Controllability Evaluation of EV Charging Infrastructure Transformed from Gas Stations in Distribution Networks with Renewables
Abstract
:1. Introduction
- The mapping relation between gas stations and EV charging stations is proposed to estimate the distribution of EV charging load in the power network, by using the online accessible data from E-map and service website of the facilities. These features render the proposed charging station model more realistic and accurate than the existing models, in which mobility statistics for vehicles in a certain area is adopted in the charging load computation.
- A novel operational model of EV charging stations is formulated by using membership function between EVs and parking places and queuing theory. The arrival and parking behavior of EVs are captured from the online data and used for estimating the 24-hour electric power demand. So far, there is no reported work that examines how the operation of an EV charging station can be modeled as a function of input parameters and control variables integrated into the optimal dispatch of the power system. In the proposed modeling of EV charging stations, the parameters and boundaries of control variables are calculated for the reliability constrained optimal dispatch of the distribution network.
- The optimal control of EV charging stations is devised under the typical V2G control framework, where the EV aggregator performs as the intermediate controller for EVs at each charging station. The optimal dispatch problem is composed of both EV charging station configuration and EV charging power regulation. The optimal setting of the EV charging station and the optimal charging plan of each individual EV are given by the optimal dispatch. A two-stage hybrid algorithm is developed to reduce the complexity of the optimization that evaluates the controllability of the charging stations in the oil-to-electricity transformation.
2. Modeling of EV Charging Stations Transformed from Gas Stations
2.1. Oil-To-Electricity Transformation with Membership Function between EVs and Parking Lots
2.2. Operation of EV Charging Stations Based on Queuing Theory and Accessible E-Map Database
2.3. Parameter Configuration of EV Charging Facilities
2.4. Mathematical Formulation of EV Charging Load and Controllable EV Charging Variables
3. Coordinated Integration of EV Charging Stations into the Electric Distribution Grid
3.1. Objective Function of the Optimal Control Strategy
3.2. Constraints of EV Charging Optimization
4. Two-Stage Hybrid Optimization Algorithm
4.1. Solution Procedure for Optimal Integration of EV Charging Stations into the Power Grid
4.2. Two-Stage Hybrid Optimization Algorithm
5. Simulation Results of the EV Charging Station in Oil-To-Electricity Transformation
5.1. Case Study
5.2. Results and Discussion
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix A. Detailed Modeling of Parking Lots Based on Queuing Theory
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EV Type | Charging Power (kW) | Battery Capacity (kWh) | Target Stage of Charge (SOC) (%) | No. of EVs | Distance per Charge (km) | |
---|---|---|---|---|---|---|
Fast Charging | I: Tesla Model X | 13 | 60 | 90–95 | 60 | 355 |
II: BMW i3 | 44 | 22 | 90–95 | 60 | 160 | |
Slow Charging | III: Chevrolet VOLT | 2.2 | 13.2 | 90–95 | 150 | 80 |
IV: Changan EADO | 3.75 | 30 | 90–95 | 150 | 200 |
Bus no./ Type of Parking | Phase | Power Level of Charging Station | Ratio of Charging Station Capacities | EV Types | Ratio of EV Types (%) |
---|---|---|---|---|---|
1/Complex | A | Fast + Slow charging | 33% | I/II/III/IV | 14/14/36/36 |
31/Office | C | Fast charging | 13% | I/II | 50/50 |
39/Office | B | Fast charging | 38% | I/II | 50/50 |
87/Home | B | Slow charging | 6% | III/IV | 50/50 |
107/Home | B | Slow charging | 10% | III/IV | 50/50 |
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Gao, S.; Wu, J.; Xu, B. Controllability Evaluation of EV Charging Infrastructure Transformed from Gas Stations in Distribution Networks with Renewables. Energies 2019, 12, 1577. https://doi.org/10.3390/en12081577
Gao S, Wu J, Xu B. Controllability Evaluation of EV Charging Infrastructure Transformed from Gas Stations in Distribution Networks with Renewables. Energies. 2019; 12(8):1577. https://doi.org/10.3390/en12081577
Chicago/Turabian StyleGao, Shuang, Jianzhong Wu, and Bin Xu. 2019. "Controllability Evaluation of EV Charging Infrastructure Transformed from Gas Stations in Distribution Networks with Renewables" Energies 12, no. 8: 1577. https://doi.org/10.3390/en12081577
APA StyleGao, S., Wu, J., & Xu, B. (2019). Controllability Evaluation of EV Charging Infrastructure Transformed from Gas Stations in Distribution Networks with Renewables. Energies, 12(8), 1577. https://doi.org/10.3390/en12081577