including renewable energy sources, storage devices and plug-in hybrid electric vehicles (PHEVs) considering uncertainties using Monte Carlo simulation. They introduce a modified symbiotic organisms search algorithm which shows a superiority at other well-known algorithms in the area. In [8], the authors examine the immediate, controlled and bidirectional EV charging with varying energy storage systems that influence the operation of the microgrid.
In [9], a two-level microgrid problem is proposed. The focus is paid to the impact of an EV charging strategy that minimizes the charging cost and maximizes the RES generation use, on an isolated microgrid generation management site. The net present value (NPV) metric was used to assess the proposed method. The authors of [10] examine the effects of a controllable EV charging system on the economics of an isolated microgrid. They conclude that the control of the EV charging could increase RES sharing, and reduce CO2 emissions by reducing the operation of diesel generators.
The work in [11] analyzes the impact of V2G on PV self-consumption using different smart EV charging control algorithms and microgrid configurations. A PV system design and a dynamic charging of EV in the workplace, equipped with solar energy powered EV chargers, is investigated in [12]. In [13], Ouammi proposed an optimization framework for the smart power management and exchange of a microgrid comprised of a PV, an electric vehicle, an energy storage unit and some local loads. In addition, a vehicle-to-building concept was supported. The objective function was to reduce/shave the peak load and to fulfill the power demand of EVs.
The researchers in [14] compare the economical factor of the orientation of the PV panel to increase the power at a specific time period and the existence or absence of storage units in order to cover the need of the EV charging at the University of Palermo. In this case study, they conclude that the storage unit is not profitable. In [15], the authors investigate the fluctuation of annualized cost in a residential microgrid, according to the energy dispatch considering demand–response, when a different EV penetration rate is applied. A heuristic rule-based real time management scheme for an isolated microgrid was proposed in [16]. The results show that the EV charging cost and the burden to the microgrid was reduced.

1.3. Contribution

The main contribution of this paper is the proposed charging strategy for PEVs, whose novelty is twofold:
  • The proposed PEV charging strategy in this paper increases the NPV of the PV investment to the microgrid. More specifically, when the proposed charging strategy is active, it presents better NPV results than the ones when using a simple charging strategy, such as the PEVs charge with their nominal power when they plug into the charger. The proposed charging strategy takes into consideration the electricity price and the PV generation in order to schedule efficiently the PEV charging program; and
  • The proposed charging strategy can combine PV generation and grid electricity price in order to obtain the charging schedule of the PEVs. The results show that this combination can bring higher NPV for the PV investment.
The rest of this paper is structured as follows. In Section 2, the proposed methodology is analyzed. Section 3 presents the corresponding case study. A discussion around the study and the final results is presented in Section 4. Finally, the conclusions of this work are provided in Section 5.

2. Methodology

To evaluate the impact of different PEV penetration rates and PV sizing on a microgrid over an investment period, a sport center microgrid is examined. The case study employed for this paper is the Olympic Athletic Center of Athens (OAKA). Part of the data which naturally follows a stochastic behavior, i.e., the PEV arrivals/departures, etc., was created to represent the state of the real world as best as possible. The energy price that is bought and sold to the grid is considered to have the same electricity price. Finally, no wind turbines were considered because of their size and unsuitability to the examined area (urban site).

2.1. PEV and Charger Type

The initial considerations have to do with the PEV and Charger types. It was assumed that the percentage of PEVs that would charge at the microgrid would consist of 75% passenger EVs, 15% electric two wheelers (ETW) and 10% electric buses (EB). PEV appearance possibility is equal to its related market share. [17]. Their technical characteristics and charging limitations are shown in Table 1. The values for the charging limitation that were not known appear in Table 1 with the sign “*”and a value which is considered suitable is assigned to them [18].
In addition, it is considered that all PEVs support bidirectional energy flow and the charging and discharging have the same power limitations. Two types of chargers are considered, an alternative current (AC) of 22 kW and a direct current (DC) of 100 kW.

