Figure 1.
Reference scenario of installed capacity in GW (a) and yearly national energy balance in TWh (b) for Italian power system in 2030. Consumed energy equals produced energy, minus losses and overgeneration.
Figure 1.
Reference scenario of installed capacity in GW (a) and yearly national energy balance in TWh (b) for Italian power system in 2030. Consumed energy equals produced energy, minus losses and overgeneration.
Figure 2.
Numerosity and distribution in the Italian territory of electric passenger cars in 2030, according to base-case and accelerated scenarios, clustered according to the electricity market bidding zones (a) and population density (b). Each zone is highlighted with a different color (on the left). Dark dots show the cities considered in the urban diffusion, while the rest of the territory (light green) is considered in rural cluster.
Figure 2.
Numerosity and distribution in the Italian territory of electric passenger cars in 2030, according to base-case and accelerated scenarios, clustered according to the electricity market bidding zones (a) and population density (b). Each zone is highlighted with a different color (on the left). Dark dots show the cities considered in the urban diffusion, while the rest of the territory (light green) is considered in rural cluster.
Figure 3.
Charging mode breakdown for passenger cars in different contexts (metropolitan and rural) and typical days (workday and holiday).
Figure 3.
Charging mode breakdown for passenger cars in different contexts (metropolitan and rural) and typical days (workday and holiday).
Figure 4.
The 24 h Boolean arrays for each EV object in the Presence, Charging, and NOT Charging periods (blue cells = 1; white cells = 0), and numerical arrays for charging Power.
Figure 4.
The 24 h Boolean arrays for each EV object in the Presence, Charging, and NOT Charging periods (blue cells = 1; white cells = 0), and numerical arrays for charging Power.
Figure 5.
Power and energy flexibility estimation for a generic EV object.
Figure 5.
Power and energy flexibility estimation for a generic EV object.
Figure 6.
Schemes for the considered synthetic MV networks for urban (a) and rural (b) areas. The number and the color scale are coherent with the maximum exchanged power in MW (positive, yellow to red, for injection; negative, green to blue, for withdrawal) for the MV users (>0.1 MW of maximum exchanged power).
Figure 6.
Schemes for the considered synthetic MV networks for urban (a) and rural (b) areas. The number and the color scale are coherent with the maximum exchanged power in MW (positive, yellow to red, for injection; negative, green to blue, for withdrawal) for the MV users (>0.1 MW of maximum exchanged power).
Figure 7.
Block diagram of the market models used in the power system dispatching simulation.
Figure 7.
Block diagram of the market models used in the power system dispatching simulation.
Figure 8.
DAM (black line) and flexibility (blue and orange areas) profiles in the accelerated case for each charging mode on a working, winter day: (a) residential, (b) work, (c) public slow, (d) public fast, (e) B2C mall, (f) B2C parking, (g) LCV, (h) HCV, (i) PT. Profiles shaded in yellow have a different (larger) scale on the y-axis.
Figure 8.
DAM (black line) and flexibility (blue and orange areas) profiles in the accelerated case for each charging mode on a working, winter day: (a) residential, (b) work, (c) public slow, (d) public fast, (e) B2C mall, (f) B2C parking, (g) LCV, (h) HCV, (i) PT. Profiles shaded in yellow have a different (larger) scale on the y-axis.
Figure 9.
Power demand of EVs at the Italian system level on a working, winter day.
Figure 9.
Power demand of EVs at the Italian system level on a working, winter day.
Figure 10.
Evolution of load factors in the distribution network of rural areas as-is (2022, dark green) and to-be (2030, bright green).
Figure 10.
Evolution of load factors in the distribution network of rural areas as-is (2022, dark green) and to-be (2030, bright green).
Figure 11.
Evolution of load factors in the distribution network of metropolitan areas as-is (2022, dark green) and to-be (2030, bright green).
Figure 11.
Evolution of load factors in the distribution network of metropolitan areas as-is (2022, dark green) and to-be (2030, bright green).
Figure 12.
Evolution of power profiles for different grid components in a metropolitan network, in the reference year (dark green line) and in a 2030 scenario (light green line). The red dotted line indicates the violation threshold for each network component.
Figure 12.
Evolution of power profiles for different grid components in a metropolitan network, in the reference year (dark green line) and in a 2030 scenario (light green line). The red dotted line indicates the violation threshold for each network component.
Figure 13.
Voltage profiles and violations in rural networks. All the voltages in the network are considered. The color represents the frequency in hours per year of that voltage level (blue is the minimum, yellow is the maximum).
Figure 13.
Voltage profiles and violations in rural networks. All the voltages in the network are considered. The color represents the frequency in hours per year of that voltage level (blue is the minimum, yellow is the maximum).
Figure 14.
Costs and NP-RES overgeneration associated with power system dispatching in the NO VGI case.
Figure 14.
Costs and NP-RES overgeneration associated with power system dispatching in the NO VGI case.
Figure 15.
Power profiles for dumb (blue) and smart (green) residential charging.
Figure 15.
Power profiles for dumb (blue) and smart (green) residential charging.
Figure 16.
