Electric Vehicle Aggregate Power Flow Prediction and Smart Charging System for Distributed Renewable Energy Self-Consumption Optimization
Abstract
:1. Introduction
2. EVs Power Flows Forecasting Methods
- Electrical loads, for example, householder consumers, buildings, offices, and industries that absorb the power from either the grid or the power sources inside the PED;
- Internal power sources, which generate the power from a non-programmable source such as wind and sun, or controllable plants such as cogeneration, biogas, and hydropower plants;
- Energy storage systems (ESS), such as battery ESS (BESS) which can consist of a centralized system or many decentralized power storage units. Storage units exchange power with loads and the grid;
- One or more points of grid connection, through which it is possible to absorb/inject the power from/to the grid.
- Optimizing self-consumption to minimize the charging cost and maximize the charging from internal RES (SC);
- EV owners and TSO (V1G and V2G) could maximize profits providing ancillary services to the grid.
- The maximum available power which is provided by the charging station (CS) [kW];
- The maximum power that the vehicle batteries can absorb [kW]. This power depends on the constant current–constant voltage (CC–CV) stage and can change during the charging process;
- The maximum energy that the vehicle’s battery can store. It is the maximum available capacity of the battery [kWh];
- The initial state of charge (), i.e., the SOC value that corresponds to the start of the charging moment;
- The time of arrival () and departure () of the vehicle at/from the parking lot. Utilizing and of the i-th vehicle, one could obtain daily parking time () as in Equation (3):
2.1. Charging Infrastructure Analysis
2.2. Electric Car Fleet Analysis
2.3. Analysis of Drivers’ Behavior and Consumptions
2.4. Parking Time Analysis
- The vehicle is plugged, but the SOC reaches the maximum value, the charging stops, and =;
- The vehicle is unplugged because the users left the parking lot even if the charging is incomplete, <.
2.5. EVs’ Power Flow Calculation Algorithms
3. The Charging Management System: Logic and Aims
4. Reference Scenario and Results of the EVs Power Flows’ Calculation Method
5. CMS Effects on Power Flow: Smart Charging Mode
6. Discussion
7. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Car Model | N° Registered | % of the Total EVs | Battery Capacity [kWh] | Consumptions [kWh/100km] | Max AC Charging [kW] | Max DC Charging [kW] |
---|---|---|---|---|---|---|
Smart Fortwo | 2359 | 23.51 | 17.6 | 16.1 | 4.6 | - |
Renault ZOE | 2180 | 21.73 | 44.1 | 17.5 | 22 | 46 |
Tesla Model 3 | 1942 | 19.35 | 50 | 14.9 | 11 | 170 |
Nissan Leaf | 1266 | 12.62 | 40 | 17.1 | 6.6 | 50 |
Smart Forfour | 613 | 6.11 | 17.6 | 16.5 | 4.6 | - |
BMW i3 | 483 | 4.81 | 42.2 | 14.6 | 11 | 50 |
Hyundai Kona | 470 | 4.68 | 39 | 15 | 11 | 50 |
Tesla Model S | 258 | 2.57 | 100 | 19 | 16.5 | 200 |
Tesla Model X | 249 | 2.48 | 100 | 22.6 | 16.5 | 200 |
Jaguar I-Pace | 211 | 2.10 | 90 | 27.5 | 7 | 100 |
Distance Group | Distance [km] | % of Drivers’ Population |
---|---|---|
Close | 0–8 | 10 |
Short | 8–40 | 60 |
Medium | 40–180 | 27 |
Long | >180 | 3 |
1st Group | 2nd Group | Total Population | |
---|---|---|---|
Arrivals events | |||
Time interval | [00:00–12:00] | [12:00–24:00] | [00:00–24:00] |
Vehicle number | 126 | 34 | 160 |
% of total population | 79% | 21% | 100% |
Distr. function | NF1 | NF2 | NF1 + NF2 |
Distr. parameters | 09:15 1 h 30′ | 14:45 1 h 15′ | |
Departures events | |||
Time interval | 00:00–14:00 | [14:00–24:00] | [00:00–24:00] |
Vehicle number | 51 | 109 | 160 |
% of total population | 32% | 68% | 100% |
Distr. function | WF1 | WF2 | WF1 + WF2 |
Distr. parameters | 12:15 2 h 45′ | 17:45 3 h 15′ |
Bundle | Parameter | Unit | Resolution | Data Type | Example |
---|---|---|---|---|---|
EV CS | Identification code | - | - | String | xx21 |
Charging mode | - | - | String | AC | |
Connector topology | - | - | String | Type 2 | |
Max rating | kW | - | Float | 22 | |
Power | kW | 1–15 min | Float | 12/05/2019, 10:45, 16.5 | |
N° of plugged EVs | - | 1–15 min | Integer | 12/05/2019, 10:45, 45 | |
Total CMS–CS | - | - | Integer | 100 | |
Power Source | Topology | - | - | String | Non-programmable |
Name | - | - | String | PV plant | |
Power | kW | 1–15 min | Float | 12/05/2019, 10:45, 247.7 | |
PCC Load | POD code | String | xxx3 | ||
Power | kW | 1–15 min | Float | 12/05/2019, 10:45, 341.8 |
PV Cond. | Worst | Mean | Best | |||||||
---|---|---|---|---|---|---|---|---|---|---|
590 | 2090 | 3527 | ||||||||
1 | 375 | 60% | 100% | +7% | 100% | 100% | +1% | 100% | 100% | +0% |
3 | 1510 | 32% | 39% | +30% | 77% | 100% | +23% | 94% | 100% | +17% |
7 | 2855 | 22% | 22% | +56% | 62% | 79% | +47% | 78% | 100% | +37% |
PV | Worst | Mean | Best | Worst | Mean | Best | Worst | Mean | Best |
---|---|---|---|---|---|---|---|---|---|
1 | +41% | 0% | 0% | −4% | −1% | 0% | −11% | 0% | 0% |
3 | +68% | +24% | +6% | −24% | −14% | −10% | −61% | −9% | −4% |
7 | +70% | +38% | +23% | −52% | −37% | −27% | −78% | −27% | −11% |
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Lo Franco, F.; Ricco, M.; Mandrioli, R.; Grandi, G. Electric Vehicle Aggregate Power Flow Prediction and Smart Charging System for Distributed Renewable Energy Self-Consumption Optimization. Energies 2020, 13, 5003. https://doi.org/10.3390/en13195003
Lo Franco F, Ricco M, Mandrioli R, Grandi G. Electric Vehicle Aggregate Power Flow Prediction and Smart Charging System for Distributed Renewable Energy Self-Consumption Optimization. Energies. 2020; 13(19):5003. https://doi.org/10.3390/en13195003
Chicago/Turabian StyleLo Franco, Francesco, Mattia Ricco, Riccardo Mandrioli, and Gabriele Grandi. 2020. "Electric Vehicle Aggregate Power Flow Prediction and Smart Charging System for Distributed Renewable Energy Self-Consumption Optimization" Energies 13, no. 19: 5003. https://doi.org/10.3390/en13195003
APA StyleLo Franco, F., Ricco, M., Mandrioli, R., & Grandi, G. (2020). Electric Vehicle Aggregate Power Flow Prediction and Smart Charging System for Distributed Renewable Energy Self-Consumption Optimization. Energies, 13(19), 5003. https://doi.org/10.3390/en13195003