2.2. PEV Arrival, Departure and State of Charge

It is considered that the drivers that charge their PEV at OAKA are the drivers that work and exercise in the sport center, the drivers living in the nearby area as well as the drivers who charge their PEV at OAKA as a stopover before their destination. Most people go to work between 7:00 to 9:00. Furthermore, the majority of sport activities are between 9:00 to 13:00 and 17:00 to 20:00. Hence, most of the arrivals are estimated to take place in these hours as the majority of the PEV drivers who parked at the sport center are those who are training there. Moreover, most people return from their morning work between 15:00 to 17:00. Taking the above into consideration, the arrival profile of PEV is presented in Figure 1. Number of PEVs represent the number of PEV that charge at the sport center every day. Five different scenarios are considered as explained in Section 4.
The duration of sport activities is usually between 1 to 4 h. In addition, most people work about 8 to 9 h. Hence, the parking duration probability depending on the arriving time is presented in Figure 2.
The probability arriving SoC of the PEVs was estimated as in [1]. Figure 3 depicts the probability of the arriving PEV’s SoC.

2.3. PEV Charging Scheduling

In this section the two charging strategies of the case study will be discussed. In particular, the first strategy corresponds to uncoordinated charging strategy while the second is the one proposed in this paper.

2.3.1. Uncoordinated Charging Strategy

Uncoordinated charging is the process that the charging of the PEV starts when the PEV plugs into the charger with its nominal power until the PEV’s departure SoC is satisfied [18].

2.3.2. Proposed Charging Strategy

A rule-based algorithm is used in order to schedule the PEV charging. At first, the charging is assigned to the time slots with the lowest electricity price. The time slot is considered as a time period of Δt = 1 h. Then, a search takes place to find if there are time slots that the PEV can discharge and recharge in a profitable manner. More particular, it searches the time slots with the lowest (t1) and the highest (t2) electricity price during the parking session in which the charging power is under the permitted power limit, as it is explained below in the charging constrains. The condition that must apply in order for the PEV to participate in the discharging process is shown in Equation (1). Finally, the discharging power is calculated depending on the available charging power at the t1 and t2.
n ch · n dis > C ( t B ) C ( t S )
where nch and ndis are the charging and discharging efficiencies. In this study they are considered equal, and both are being represented by the n parameter. This coefficient is considered to be equal to 0.93 and it represents the energy losses during the charging and discharging process. The tB and tS are the time slots that the energy will be bought from and sold to the grid, respectively. C is the electricity price. The flowchart of the proposed charging strategy is illustrated in Figure 4.
The charging constrains are formulated in Equations (2)–(4).
P limit     P ( i , t )     P limit
E min ( i )     t A t D 1 ( ch ( i , t ) · n     dch ( i , t ) ) · P ( i , t ) · Δ t   +   E A ( i )     E max ( i )
t A t D 1 ( ch ( i , t ) · n     dch ( i , t ) ) · P ( i , t ) · Δ t   +   E A ( i ) =   E D ( i )
where Plimit depends on the charger and PEV power limitation, Emin(i) is the lowest energy limit of the ith PEV which is considered the 20% of the SoC and Emax(i) is the upper power limit which is considered 100% of the SoC. The ch(i,t) is a binary variable set to 1 when the P(i,t) is positive and 0 otherwise. Similarly for the dch(i,t), with the differentiation that it is set to 1 when P(i,t) is negative. ED(i) is the desirable energy of the ith PEV during its departure.
In fact, the algorithm calculates the PEV charging schedule based solely on the electricity price criterion. Hence, in this format, the discussed charging strategy would not take into consideration the PV production. The proposed charging method that is taking into consideration only the electricity pricy is referred as s1. A modification in the price, that the proposed algorithm is taking as criterion, is introduced as shown in Equation (5) to alleviate this issue. This case of the proposed charging method is referred to as s2. The charging cost in the case of the s2 is evaluated with the real electricity price.
C new ( t ) =   C ( t ) · ( c 1 ( t ) +   c 2 ( t ) )
Seasonal average PV generation curves are estimated from the known yearly data of the PV generation in order to calculate the factor c1 which varies between 0 and 1. When the estimated PV generation is the lowest, then c1 is set to 0 and vice versa. c2 is a value that is set between 0 and 1 depending on the electricity price during the parking period of each PEV. It is set to 1 when the electricity price gets its maximum value during the parking duration and to 0 when the electricity price gets its minimum value. In particular, in s1, during the parking duration, energy is saved to the PEVs’ battery when the electricity price is relatively “low”. The energy is sold back to the grid or supplies the microgrid when the electricity price is relatively “high”. In s2, PEVs store energy from RES and the grid when the electricity price is relatively “low”, and sell it back to the grid when the electricity price is relatively “high” or supply the microgrid.

