Techno-Economic Analysis of Hybrid Renewable Energy Systems Designed for Electric Vehicle Charging: A Case Study from the United Arab Emirates
Abstract
:1. Introduction
2. Literature Review
3. Contribution
4. Methodology Applied to the Case Study
4.1. Case Study and Renewable Energy Resources
4.2. Load Profile for Yas Island
4.3. Studied System
4.4. Modeling of the Hybrid Energy System
5. Results and Discussion
5.1. Technical Analysis
5.2. Economic Analysis
5.3. Emission Analysis
5.4. Sensitivity Analysis
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Ref. | Year | Place | Objective | Algorithm/Software | Results | Gaps |
---|---|---|---|---|---|---|
[20] | 2014 | China | Optimal scheduling of a DC microgrid integrated with RESs for EVC stations | NSGA-II | (1) Reducing the cost of electricity purchase; (2) enhancing energy circulation | No environmental analysis |
[9] | 2015 | - | (1) EV charging system optimal sizing charging system via power flow control, (2) cost–benefit analysis | Numerical methodMATLAB/Simulink | (1) Enhanced charging system performance; (2) capital costs reduction | (1) No detailed economic analalysis; (2) no environmental analysis |
[15] | 2016 | Italy | Reducing the impact of EVC in universities | Examining 2 configurations based on panel orientations and the usage of storage systems | System with directional PV is better from an economic perspective | No environmental analysis |
[16] | 2016 | Thailand | Optimizing system performance of renewable energy system supplying energy to EVC stations | MERIT simulation program | Potential in meeting load demand and informing on capital cost and surplus energy | No environmental analysis |
[18] | 2017 | - | Employs office buildings and workplaces for EVC | Two algorithms to meet EVC demand and obtain annual cost reductions. | (1) Computationally efficient; (2) suitable for real-time operation; (3) average cost reductions of 7.2% and 6.9% | No environmental analysis |
[10] | 2018 | China | Charging EV and streetlights via a group of smart hybrid poles | Efficiency model | High efficiency and power output | (1) No financial assessment; (2) no environmental analysis |
[11] | 2018 | Indonesia | Optimal sizing of hybrid power for EV charging | HOMER software | (1) Optimal configuration for different systems; (2) cost reductions | (1) No environmental analysis; (2) no detailed economic analysis (only operating, net present and initial capital costs) |
[13] | 2018 | China | Guidelines for charging service providers for proper charging prices and electricity management | 2 algorithms: (1) stochastic dynamic programming; (2) greedy algorithm (benchmark) | SDP can achieve up to 7% profit gain | No environmental analysis |
[23] | 2019 | - | Optimization model for EV charging | MATLAB | Meets EVC requirements and minimizes electricity cost | No environmental analysis |
[8] | 2019 | Egypt | EMS to control power flow from RESs to EVs | MATLAB/Simulink | Good results in terms of electrical performance and meeting load demand | (1) No financial assessment; (2) no environmental analysis |
[26] | 2019 | Denmark | Effect of integrating RES with EVC system | Balmorel model | (1) Meeting load demand; (2) reducing CO2 emissions; (3) cutting system costs | No detailed environmental analysis (CO2 only). |
[14] | 2020 | China | Pricing method considering charging facility service ratio, traffic flow and RES generation in wealthy areas | Pricing methodology | (1) Reducing traffic jams; (2) facilitating renewable consumption; (3) balancing traffic flow | (1) No financial assessment; (2) no environmental analysis |
[12] | 2020 | Japan | Priority charging to control EV charging (EVC) station in park and ride areas | Mixed-integer linear programming | High reduction in equipment costs | (1) No financial assessment; (2) no environmental analysis |
[17] | 2020 | - | Minimizing charging price per EV | Integer linear programming-based centralized system | Faster charging at lowest possible price | No environmental analysis |
[19] | 2020 | China | EVC strategy to improve power consumption and reduce charging cost | Optimization | Charging cost of EVs can be reduced | No environmental analysis |
[21] | 2020 | India | Design for EVC stations in homes | Control algorithm | Operation of charging station is achieved in all modes | (1) No financial assessment; (2) no environmental analysis |
[22] | 2020 | Turkey | EMS for EVC installed in industrial areas | Monte Carlo simulation | Demands of EVCs can be met in different time periods | (1) No financial assessment; (2) no environmental analysis |
