Probabilistic Approach to Integrate Photovoltaic Generation into PEVs Charging Stations Considering Technical, Economic and Environmental Aspects
Abstract
:1. Introduction
- The study is based on real data collected with an advanced metering infrastructure system installed in a University Campus located in the Amazon region, in northern Brazil;
- Unlike other studies, PEVs demand is represented individually instead of aggregated, considering important parameters to each vehicle, such as arriving time and battery initial state-of-charge;
- Uncertainties due to solar generation, PEVs and building demand are considered in the model in a stochastic manner, using Monte Carlo simulation;
- The analysis simultaneously incorporates technical, economic and environmental issues allowing a global view of the problem to power systems planning purpose, showing the benefits of using green technologies;
- Power system is modeled and considered in simulations through power flow analysis.
2. Case Study: Building Demand Data
3. Probabilistic Modeling
3.1. Building Electricity Demand
3.2. Electrical Vehicle Demand
3.3. Photovoltaic Generation
4. Simulation Results
4.1. Technical Analysis
4.1.1. PEV Charging Stations
4.1.2. PEV Charging Stations with PV Generation
- Case 1: PL = 15.63% (35.17 kW);
- Case 2: PL = 23.52% (52.93 kW).
4.2. Economic Analysis
4.3. Environmental Analysis
5. Conclusions
- Even though distribution transformer has currently a low utilization factor of only 55% of its rated capacity, the connection of four Level 2 charging stations in the building parking lot will result in overloaded operation with a probability of occurrence of 77.9% in a future scenario of 9 years-ahead. This probability increases to 100% in year 10;
- The installation of a PV generation system with penetration level of 15.6% can reduce transformer overloading probability from 100% to 31.2%, and almost eliminate violations reducing overloading probability to 8.2% when a penetration level of 23.5% is adopted. The overload duration is also reduced, from an average value of 4 h to 1 h;
- A substantial reduction of 93.2% tonCO2 is obtained when PEVs are fully powered with electricity from grid, and 97.4% tonCO2 when PEVs are powered with electricity from PV generation;
- In both photovoltaic systems projects (PL = 15.6% and 23.5%), NPV is always positive and IRR is greater than the minimum required rate of return of 7%, with payback periods varying from 6 years to 11 years, which confirms both projects are economically robust and attractive.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Vehicle Battery Specification | Nissan Leaf | Chevrolet Bolt |
---|---|---|
Battery Energy (E) | 0.1058 kWh/km | 0.1567 kWh/km |
Battery Capacity (Cb) | 40 kWh | 60 kWh |
PV Module | |
---|---|
Peak Power | 335 W |
Rated voltage Vmp | 37.35 V |
Rated current Imp | 8.97 A |
Open circuit voltage Voc | 47.28 V |
Short circuit current Isc | 9.39 A |
Efficiency | 17.4% |
Dimension | 1.95 m × 0.98 m |
Inverter | |
Maximum PV power | 37.8 kW |
Nominal power | 27 kW |
MPPT voltage range | 580–850 V |
DC input voltage range | 580–1000 V |
Number of Hours Transformer Operates Overloaded | |||
---|---|---|---|
PV Level | 1 h | 2 h | 3 h |
PL = 15.6% | 88.5% | 11.1% | 0.4% |
PL = 23.5% | 97.2% | 2.8% | 0% |
Equipment costs (PL = 15.6%) | R$ 141,993.24 |
Equipment costs (PL = 23.5%) | R$ 217,359.67 |
O&M costs | 1%/year |
Inflation rate | 5%/year |
Energy price increase rate | 8%/year |
Panel degradation rate | 0.8%/year |
TOU Rate (peak hours 19 h–22 h) | 2.63 R$/kWh |
TOU Rate (off-peak hours) | 0.31 R$/kWh |
PLPV = 15.6% | PLPV = 23.5% | |
---|---|---|
Minimum | 6 years | 8 years |
Mean | 7 years | 9 years |
Max. | 8 years | 11 years |
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Branco, N.C.; Affonso, C.M. Probabilistic Approach to Integrate Photovoltaic Generation into PEVs Charging Stations Considering Technical, Economic and Environmental Aspects. Energies 2020, 13, 5086. https://doi.org/10.3390/en13195086
Branco NC, Affonso CM. Probabilistic Approach to Integrate Photovoltaic Generation into PEVs Charging Stations Considering Technical, Economic and Environmental Aspects. Energies. 2020; 13(19):5086. https://doi.org/10.3390/en13195086
Chicago/Turabian StyleBranco, Najmat Celene, and Carolina M. Affonso. 2020. "Probabilistic Approach to Integrate Photovoltaic Generation into PEVs Charging Stations Considering Technical, Economic and Environmental Aspects" Energies 13, no. 19: 5086. https://doi.org/10.3390/en13195086
APA StyleBranco, N. C., & Affonso, C. M. (2020). Probabilistic Approach to Integrate Photovoltaic Generation into PEVs Charging Stations Considering Technical, Economic and Environmental Aspects. Energies, 13(19), 5086. https://doi.org/10.3390/en13195086