2.4. Microgrid Power Balance

It is considered that the microgrid will consist of PV, PEV chargers and the loads from the sport facilities. It will also be connected to the grid. The power balance is presented in the equation below:
P L ( t ) +   P Ch ( t ) +   P SG ( t ) =   P PV ( t ) +   P Dch ( t ) +   P BG ( t )
where the energy consumption and supply are represented by the left-handed and right-handed side, respectively. PL is the load from the sport facilities, PCh is the load from PEV charging and PSG is the power sold to the grid. On the other side, PPV is the energy generated from the PVs, PDch is the energy from the PEV discharging and PBG is the power bought to the grid.
The dispatched power from PVs depends mainly on the installed capacity and the weather conditions.

2.5. Financial Model

In order to evaluate the investment financially, a discount cash flow method is applied. The net present value (NPV) is a method used to determine if an investment is profitable, by calculating the future cash inflow and outflow over the investment lifetime, discounted to the present. NPV is calculated in Equation (7).
NPV   = y = 0 N R y ( 1 + i ) y = y = 0 N S & R ( Int Cos t + O & E Cos t ) ( 1 + i ) y ,  
where Ry is the net cash flow during the year y, i is the discount rate and N is the investment lifetime. InsCost and O&ECost are the installation, and operation and maintenance costs, respectively. S&R are the savings and revenues due to the investment. The savings are the difference of the electrical cost with and without the PVs. The revenues are calculated from the energy sold to the grid from the PV and PEV discharging if V2G is considered. The investment period is set to 25 years, similar to the lifetime of the PV. S&R and O&ECost are set to 0 when y = 0 and IntCost is set to 0 when y ≠ 0. The year y = 0 is the year that the investment takes place.
In the case study, primarily, the NPV is calculated for the uncoordinated charging strategy. Then, a comparison between the cash flow of uncoordinated and proposed charging strategy is done considering PV generation and the investment period, and it is discounted to the present. This process estimates the contribution of the proposed charging strategy (s1 and s2) versus the uncoordinated strategy expressed in monetary value.

2.6. Extrapolation Monthly Results to One Year

The PV generation and the load of a generic microgrid vary during the year but they have similar behavior during the months of the same season. To calculate the economic effect of the PV sizing and the PEV penetration rate on a microgrid it is important to examine at least one year, in order to obtain statistically strong results. In order to reduce the extensive computations of the one-year calculations, and building on the fact that the PV generation and the load of the microgrid are similar between the months of the same season, four representative months are considered in this study, one for each season. The results of each selected month are multiplied by 3 in order to extrapolate the results to those of one year. In this way, the computation time and the accuracy of the results can balance out, as it was also pointed out in [8]. The months that were selected are March (for spring), June (for summer), September (for autumn) and December (for winter).

3. Case Study

OAKA is supplied by three (3) high/medium voltage (HV/MV) substations (D1, D2 and D3) and there are twenty-two (22) medium/low voltage MV/LV substations. The power limits of the HV/MV substations are P l i m i t D 1 = 6 MVA, P l i m i t D 2 = 8 MVA and P l i m i t D 3 = 6 MVA. The simplified sketch of the considered microgrid is depicted in Figure 5.
To select the appropriate data for the calculations of the next section, the sport center’s load for the years 2018–2020, is analyzed. Even though the load of the year 2020 was significantly low because of the regulations that were taken during COVID-19 pandemic, the demand peak was higher than the other two years. The total load, the average seasonal load and the load time series of OAKA for the years 2018–2020 are depicted in Figure 6, Figure 7 and Figure 8. Year 2020 was not considered in the calculations because of its extended deviations due to the pandemic. Hence, the load of the OAKA microgrid in the first year of the investment period was estimated as the average demand of the year 2018 and 2019. To incorporate the stochastic behaviour of the consumption of the microgrid, a raise of 1% of the consumption of the initial year for every next year is added, and a random value between −20 and 20 kW is added, too.
According to the power limits of D1, D2 and D3 and the predicted peak power at the end of the investment period, the maximum number of PEV chargers is calculated. The proportion of AC and DC charger was considered 80% and 20%, respectively. The majority of the PEV drivers that use DC chargers are those whose do not have adequate time to charge their PEV at an AC charger in order to reach their next charging point. In addition, most people stay long enough at the sport center and the AC chargers could cover the charging needs. Furthermore, the DC chargers are more expensive. Hence, a small number of PEVs would use DC charger. The maximum number of PEV chargers is 308 AC chargers and 77 DC chargers. In case a PEV arrives, and all chargers are occupied, it will not charge.
Finally, for simplification purposes the sport center is considered as one unit as illustrated in Figure 9. The arrows show the energy flow direction. The optimal PV and PEV charger distribution among the H/V substations is not considered in this study.