[32] | 2022 | France | Home energy management | Matlab | Advantages for the integration of EVs, covering aspects of optimal sizing, energy autonomy and limiting grid power supply | No coverage of commercial sector |
Current Study | - | UAE | Optimal sizing of EVC via RESs | HOMER software | (1) Meeting load demand; (2) increasing RES capacity; (3) cost-effective system; (4) reducing ecological damage and GHG emissions; (5) carbon credits contributing to system revenue |
Average (kWh/Day) | Average (kW) | Peak (kW) | Load Factor | Average Energy per Month (kWh) |
---|---|---|---|---|
3175 | 132.29 | 297.93 | 0.44 | 46,646 |
Component | Model | Capital Cost (USD) | Maintenance Cost (USD/Year) | Rated Capacity | Lifetime (Years) |
---|---|---|---|---|---|
PV | Generic | 1500 | 10 | 20,000 kW | 25 |
Battery | Lead Acid | 300 | 10 | 1 kWh | 15 |
Wind Turbine | Generic | 50,000 | 500 | 10 kW | 25 |
Converter | Generic | 300 | 10 | 1 kW | 15 |
Supplementary System | Renewable System | Grid (kW/Year) | Battery (kWh/Year) | PV (kWh/Year) | WT (kWh/Year) | Excess Power (kWh/Year) |
---|---|---|---|---|---|---|
Grid | PV | 559,125 | - | 1,239,158 | - | 19,974 |
Battery–Grid | PV | 562,116 | 1 | 1,211,268 | - | 22,122 |
Grid | PV–WT | 554,093 | - | 1,229,755 | 11,041 | 20,376 |
Battery–Grid | PV–WT | 551,260 | 1 | 1,257,185 | 11,041 | 22,006 |
Battery–Grid | WT | 1,147,834 | 9 | - | 11,041 | 0 |
Hybrid System | Battery (kWh) | PV (kW) | Converter (kW) | WT (Unit) | Initial Investment (USD) | Operating Cost (USD) | COE (USD/kWh) | NPC (USD) | RF (%) |
---|---|---|---|---|---|---|---|---|---|
Grid–PV | - | 709 | 515 | - | 1.22 M | 18,810.22 | 0.06581 | 1,461,138 | 67.4 |
Battery–Grid–PV | 1 | 693 | 497 | - | 1.19 M | 21,187.81 | 0.06689 | 1,463,046 | 66.8 |
Grid–PV–WT | - | 704 | 509 | 1 | 1.26 M | 19,451.80 | 0.06814 | 1,509,812 | 67.7 |
Battery–Grid–PV–WT | 3 | 719 | 518 | 1 | 1.29 M | 17,609.36 | 0.06743 | 1,513,066 | 68.2 |
Battery–Grid–WT | 9 | - | 1.10 | 1 | 53,031 | 150,525.90 | 0.1334 | 1,998,957 | 0.953 |
Hybrid System | Carbon Dioxide (Kg/Year) | Carbon Monoxide (Kg/Year) | Unburned Hydrocarbons (Kg/Year) | Particulate Matter (Kg/Year) | Sulfur Dioxide (Kg/Year) | Nitrogen Oxides (Kg/Year) |
---|---|---|---|---|---|---|
Grid | 732,409 | 0 | 0 | 0 | 3175 | 1553 |
Grid–PV | 353,367 | 0 | 0 | 0 | 1532 | 749 |
Battery–Grid–PV | 355,257 | 0 | 0 | 0 | 1540 | 753 |
Grid–PV–WT | 350,187 | 0 | 0 | 0 | 1518 | 742 |
Battery–Grid–PV–WT | 348,396 | 0 | 0 | 0 | 1510 | 739 |
Battery–Grid–WT | 725,431 | 0 | 0 | 0 | 3145 | 1538 |
Hybrid System | Annual Electricity Output (MWh/Year) | Carbon Dioxide Emissions (Tons/Year) | Annual Base Line Emissions (Tons) | Carbon Credits per Year (Tons) | Carbon Credits per Year (USD) |
---|---|---|---|---|---|
Grid–PV | 1798.28 | 389.52 | 1248.006 | 858.48 | 8584.8 |
Battery–Grid–PV | 1773.38 | 391.603 | 1230.72 | 839.12 | 8391.2 |
Grid–PV–WT | 1794.89 | 386.015 | 1245.65 | 859.63 | 8596.3 |
Battery–Grid–PV–WT | 1819.49 | 384.041 | 1262.72 | 878.68 | 8786.8 |
Battery–Grid–WT | 1158.87 | 799.651 | 804.25 | 4.60 | 46.04 |
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AlHammadi, A.; Al-Saif, N.; Al-Sumaiti, A.S.; Marzband, M.; Alsumaiti, T.; Heydarian-Forushani, E. Techno-Economic Analysis of Hybrid Renewable Energy Systems Designed for Electric Vehicle Charging: A Case Study from the United Arab Emirates. Energies 2022, 15, 6621. https://doi.org/10.3390/en15186621
AlHammadi A, Al-Saif N, Al-Sumaiti AS, Marzband M, Alsumaiti T, Heydarian-Forushani E. Techno-Economic Analysis of Hybrid Renewable Energy Systems Designed for Electric Vehicle Charging: A Case Study from the United Arab Emirates. Energies. 2022; 15(18):6621. https://doi.org/10.3390/en15186621
Chicago/Turabian StyleAlHammadi, Alya, Nasser Al-Saif, Ameena Saad Al-Sumaiti, Mousa Marzband, Tareefa Alsumaiti, and Ehsan Heydarian-Forushani. 2022. "Techno-Economic Analysis of Hybrid Renewable Energy Systems Designed for Electric Vehicle Charging: A Case Study from the United Arab Emirates" Energies 15, no. 18: 6621. https://doi.org/10.3390/en15186621
APA StyleAlHammadi, A., Al-Saif, N., Al-Sumaiti, A. S., Marzband, M., Alsumaiti, T., & Heydarian-Forushani, E. (2022). Techno-Economic Analysis of Hybrid Renewable Energy Systems Designed for Electric Vehicle Charging: A Case Study from the United Arab Emirates. Energies, 15(18), 6621. https://doi.org/10.3390/en15186621