Impact of VGI implementation on LV lines (top), MV/LV transformers (mid), and MV lines (bottom) for the distribution network of an urban area.
Figure 16.
Impact of VGI implementation on LV lines (top), MV/LV transformers (mid), and MV lines (bottom) for the distribution network of an urban area.
Figure 17.
Impact of VGI implementation on LV lines (top), MV/LV transformers (mid), and MV lines (bottom) for the distribution network of a rural area. Lightblue is for increase terms, dark blue is for reduction terms.
Figure 17.
Impact of VGI implementation on LV lines (top), MV/LV transformers (mid), and MV lines (bottom) for the distribution network of a rural area. Lightblue is for increase terms, dark blue is for reduction terms.
Figure 18.
Voltage profiles and violations in rural networks with VGI. The color represents the frequency in hours per year of that voltage level (blue is the minimum, yellow is the maximum).
Figure 18.
Voltage profiles and violations in rural networks with VGI. The color represents the frequency in hours per year of that voltage level (blue is the minimum, yellow is the maximum).
Figure 19.
Dispatching costs and NP-RES overgeneration comparison for NO VGI vs. VGI case.
Figure 19.
Dispatching costs and NP-RES overgeneration comparison for NO VGI vs. VGI case.
Figure 20.
Reserve procurement, energy activated in ASM scheduling phase, and balancing in WITH VGI case, accelerated scenario.
Figure 20.
Reserve procurement, energy activated in ASM scheduling phase, and balancing in WITH VGI case, accelerated scenario.
Figure 21.
Yearly reserve provided by each charging mode in cold (left) and warm (right) seasons, represented on a 24 h time profile.
Figure 21.
Yearly reserve provided by each charging mode in cold (left) and warm (right) seasons, represented on a 24 h time profile.
Figure 22.
Yearly balancing energy provided by each charging mode in cold (left) and warm (right) seasons, positive for upward (discharging) and negative for downward (charging).
Figure 22.
Yearly balancing energy provided by each charging mode in cold (left) and warm (right) seasons, positive for upward (discharging) and negative for downward (charging).
Figure 23.
Sensitivity analysis results (left) and inputs (right).
Figure 23.
Sensitivity analysis results (left) and inputs (right).
Table 1.
Passenger car reference data and shares used in the analysis, distinguishing between plug-in hybrid and battery electric vehicles.
Table 1.
Passenger car reference data and shares used in the analysis, distinguishing between plug-in hybrid and battery electric vehicles.
Category | Battery (kWh) | AC Charging Power (kW) | DC Charging Power (kW) | Share of Total |
---|
PHEV A-B-C | 12 | 3.7 | - | 14% |
PHEV D-E+ | 15 | 7 | - | 2% |
BEV A | 45 | 7 | 50 | 35% |
BEV B | 55 | 11 | 50 | 15% |
BEV C | 65 | 11 | 100 | 22% |
BEV D | 80 | 11 | 100 | 8% |
BEV E+ | 100 | 11 | 150 | 4% |
Table 2.
Main assumptions and reference data concerning goods and public transportation used in the analysis.
Table 2.
Main assumptions and reference data concerning goods and public transportation used in the analysis.
Category | Base Scenario Diffusion (kEV) | Accelerated Scenario Diffusion (kEV) | Battery (kWh) | AC Charging Power (kW) | DC Charging Power (kW) | Consumption (kWh/100 km) | Mileage (km/year) |
---|
LCV | 530 | 750 | 75 | 22 | 150 | 35 | 20,000 |
HCV | 30 | 50 | 400 | 22 | 350 | 150 | 35,000 |
PT | 5 | 7 | 460 | 22 | 350 | 150 | 45,000 |
Table 3.
Definition and characterization of EV charging modes, with reference values utilized for state-of-charge management, charging power, and V2G penetration.
Table 4.
Metadata associated with each EV object within the Monte Carlo procedure.
Table 4.
Metadata associated with each EV object within the Monte Carlo procedure.
Key | Symbol | Unit of Measure | Notes |
---|
Battery capacity | | kWh | Based on the selected EV segment |
Charging power | | kW | Minimum between the EVSE charging power (based on charging mode) and the EV charging power (based on EV segment) |
V2G flag | - | - | Boolean based on the V2G penetration of the considered charging mode |
Entry time | | h | The connection time of the EV, based on a random extraction from the entry profile of the considered charging mode |
Exit time | | h | The disconnection time of the EV, based on a random extraction from the exit profile of the considered charging mode |
Stop duration | | h | |
Initial SoC | | % | Based on the SoC distribution for the considered charging mode |
Desired final SoC | | % | Based on the SoC distribution for the considered charging mode |
Requested energy | | kWh | |
Real final SoC | | % | |
Table 5.
Metadata of the adopted networks.
Table 5.
Metadata of the adopted networks.
| Rural Network | Urban Network |
---|
Number of MV nodes [#] | 228 | 178 |
Number of LV nodes [#] | 1371 | 2575 |
MV lines’ length [km] | 192 | 44 |
LV lines’ length [km] | 95 | 113 |
HV/MV transformer power [MVA] | 25 | 63 |
MV/LV transformers [#] | 105 | 103 |
MV/LV transformers’ power [MVA] | 17.4 | 47 |
Maximum load [MW] | 10.2 | 37.2 |
Maximum generation [MW] | 10.5 | 2.7 |
Table 6.