4. Results

This section provides the results obtained for the considered operation scenarios. The main aim is to investigate the economic effects of the proposed charging strategy, the PV sizing and the PEV number penetration into the microgrid. The real time electricity prices of the first year are depicted in Figure 10. It is assumed that the electricity price deviates ±5% every next year. Similarly, the PV production is assumed to deviate ±3% every next year. Figure 11 depicts the Watt per installed PV kWp obtained from a PV installation of the examined area.
Table 2 lists the input data of the optimization problem. Further than that, the PV degradation every year is considered 0.6% [28] and the efficiency of the DC/AC PV inverter is assumed to be 97.5%.
Five scenarios were considered regarding the number of the PEVs that would charge at the microgrid: (a) 100 PEVs, (b) 300 PEVs, (c) 500 PEVs, (d) 20 PEVs with 15% increase of their number every year and (e) 20 PEVs with 15% increase of their number every year, and only one-third of the PEV drivers would accept to participate in V2G. Table 3 shows the NPV of the investment when the uncoordinated charging strategy is applied. The NPV is independent from the number of PEVs in this case as it examines the contribution only of the PV investment to the microgrid. Doubling the capacity of PV leads to a corresponding doubling of the NPV. The application of the proposed charging strategy can bring more profit to the microgrid as shown in Table 4. In particular, Table 4 summarizes the gains of the proposed charging strategy compared with the uncoordinated charging strategy when the PV is installed in the sport center at the end of investment period. The proposed algorithm is examined taking into consideration only the electricity price (s1) or the electricity price and the PV generation (s2). It can be observed that, as the number of the PEV increases, the profit is increasing as well. This happens because more PEVs participate in the V2G. More specifically, the energy can be sold back to the grid if there is a surplus of energy in the microgrid and the electricity price is high, or it can supply the microgrid. In this way, there is profit from selling the energy to the grid when the electricity price is high or the microgrid can reduce its demand during peak rates of the electricity price and subsequently increase its savings. Moreover, when s2 is applied the profits are increased more than 57%. It can be concluded that taking into consideration the electricity price and the PV generation could lead to better performance of the system. Furthermore, it can be observed that the profits in scenario e are almost 20% less than in scenario d even given the PEVs that were allowed to participate in V2G were one-third less in scenario e than in scenario d. This happened because Equation (1) should hold in order for a PEV to participate in V2G. Hence, a part of the PEV that was not allowed to participate in V2G in scenario e did not participate in V2G in scenario d either. Finally, in Table 5 can be observed the payback period (PP) for the different scenarios. As the PV capacity is being increased, the PP of the proposed charging strategies tends to be same as the uncoordinated charging. On the other hand, as the number of the PEV is being increased the PP of the proposed charging strategies tends to be reduced compared to the uncoordinated charging. The increase of the PV capacity increases also the initial investment cost. In addition, the increase of the PEV number increases the profit from the smart charging process. Hence, the greater the increase in the number of electric vehicles and the lower the initial investment are, the shorter the payback period will be and vice versa.
Figure 12, Figure 13, Figure 14 and Figure 15 show the accumulated present value savings and revenues for the 100 PEVs.
Figure 16 shows the daily electricity price, PV generation, PEV charging load and total load of the OAKA microgrid when the PEV number is 500 and for different PV generation and charging strategies. The number of PEVs that is selected to be demonstrated in Figure 16 is 500 because their charging load is the highest and it can be observed better the influence of the PEV charging load on the microgrid total load curve. It can be observed that when the uncoordinated charging strategy is applied, the electricity price and the PV generation do not affect the total load of the microgrid as the PEV charges after they plug-in without taking into consideration any other factors (Figure 16a,b). On the other hand, when s1 is applied, the PEV charging load influences the total demand of the microgrid significantly, as is shown in Figure 16c,e. The peak demand of the microgrid is shifted during the time slots where the electricity price is low and new peak demand is created during the time slots where the electricity price is high. In addition, when the PV generation is introduced, s2, to the proposed charging strategy (Figure 16d,f), a part of the charging load is shifted to the time slot where the PV generation is high, and the electricity price is low.
The assessment of the profitability of the PV investment in a microgrid equipped with PEV charger was examined in this study. The key finding from the results is that the application of a smart charging strategy and V2G can increase the NPV of the PV investment in a microgrid. In addition, the proposed charging algorithm can change the load curve when the PEV charging load is substantial, by scheduling the charging of the PEVs when the electricity price is low and the discharging when the electricity price is high, as shown in Figure 16. Some limitations of the approach of this study are that the charging policies, the electricity price, the microgrid load, and the solar irradiation prediction remain constant during the investment lifetime.
Moreover, the charging policies play a significant role in the profits of the microgrid. In this study it is assumed that the profits of V2G will be collected from the microgrid. However, part of the profits could go to the PEV drivers. In addition, charging policies should take into consideration the cost of battery degradation caused by the participation of PEVs in V2G. Furthermore, not all drivers would accept to participate in V2G. Hence, the profit of the microgrid would be reduced. While the model considers the uncertainties of the electricity price, the microgrid load and the solar irradiation, no specific prediction model for the drivers’ incentives was used. These factors can potentially change the anticipated results. Finally, the arriving and departure of PEVs is assumed to be similar to the first year. The PEV consumption profile has a major effect on the optimization problem. The accuracy of this profile is able to render the study reliable enough. However, the stochastic behavior of PEV drivers cannot guarantee a perfectly accurate profile.

