Evaluation of the Effects of Smart Charging Strategies and Frequency Restoration Reserves Market Participation of an Electric Vehicle
Abstract
:1. Introduction
2. Load Frequency Control
- Frequency Containment Reserve (FCR)
- automatic Frequency Restoration Reserve (aFRR)
- manual Frequency Restoration Reserve (mFRR)
- Replacement Reserve (RR)
2.1. Frequency Restoration Reserve (FRR)
2.2. Modeling and Methods
Model Setup and Components
2.3. Mobility Profiles
2.4. Charging Strategies and Scenarios
- Reduction of electricity costs for the owner of the household and the EV
- Increase of self-consumption of electrical energy generated by the PV systems
- Increase of self-sufficiency of the household and of the workplace
- Reduction of calendar battery aging
- High availability of the EV for mobility
- Reduction of the power exchanged with the grid by household and workplace
Evaluation
3. Results and Discussion
3.1. Workplace Charging Scenarios
3.2. Home Charging Scenarios
3.3. Home and Workplace Charging Scenarios
3.4. Fast Strategy
3.5. Min-Cal-Aging Strategy
3.6. Max-SS Strategy
3.7. Max-SS-V2H Strategy
3.8. FRR Strategy
3.9. Strategy and the Power Exchanged with the Grid
Average SoC and Number of Equivalent Full Cycles
4. Conclusions
Author Contributions
Funding
Conflicts of Interest
Abbreviations
aFRR | Automatic Frequency Restoration Reserves |
BMS | Battery Management System |
BRP | Balance Responsible Party |
DSC | Direct Self-Consumption |
EEG | Renewable Energy Sources Act |
EFC | Equivalent Full Cycle |
EMS | Energy Management System |
EV | Electric Vehicle |
FCR | Frequency Containment Reserve |
GHG | Greenhouse Gas |
KPI | Key Performance Indicator |
LFC | Load Frequency Control |
mFRR | Manual Frequency Restoration Reserve |
Probability Density Function | |
PV | Photovoltaic |
RR | Replacement Reserve |
SC | Self-Consumption |
SoC | State of Charge |
SS | Self-Sufficiency |
TSO | Transmission System Operator |
V2X | Vehicle-to-X |
V2G | Vehicle-to-Grid |
V2H | Vehicle-to-Home |
Appendix A.
Appendix A.1. Mobility Profiles 2 and 3
Appendix A.2. Grid Power Exchange and Battery Stress
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Electric Vehicle | PV System | Household | |||
---|---|---|---|---|---|
Persons | 4 | ||||
38 | |||||
(south) | |||||
SoC Range | 3.2–95.3% | ||||
Battery layout | 93S1P | 9734 /a | |||
Ah | |||||
Annual Driving Distance | Worker: 14,743 km | ||||
Late-Worker: 14,924 km | |||||
2nd Car: 10,211 km | |||||
10 |
Mobility Profile | Day | Parameter | Lower Limit | Upper Limit | ||
---|---|---|---|---|---|---|
Worker | Workday | Departure | 6:45 h | 6:30 h | 7:00 h | |
Arrival | 16:30 h | 16:00 h | 17:00 h | |||
Distance | 50 | 10 | 20 | 110 | ||
Late Worker | Workday | Departure | 13:30 h | 13:00 h | 14:00 h | |
Arrival | 23:00 h | 22:00 h | 24:00 h | |||
Distance | 50 | 10 | 20 | 110 | ||
2nd Car | Workday | Departure | 9:00 h | 8:30 h | 10:30 h | |
Arrival | 13:30 h | 12:00 h | 15:00 h | |||
Distance | 30 | 10 | 5 | 55 | ||
Worker, | Weekend | Departure | 10:30 h | 5 | 8:00 h | 13:00 h |
Late-Worker, | Arrival | 18:30 | 5 | 14:00 h | 23:00 h | |
2nd Car | Distance | 30 | 25 | 3 | 180 |
Charging Strategy | Charging Location | Mobility Profile | |
---|---|---|---|
Fast | Home (H) | Worker | not set |
Min-Cal-Aging | Workplace (W) | Late Worker | 23% |
Max-SS | Home & Workplace (H + W) | 2nd Car | |
Max-SS-V2H | |||
FRR | |||
-shave |
Charging Strategy | Information |
---|---|
Fast | None |
Upon arrival, the EV is charged with the maximum charging power (10 kW) until it is fully charged. This strategy maximizes the availability of the EV for the user (Objective E). See the functionality of the strategy in Figure 7a. | |
Min-Cal-Aging | Time of departure of EV |