EVSE data considered in simulations of the distribution networks.
Table 6.
EVSE data considered in simulations of the distribution networks.
| Residential | Work-place | Public Slow | Public Fast | B2C Mall | B2C Park | LCV | HCV | PT |
---|
Charging points per charging station | 1 | 5 | 4 | 6 | 8 | 8 | 4 | 6 | 10 |
Daily vehicles per charging point | 1 | 1 | 10 | 10 | 10 | 1 | 4 | 3 | 1 |
Table 7.
Number of charging stations in tested networks.
Table 7.
Number of charging stations in tested networks.
Network | Residential | Workplace | Public Slow | Public Fast | B2C Mall | B2C Park | LCV | HCV | PT |
---|
Urban | 1865 | 210 | 8 | 4 | 17 | 6 | 23 | 2 | 1 |
Rural | 744 | 62 | 3 | 2 | 3 | 1 | 9 | 1 | 1 |
Table 8.
Number of served EVs, overall energy supplied, and maximum withdrawn power in tested networks.
Table 8.
Number of served EVs, overall energy supplied, and maximum withdrawn power in tested networks.
Network | Cars | LCV | HCV | PT | Total Energy (MWh) | Max Power (MW) |
---|
Urban | 3885 | 363 | 24 | 8 | 35 | 4 |
Rural | 1283 | 144 | 10 | 4 | 13 | 1.6 |
Table 9.
Cost of pollutant emissions assumed to calculate the environmental impact of power system dispatching.
Table 9.
Cost of pollutant emissions assumed to calculate the environmental impact of power system dispatching.
| Social Cost | ETS Permits’ Cost | Residual Cost of Externality | Unit of Measurement |
---|
CO2 | 100 | 95 | 5 | EUR/ton |
NOx | 39,500 | - | 39,500 | EUR/ton |
SO2 | 25,400 | - | 25,400 | EUR/ton |
PM2.5 | 100,100 | - | 100,100 | EUR/ton |
PM10 | 38,000 | - | 380,00 | EUR/ton |
Table 10.
Total installed energy storage and PV capacity resulting from VGI implementation.
Table 10.
Total installed energy storage and PV capacity resulting from VGI implementation.
Network | Storage (MWh) | Photovoltaic (MW) |
---|
Urban | 3.3 | 3.0 |
Rural | 0.8 | 0.8 |
Table 11.
Pollutants and social costs.
Table 11.
Pollutants and social costs.
Product | Emissions—NO VGI (ton) | Emissions—VGI (ton) | Avoided Cost—VGI (B EUR) |
---|
CO2 | 1,633,000 | 958,000 | 3.4 |
NOx | 1473 | 864 | 24.1 |
SO2 | 75 | 44 | 0.4 |
PM 2.5 | 118 | 69 | 4.9 |
PM 10 | 41 | 24 | 1.2 |
Table 12.
Summary of the most important impacts of EVs’ mass diffusion on distribution network development costs and power system dispatching expenses.
Table 12.
Summary of the most important impacts of EVs’ mass diffusion on distribution network development costs and power system dispatching expenses.
Impacts on distribution network development costs | Violations with short duration (some minutes) but high intensity on LV lines, well distributed during the daytime and mostly linked to fast charging |
Violations with good duration (>30 min) and low intensity on MV lines, mainly due to EV charging and base load overlapping during the evening |
Urban areas characterized by overloading phenomena (short lines + high load density), while rural areas interested by voltage fluctuations (long lines + major PV penetration) |
Impacts on power system dispatching expenses | Poor impact on total system demand (+4%) and peak load (+5%) |
Negligible impact on dispatching costs because the uncertainty linked to EV charging is much lower than NP-RES production |
Table 13.
Summary of the most important benefits of VGI implementation for distribution network planning and power system dispatching costs.
Table 13.
Summary of the most important benefits of VGI implementation for distribution network planning and power system dispatching costs.
Benefits for distribution network development costs | Smart-charging (V1G and V2G) practices reduce the network load factor by 13% on average, with a specific advantage during morning and evening load peaks |
BESSs coupled with fast and ultra-fast charging reduce the number of overloading violations, especially on low-voltage lines |
The coordinated exploitation of NP-RES production for EV charging reduces the overloading and voltage fluctuation issues |
Benefits for power system dispatching expenses | Enabling EVs to system dispatch avoids the start-up of thermoelectric units and the curtailment of NP-RES during the ASM ex ante phase, reducing the corresponding overgeneration by 2.5 TWh/y (45% of the ASM-related overgeneration) |
EVs’ contribution to system dispatching is relevant both ex ante and in real-time, with 15% of total power reserves allocated to EVs (6% of upward ones, 21% of downward ones), and 9 TWh/y of regulating energy provided by EVs out of a total of 15 TWh/y (4 TWh/y upward and 5 TW/y downward) |