5. Conclusions

In this article, the economic effect of different numbers of PEV, PV sizing and charging strategies on a microgrid has been examined. In particular, a simple rule-based algorithm is proposed to schedule the PEV charging. The proposed rule-based algorithm has been proven to be more profitable for the microgrid compared to the case of uncoordinated charging. It also increases the NPV of the investment. This work serves as a proof of concept which validates the hypothesis that the combination of smart charging of the PEVs and the PV installation can indeed increase the revenue and savings of the microgrid.
Future research will focus on how different charging policies can affect the PEV charging demand and microgrid cost.

Author Contributions

Conceptualization, E.K. and N.V.; methodology, G.K.; software, G.K.; validation, E.K., N.V. and S.Y.; formal analysis, G.K.; investigation, E.K. and G.K.; resources, E.K.; data curation, S.Y.; writing—original draft preparation, G.K.; writing—review and editing, E.K.; visualization, S.Y.; supervision, E.K. and N.V.; project administration, E.K. and N.V.; funding acquisition, N.V. All authors have read and agreed to the published version of the manuscript.

Funding

This research has been funded by Olympic Athletic Center of Athens (OAKA).

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Real-time recorded data from Olympic Athletic Center of Athens (OAKA), and supporting data from the references were used.

Conflicts of Interest

The authors declare no conflict of interest.