This strategy aims to reduce the average SoC of the EV battery (Objective D). For Li-Ion batteries with an NMC chemistry an elevated SoC leads to accelerated calendar aging [37]. The charge process of the EV is delayed in order to reduce average SoC. The EMS calculates the latest point in time to start charging the EV with maximal power in order to fully charge the EV by the time of departure. See the functionality of the strategy in Figure 7b. | |
Max-SS | Time of departure of EV, Residual Load () |
This strategy charges the EV when positive residual power is available. Then the charging power is set to the value of . As a result the EV is charged with electrical energy generated by the PV system. This strategy aims to increase the self-consumption (SC) and self-sufficiency (SS) of the household (Objectives A, B, and C). If the residual energy is not sufficient to fully charge the EV before departure, the EV is charged with maximum power (10 ) before departure. See the functionality of the strategy in Figure 7c. | |
Max-SS-V2H | Time of departure of EV, residual load, |
This strategy is an extension of strategy Max-SS. In addition to the functionality of Max-SS, the EV discharges with negative residual power when load exceeds PV generation. This strategy aims to increase the self-consumption and self-sufficiency of the household using V2H (Objectives A, B, and C). See the functionality of the strategy in Figure 7d. | |
FRR | Time of departure of EV, residual load, , aFRR request |
The EV is integrated into a pool of units that provide positive aFRR. The aggregator of the pool forecasts the power capacity of the pool in order to bid on the aFRR market. For this study we use a time-series of the awarded aFRR participation and the aFRR requests for the time period 30 October 2018–30 July 2019 (9 Months). See Section 2.1 for further details and Figure 3 for a snapshot of the time series. Due to the 4 hour criterion, the power that can be offered by the EV is calculated at the time of plug-in at the charging station. It is calculated as follows, | |
-shave | Time of departure of EV, residual load, , |
The strategy aims to keep the absolute value of the residual load of the household under limit in order to reduce the power exchanged with the grid (Objective F). In this study . The EV charges with when and discharges to the home with when . As no forecast algorithms are used, the peak production might not be shaved due to the fact that the EV is already fully charged when it occurs. Moreover, due to the lack of forecast, a peak for the charge of the EV before departure may occur as, starting at the latest possible point in time, the remaining energy is charged with maximum power (10). See the functionality of the strategy in Figure 7f. |
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Rücker, F.; Merten, M.; Gong, J.; Villafáfila-Robles, R.; Schoeneberger, I.; Sauer, D.U. Evaluation of the Effects of Smart Charging Strategies and Frequency Restoration Reserves Market Participation of an Electric Vehicle. Energies 2020, 13, 3112. https://doi.org/10.3390/en13123112
Rücker F, Merten M, Gong J, Villafáfila-Robles R, Schoeneberger I, Sauer DU. Evaluation of the Effects of Smart Charging Strategies and Frequency Restoration Reserves Market Participation of an Electric Vehicle. Energies. 2020; 13(12):3112. https://doi.org/10.3390/en13123112
Chicago/Turabian StyleRücker, Fabian, Michael Merten, Jingyu Gong, Roberto Villafáfila-Robles, Ilka Schoeneberger, and Dirk Uwe Sauer. 2020. "Evaluation of the Effects of Smart Charging Strategies and Frequency Restoration Reserves Market Participation of an Electric Vehicle" Energies 13, no. 12: 3112. https://doi.org/10.3390/en13123112
APA StyleRücker, F., Merten, M., Gong, J., Villafáfila-Robles, R., Schoeneberger, I., & Sauer, D. U. (2020). Evaluation of the Effects of Smart Charging Strategies and Frequency Restoration Reserves Market Participation of an Electric Vehicle. Energies, 13(12), 3112. https://doi.org/10.3390/en13123112