Integration of Electric Vehicles in the Distribution Network: A Review of PV Based Electric Vehicle Modelling
Abstract
:1. Introduction
2. EV Interaction with the Distribution Network
- Vehicle-to-grid (V2G): Energy transfer from EV to the distribution network.
- Vehicle-to-home/building (V2H/V2B): Energy transfer from EV to home/building.
- Vehicle-to-vehicle (V2V): Energy transfer from one EV to another EV.
3. Modelling of Grid-Connected EV-PV System
- The cost of PV has been dropping continuously and is currently less than $1/Wp [32].
- PV is highly accessible, i.e., PV modules are generally installed on the building rooftops and carparks, close to EV locations.
- PV modules do not require maintenance and are also noise-free.
- Centralised scheduling;
- Decentralised scheduling;
- Price-varying scheduling.
4. EV Smart Charging Using PV and Grid
5. Uncertainty Modelling
5.1. EV Charging Demand
5.2. PV Generation
5.3. Electrical Load Demand
6. Conclusions and Future Research Suggestions
- Smart charging algorithms
- P2P V2G power transfer
- Uncertainty analysis
- PV based EV charging stations
- Price-varying scheduling
Author Contributions
Funding
Conflicts of Interest
References
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Features | Unidirectional | Bidirectional |
---|---|---|
Power flow | Grid-to-vehicle (G2V) | G2V and vehicle-to-grid (V2G) |
Infrastructure | Communication | Communication, bidirectional charger |
Cost | Low | High |
Complexity | Low | High |
Services | Load profile management, Frequency regulation [27] | Backup power support, frequency regulation, voltage regulation, active power support [28] |
Advantages | Overloading prevention, load levelling, profit maximisation, emission minimisation [29] | Overloading prevention, profit maximisation, emission minimisation, renewable energy sources (RES) integration, voltage profile improvement, harmonic filtering [30], load levelling, power loss reduction [31] |
Disadvantages | Limited services | Battery degradation, high complexity, and cost, social barriers |
References | Objectives | Optimisation Model | Software/Implementation | Key Findings |
---|---|---|---|---|
[62] | Peak shaving and valley filling | Linear programming | MATLAB | The effectiveness of the proposed algorithm is dependent on a high number of available parking spots. |
[35] | Maximizing profit and PV utilisation | Mixed Integer Linear programming | GAMS | Due to battery degradation cost, V2G is not economically feasible unless high PV production is present |
[63] | Minimizing system cost | Mixed Integer Linear programming | CPLEX | Smart charging can result in saving of operational cost for charging and PV usage for the parking lot owner |
[64] | Minimizing charging cost | Fuzzy logic | MATLAB | The algorithm is not optimisation based so targets several objectives: Reduction in charging cost and system losses, improvement in voltage profile. |
[65] | Maximizing PV utilisation | Metaheuristic | MATLAB | The proposed heuristic algorithm achieves desired objectives with low computational cost and without forecasting of uncertain variables. |
[66] | Maximizing EV aggregator benefits | Hybrid MPC | - | The proposed algorithm achieves near-optimal solution of EV charge scheduling problem with better efficiency than standard MPC |
[67] | Maximizing PV utilisation and reducing EV charging impact | Linear programming | Case study: New South Wales distribution system | The proposed strategy controls the charging/discharging profile of EVs to match with the shape of the PV output to achieve desired objectives. |
[68] | Minimizing charging cost | Mixed Integer Linear programming | Case study: Korea | The proposed algorithm does not consider selling excess power and demonstrates charging cost savings compared to uncoordinated charging |
[61] | Minimizing system cost | Mixed Integer Linear programming | Microsoft Solver Foundation | A comprehensive system to achieve one optimal charging profile will result in a larger net benefit compared to individual applications. |
[69] | Minimizing charging cost | Convex programming | MATLAB | ESS can significantly reduce charging cost and bi-directional V2H is cheaper than H2V |
[70] | Maximizing profit and ESS life | Non-linear programming | GAMS | Considering only revenue maximisation will result in an adverse effect on ESS life |
[71] | Maximizing PV utilisation | Linear programming | Case study: LomboXnet | Proposed algorithm increases PV self-consumption and reduces peak demand by half |
[72] | Minimizing charging cost | Rule-based algorithm | MATLAB | Rule-based charging is superior to conventional charging for less charging cost and reduced grid loading |
[73] | Maximizing PV utilisation | Rule-based algorithm | MATLAB | V2B can be an effective strategy if initial capital costs and electricity price are fitting |
[74] | Minimizing peak demand | MPC | MATLAB | EV scheduling can reduce both the magnitude and frequency of peak loading |
[75] | Peak shaving and valley filling | Quadratic programming | MATLAB | Net load variation was lower in case of low PV power-sharing and vice-versa |
Method | Remarks | References |
---|---|---|
Scenario reduction |
| [79,80] |
Monte Carlo simulation |
| [19,81] |
Fuzzy logic |
| [82,83] |
Hybrid Monte Carlo-fuzzy |
| [84] |
Artificial Neural Network |
| [37,85] |
Markov chain |
| [86] |
Probability distribution fitting |
| [87,88] |
Robust optimisation |
| [89,90] |
Information gap decision theory |
| [91,92] |
Method | Remarks | References |
---|---|---|
Point estimation |
| [93] |
Bootstrap |
| [94] |
Monte Carlo simulation |
| [95] |
Mean-Variance estimation |
| [96] |
Two stage scheduling |
| [97] |
Scenario based analysis |
| [98] |
Kernel Density estimation |
| [99] |
Autoregressive Moving Average |
| [35] |
Probability distribution fitting |
| [100] |
Rolling Horizon approach |
| [101] |
Generative Adversarial network |
| [102] |
Method | Remarks | References |
---|---|---|
Point estimation |
| [114,115] |
Monte Carlo simulation |
| [116,117] |
Fuzzy logic |
| [118] |
Scenario based analysis |
| [119] |
Autoregressive Moving Average |
| [85,120] |
Convolution based |
| [121,122] |
Probability distribution fitting |
| [88,123] |
Cumulant based |
| [124] |
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Mohammad, A.; Zamora, R.; Lie, T.T. Integration of Electric Vehicles in the Distribution Network: A Review of PV Based Electric Vehicle Modelling. Energies 2020, 13, 4541. https://doi.org/10.3390/en13174541
Mohammad A, Zamora R, Lie TT. Integration of Electric Vehicles in the Distribution Network: A Review of PV Based Electric Vehicle Modelling. Energies. 2020; 13(17):4541. https://doi.org/10.3390/en13174541
Chicago/Turabian StyleMohammad, Asaad, Ramon Zamora, and Tek Tjing Lie. 2020. "Integration of Electric Vehicles in the Distribution Network: A Review of PV Based Electric Vehicle Modelling" Energies 13, no. 17: 4541. https://doi.org/10.3390/en13174541
APA StyleMohammad, A., Zamora, R., & Lie, T. T. (2020). Integration of Electric Vehicles in the Distribution Network: A Review of PV Based Electric Vehicle Modelling. Energies, 13(17), 4541. https://doi.org/10.3390/en13174541