Nomenclature

nchcharging efficiency
ndicdischarging efficiency
ncharging and discharging efficiency
Celectricity price
tBtime slot that the energy will be bought from the grid
tStime slot that the energy will be sold to the grid
Plimitcharging power limit
Ppower assigned to the PEV charger
Eminlower energy limit of the PEV’s battery
Emaxupper power limit of the PEV’s battery
chbinary variable denoting charging mode of the PEV
dchbinary variable denoting discharging mode of the PEV
EDdesirable energy of the PEV during its departure
c1variable that depends on the PV generation value
c2variable that depends on the electricity price value
PLload of the sport facilities
PChload from PEV charging
PPVenergy generated from the PVs
PDchenergy from the PEV discharging
Rynet cash flow during the year y
S&Rsavings and revenues due to the investment
IntCostInstallation costs
O&ECostoperation and maintenance costs

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  19. Renault Zoe ZE50 R135. Available online: https://ev-database.org/car/1205/Renault-Zoe-ZE50-R135 (accessed on 11 April 2022).
  20. Tesla Model 3. Available online: https://ev-database.org/car/1555/Tesla-Model-3 (accessed on 11 April 2022).
  21. Volkswagen e-Golf. Available online: https://ev-database.org/car/1087/Volkswagen-e-Golf (accessed on 11 April 2022).
  22. Hyundai Kona Electric 64 kWh. Available online: https://ev-database.org/car/1423/Hyundai-Kona-Electric-64-kWh (accessed on 11 April 2022).
  23. Nissan Leaf. Available online: https://ev-database.org/car/1106/Nissan-Leaf (accessed on 11 April 2022).
  24. BMW i3 120, Ah. Available online: https://ev-database.org/car/1145/BMW-i3-120-Ah (accessed on 11 April 2022).
  25. Vespa Elettrica 70 km/h. Available online: https://www.vespa.com/us_EN/models/elettrica/elettrica-70-kmh-3-6-kw-electric-motorcycle/ (accessed on 11 April 2022).
  26. Zero, S.R. Available online: https://www.zeromotorcycles.com/model/zero-sr (accessed on 11 April 2022).
  27. Electric Midi/Minibus. Available online: https://thelionelectric.com/en/products/electric_minibus (accessed on 11 April 2022).
  28. STAT FAQs Part 2: Lifetime of PV Panels. Available online: https://www.nrel.gov/state-local-tribal/blog/posts/stat-faqs-part2-lifetime-of-pv-panels.html (accessed on 27 April 2022).
  29. Renewable Power Generation Costs in 2020. Available online: https://www.irena.org/publications/2021/Jun/Renewable-Power-Costs-in-2020 (accessed on 27 April 2022).
Figure 1. PEV arrival profile.
Figure 1. PEV arrival profile.
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Figure 2. PEV parking duration probability when they arrive between (a) 00:00 to 8:00, (b) 9:00 to 13:00 or 17:00 to 20:00, (c) 14:00 to 16:00 and (d) 21:00 to 23:00.
Figure 2. PEV parking duration probability when they arrive between (a) 00:00 to 8:00, (b) 9:00 to 13:00 or 17:00 to 20:00, (c) 14:00 to 16:00 and (d) 21:00 to 23:00.
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Figure 3. Arriving PEV state of charge probability.
Figure 3. Arriving PEV state of charge probability.
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Figure 4. Flowchart of the proposed charging strategy.
Figure 4. Flowchart of the proposed charging strategy.
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Figure 5. Topology of the OAKA HV/MV substations.
Figure 5. Topology of the OAKA HV/MV substations.
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Figure 6. Load per substation for the years 2018–2020.
Figure 6. Load per substation for the years 2018–2020.
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Figure 7. Average seasonal total load for the years 2018–2020.
Figure 7. Average seasonal total load for the years 2018–2020.
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Figure 8. Total load time series for the years 2018–2020.
Figure 8. Total load time series for the years 2018–2020.
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Figure 9. Microgrid layout.
Figure 9. Microgrid layout.
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Figure 10. Electricity price in the first year.
Figure 10. Electricity price in the first year.
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Figure 11. Yearly Watt per installed PV kWp.
Figure 11. Yearly Watt per installed PV kWp.
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Figure 12. Accumulated present value savings and revenue throughout the investment years (PV = 1000 kWp).
