Smart Charging for Electric Car-Sharing Fleets Based on Charging Duration Forecasting and Planning
Abstract
:1. Introduction
2. Description of the Reference Case Study
- The ID number of the EV;
- The EV model;
- The ID number of the charging point (CP) belonging to the CH;
- The state of charge (pre-charging SOC);
- The state of charge at the end of the charging process, (post-charging SOC);
- The start timestamp of the charging process, (when the vehicle is connected to the charging point);
- The timestamp of the end-of-connection. (when the vehicle is disconnected from the charging point).
3. EV Charging Power Modeling and Management System
3.1. Current EV Charging Management System
3.2. Battery Charging Behavioral Model
3.3. Charging Hub Power Flow Calculation
4. Smart Charging Method
5. Results
5.1. Simulations Settings
5.2. Simulation Results
- Whole downtime of the CPs ().
- CH power exploitation coefficient defined as , denoted as percentage.
- The total number of charging events occurred within the 24-h period (i.e., the whole number of EVs connected per day).
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
BCBM | Battery Charging Behavioral Model |
CC-CV | Constant Current–Constant Voltage |
CH | Charging Hub |
CMS | Charging Management System |
CP | Charging Point |
ECS | Electric Car-Sharing |
EV | Electric Vehicle |
ID | Identification number |
OD | Over-Day |
ON | Over-Night |
PWM | Pulse-Width Modulation |
RES | Renewable Energy Sources |
RMSE | Root-Mean-Square Error |
SC | Smart Charging |
St. C | Standard Charging |
Battery energy capacity | |
Charging Rate | |
Number of EV in charging | |
Total power required by the CH | |
Charging power of a single EV | |
State of Charge | |
Pre-charging SOC | |
Post-charging SOC |
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EV ID | EV Model | CH ID | CP ID | ||||
---|---|---|---|---|---|---|---|
34 | ZE40 | CH1 | 3 | 13% | 98% | 13 December 2021 08:49:45 | 13 December 2021 10:06:51 |
107 | ZE50 | CH1 | 2 | 25% | 100% | 13 December 2021 09:12:45 | 13 December 2021 11:02:11 |
12 | ZE50 | CH1 | 1 | 8% | 97% | 13 December 2021 08:00:05 | 13 December 2021 09:01:22 |
RMSE | ||||
---|---|---|---|---|
0.65 | 0.87 | −42.85 | 0.02 | 0.88 |
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Lo Franco, F.; Cirimele, V.; Ricco, M.; Monteiro, V.; Afonso, J.L.; Grandi, G. Smart Charging for Electric Car-Sharing Fleets Based on Charging Duration Forecasting and Planning. Sustainability 2022, 14, 12077. https://doi.org/10.3390/su141912077
Lo Franco F, Cirimele V, Ricco M, Monteiro V, Afonso JL, Grandi G. Smart Charging for Electric Car-Sharing Fleets Based on Charging Duration Forecasting and Planning. Sustainability. 2022; 14(19):12077. https://doi.org/10.3390/su141912077
Chicago/Turabian StyleLo Franco, Francesco, Vincenzo Cirimele, Mattia Ricco, Vitor Monteiro, Joao L. Afonso, and Gabriele Grandi. 2022. "Smart Charging for Electric Car-Sharing Fleets Based on Charging Duration Forecasting and Planning" Sustainability 14, no. 19: 12077. https://doi.org/10.3390/su141912077
APA StyleLo Franco, F., Cirimele, V., Ricco, M., Monteiro, V., Afonso, J. L., & Grandi, G. (2022). Smart Charging for Electric Car-Sharing Fleets Based on Charging Duration Forecasting and Planning. Sustainability, 14(19), 12077. https://doi.org/10.3390/su141912077