Real-Time Forecasting of EV Charging Station Scheduling for Smart Energy Systems
Abstract
:1. Introduction
2. Load Forecasting
3. State of Charge Measurement
Coulomb Counting Method
4. Communication Network Architecture
5. Algorithm for SOC Estimation and Database Creation
5.1. Algorithm & Flowchart for SOC Estimation as Shown in Figure 7
- Step 1:
- Initialize the Arduino and set the voltage to zero
- Step 2:
- Set the baud rate to establish communication between the Arduino and PC
- Step 3:
- After determining the Amp hour of the Li-ion battery that will feed into the analog pin of the Arduino its equivalent digital value (ADC Value) is stored in it.
- Step 4:
- Based on the updated battery status, the remaining usage hours of the battery will be computed
- Step 5:
- Cost of charging will vary depending on the charging distance and time
- Step 6:
- Repeat from Step3
5.2. Database Creation
6. Area of Charging Station Selection
7. Results and Discussion
8. Conclusions
Author Contributions
Conflicts of Interest
References
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SAE J-1766 | Recommended Practice for Electric and Hybrid Electric Vehicle Battery Systems Crash Integrity Testing |
SAE J-1797 | Recommended Practice for Packaging of Electric Vehicle Battery Modules |
SAE J-1798 | Recommended Practice for Performance Rating of Electric Vehicle Battery Modules |
SAE J-2288 | Life Cycle Testing of Electric Vehicle Battery Modules |
SAE J-2289 | Electric Vehicle Battery Pack System: Functional Guidelines |
SAE J-2380 | Vibration Testing of Electric Vehicle Batteries |
ISO/CD 12405-1 | Electrically propelled road vehicles—Test specification for lithium-ion traction battery packs and systems—Part1 High power applications |
SAE J-1772 | SAE Electric Vehicle Conductive Charge Coupler |
SAE J-1773 | SAE Electric Vehicle Inductive Coupled Charging |
SAE J-1850 | Class B Data Communications Network Interface |
SAE J-2293 Part 2 | Energy Transfer System for EV Part2: Communication Requirements and Network Architecture |
SAE J-2836 Part 1 | Use Cases for Communications between Plug-In Vehicles and Utility Grid |
SAE J-2836 Part 2 | Use Cases for Communications between Plug-In Vehicles and the Supply Equipment (EVSE) |
SAE J-2836 Part 3 | Use Cases for Communications between Plug-In Vehicles and the Utility Grid for Reverse Flow |
SAE J-2847 Part 1 | Communications between Plug-In Vehicles and Utility Grid |
SAE J-2847 Part 2 | Communications between Plug-In Vehicles and the Supply Equipment (EVSE) |
SAE J-2847 Part 3 | Communications between Plug-In Vehicles and the Utility Grid for Reverse Flow |
Ampere Hour | 68 × 1 = 68 mAh |
SOC | (68/400) × 100 = 99.83% |
kWh | 68 × 9 = 0.612 |
Charging Station Locations | Distance Reference from SRM University (1) in km | Population of the EV Estimated Per Day | No. of Charging Point Availability | Fast Charging SlotsAvailability | Reserved/Not Working |
---|---|---|---|---|---|
1 | 0 | 3600/Day | 35 | Yes | 2 |
2 | 0.75 | 1200/Day | 21 | No | 3 |
3 | 1.02 | 1100/Day | 23 | No | 4 |
4 | 2.02 | 5600/Day | 41 | Yes | 4 |
5 | 5.17 | 3200/Day | 38 | Yes | 4 |
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Chokkalingam, B.; Padmanaban, S.; Siano, P.; Krishnamoorthy, R.; Selvaraj, R. Real-Time Forecasting of EV Charging Station Scheduling for Smart Energy Systems. Energies 2017, 10, 377. https://doi.org/10.3390/en10030377
Chokkalingam B, Padmanaban S, Siano P, Krishnamoorthy R, Selvaraj R. Real-Time Forecasting of EV Charging Station Scheduling for Smart Energy Systems. Energies. 2017; 10(3):377. https://doi.org/10.3390/en10030377
Chicago/Turabian StyleChokkalingam, Bharatiraja, Sanjeevikumar Padmanaban, Pierluigi Siano, Ramesh Krishnamoorthy, and Raghu Selvaraj. 2017. "Real-Time Forecasting of EV Charging Station Scheduling for Smart Energy Systems" Energies 10, no. 3: 377. https://doi.org/10.3390/en10030377
APA StyleChokkalingam, B., Padmanaban, S., Siano, P., Krishnamoorthy, R., & Selvaraj, R. (2017). Real-Time Forecasting of EV Charging Station Scheduling for Smart Energy Systems. Energies, 10(3), 377. https://doi.org/10.3390/en10030377