Figure 12. Accumulated present value savings and revenue throughout the investment years (PV = 1000 kWp).
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Figure 13. Accumulated present value savings throughout the investment years (PV = 2000 kWp).
Figure 13. Accumulated present value savings throughout the investment years (PV = 2000 kWp).
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Figure 14. Accumulated present value savings throughout the investment years (PV = 3000 kWp).
Figure 14. Accumulated present value savings throughout the investment years (PV = 3000 kWp).
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Figure 15. Accumulated present value savings throughout the investment years (PV = 4000 kWp).
Figure 15. Accumulated present value savings throughout the investment years (PV = 4000 kWp).
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Figure 16. Electricity price, PV generation, PEV charging load and total load of the microgrid when PEV number = 500 and (a) PV = 1000 kWp and charging strategy: uncoordinated, (b) PV = 4000 kWp and charging strategy: uncoordinated, (c) PV = 1000 kWp and charging strategy: proposed s1, (d) PV = 4000 kWp and charging strategy: proposed s1, (e) PV = 1000 kWp and charging strategy: proposed s2 and, (f) PV = 4000 kWp and charging strategy: proposed s2.
Figure 16. Electricity price, PV generation, PEV charging load and total load of the microgrid when PEV number = 500 and (a) PV = 1000 kWp and charging strategy: uncoordinated, (b) PV = 4000 kWp and charging strategy: uncoordinated, (c) PV = 1000 kWp and charging strategy: proposed s1, (d) PV = 4000 kWp and charging strategy: proposed s1, (e) PV = 1000 kWp and charging strategy: proposed s2 and, (f) PV = 4000 kWp and charging strategy: proposed s2.
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Table 1. PEV type, model, possibility appearance to the sport center, battery capacity and charging limitations.
Table 1. PEV type, model, possibility appearance to the sport center, battery capacity and charging limitations.
PEV TypePEV ModelPEV Appearance PossibilityBattery Capacity (kWh)On-Board Charger Limitation (kW)
ACDC
EVRenault Zoe [19]0.18522246
Tesla Model 3 [20]0.235711170
Volkswagen e-Golf [21]0.1327.240
Hyundai Kona EV [22]0.08641177
Nissan Leaf [23]0.09376.646
BMW i3 [24]0.0737.91149
ETWVespa Elettrica [25]0.094.21.9 *3 *
Zero SR [26]0.0612.63.36
EBElectric Minibuses [27]0.116019.2100 *
Table 2. Economic data of the study.
Table 2. Economic data of the study.
Initial (€/kWh)O&M per Year (€/kWh)Inflations Rate (%/year)Investment Period (Years)
839 [29]9.5 [29]625
Table 3. Net Present Value when the uncoordinated charging is applied.
Table 3. Net Present Value when the uncoordinated charging is applied.
PV (kWp)Scenarios
a/b/c/d/e
1000348,108 €
2000696,216 €
30001,044,324 €
40001,392,432 €
Table 4. Contribution expressed in monetary value of the proposed charging strategy compared to uncoordinated charging strategy.
Table 4. Contribution expressed in monetary value of the proposed charging strategy compared to uncoordinated charging strategy.
PV (kWp)Scenarios
abcde
s1s2s1s2s1s2s1s2s1s2
100069,985 €113,883 €221,815 €383,782 €395,514 €630,491 €87,349 €138,934 €70,437 €115,431 €
2000
3000
4000
Table 5. Payback period estimated in years.
Table 5. Payback period estimated in years.
PV (kWp)Scenarios
abcd
Unc.s1s2Unc.s1s2Unc.s1s2Unc.s1s2
1000131212131191398131312
20001312121111101313
30001313121212111313
40001313131312111313
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Karapidakis, E.; Konstantinidis, G.; Vidakis, N.; Yfanti, S. Economic Assessment of Photovoltaics Sizing on a Sports Center’s Microgrid Equipped with PEV Chargers. Appl. Syst. Innov. 2022, 5, 78. https://doi.org/10.3390/asi5040078

AMA Style

Karapidakis E, Konstantinidis G, Vidakis N, Yfanti S. Economic Assessment of Photovoltaics Sizing on a Sports Center’s Microgrid Equipped with PEV Chargers. Applied System Innovation. 2022; 5(4):78. https://doi.org/10.3390/asi5040078

Chicago/Turabian Style

Karapidakis, Emmanuel, George Konstantinidis, Nectarios Vidakis, and Sofia Yfanti. 2022. "Economic Assessment of Photovoltaics Sizing on a Sports Center’s Microgrid Equipped with PEV Chargers" Applied System Innovation 5, no. 4: 78. https://doi.org/10.3390/asi5040078

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