Investigating the Impact of Economic Uncertainty on Optimal Sizing of Grid-Independent Hybrid Renewable Energy Systems
Abstract
:1. Introduction
2. Literature Review
3. Geographical Specifications
4. Materials and Methods
4.1. Economic Analysis
4.2. PV Modeling
4.3. WT Modeling
4.4. Electrolyzer Modeling
4.5. FC Modeling
4.6. BMG Modeling
4.7. Converter Modeling
4.8. Thermal Load Controller (TLC) Modeling
4.9. H2 Tank Modeling
4.10. Boiler Modeling
5. Technical Characteristics, Cost of Equipment and Assumptions
- (I)
- PV/WT/electrolyzer/H2-based FC/H2-based boiler
- (II)
- PV/WT/electrolyzer/H2-based FC/NG-based boiler
- (III)
- PV/WT/BMG/electrolyzer/H2-based boiler
6. Analysis
6.1. The Benchmark Case ( = 17.5% and = 18%)
6.2. Analysis of the First Model under Economic Uncertainty
7. Discussion and Suggestions for Implementation
- (I)
- Furnishing the investors or private companies with zero percent or low-rate loans.
- (II)
- Introducing carbon tax to encourage the generation and use of renewable electricity.
- (III)
- Setting strict rules and regulations against carbon-intensive means of generating electricity.
- (IV)
- Developing the concept of green tourism to attract as many national and international visitors as possible. The corresponding revenues can cover a substantial proportion of the project’s costs.
- (V)
- Subsidizing the price of renewable electricity for residents (can be achieved from the resource of funding allocated to operating and maintaining the transmission and distribution network as it would no longer be needed).
- (VI)
- Lifting tariffs on importing equipment such as PV, WT, electrolyzer, FC, etc.
8. Conclusions
- The first model, the PV/WT/electrolyzer/H2-based FC/H2-based boiler, had the highest TNPC ($647,708), the lowest unmet electric load, and the highest reliability without any detrimental impact on the environment.
- The second model, the PV/WT/electrolyzer/H2-based FC/NG-based boiler, possessed the second least TNPC ($548,906), and it could meet almost all electric demand. Whereas, utilizing it would end up releasing some 11.5 tons of CO2 per year. This carbon footprint constitutes a challenging negative point for the second model which may strongly inhibit all the attempts to accomplish the Paris Agreement targets.
- The techno-economic analysis of the third model, the PV/WT/BMG/electrolyzer/H2-based boiler, showed that it would not be reliable, as 20.5% of total electric load could not be met via this system. However, its TNPC, $488,878, was the least amongst the three analyzed configurations.
- The amount of LCOE would vary from 0.102 $/kWh to 0.662 $/kWh, meaning LCOE could be between one-third of the benchmark value and two-fold that (LCOE for the benchmark case = 0.33 $/kWh). Additionally, TNPC would fluctuate between $478,704 and $814,905 from 26% less than the benchmark value up to 26% more than that (TNPC for the benchmark case = $647,708).
- The optimal size of PV and the number of WT units would change from 25.9 to 52.5 kW and from 11 to 18, respectively. Comparing with the benchmark case (PV size = 33.8 kW and number of WT units = 14), the PV size could vary from an amount of 23% less than the benchmark case up to 55% more than that, and corresponding figures for WT would be 21% and 29%, respectively.
- The amount of renewable H2 consumed by boiler and FC would be in the ranges of 1815–1962 kg and 559–665 kg, respectively. When comparing with the benchmark (H2 consumption in boiler = 1922 kg and that in FC = 618), the former would fluctuate from an amount of 6% less than the benchmark value up to an amount of 2% more than that, and related numbers for FC would be 10% and 8%, respectively.
9. Future Research Direction
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Nomenclature
AC | Alternating Current |
and | Curve consumption coefficients (kW/kg/h) of electrolyzer |
BMG | Biomass generator |
Biomass’s calorific value | |
Compressibility rate of hydrogen | |
Operating cost ($) | |
Replacement cost ($) | |
Capacity rate factor | |
Total annualized cost ($) | |
Total initial capital cost ($) | |
Capacity utilization factor | |
DC | Direct Current |
DG | Diesel generator |
Open circuit voltage (v) | |
Annual output electricity of a biomass gasifier (kW) | |
Required electricity by the electrolyzer (kW) | |
Electricity sold to the grid (kWh/yr) | |
AC primary load served (kWh/yr) | |
DC primary load served (kWh/yr) | |
Annual inflation rate (%) | |
Faraday constant | |
FC | Fuel cell |
Degradation factor (%) of PV | |
Solar radiation (W/m2) | |
Amount of solar radiation at which NOCT is defined which equals 800 W/m2 | |
Standard radiation (W/m2) | |
Surface roughness length (m) | |
Hydrogen | |
Anemometer height (m) | |
Hub height (m) | |
Hydrogen production rate | |
HRE | Hybrid renewable energy |
Real annual discount rate (%) | |
Nominal discount rate (%) | |
Electrolyzer current (A) | |
Fuel cell current (A) | |
kg | Kilogram |
kW | Kilowatt |
kWh | Kilowatt hour |
LCOE | Levelized cost of electricity ($/kWh) |
LHV | Lower heating value (MJ/kg) |
NG | Natural gas |
Air density at standard pressure and temperature (kg/m3) | |
Project lifetime (yr) | |
Number of cells in series in the electrolyzer | |
Lifetime of a component (yr) | |
Total number of cells in the fuel cell | |
Hours of operating biomass gasifier (h) | |
Oxygen | |
Rating of a biomass gasifier system | |
Maximum rating of biomass gasifier | |
Input power of inverter | |
Output power of inverter | |
Pressure of hydrogen in the tank | |
Power output of PV system (kW) | |
PV | Photovoltaic |
Power output of wind turbine (kW) | |
Wind turbine output under STC (kW) | |
Mass flowrate of hydrogen (kg/h) | |
Nominal mass flowrate of hydrogen (kg/h) | |
Salvage value of a component ($) | |
Temperature | |
Ambient temperature (°C) | |
Ambient temperature at which NOCT is defined which equals 20 °C | |
Total amount of biomass | |
PV cell temperature (°C) | |
Nominal operating cell temperature (°C) | |
Standard PV cell temperature (°C) | |
TLC | Thermal load controller |
TNPC | Total net present cost ($) |
Wind speed at the anemometer height (m/s) | |
Wind speed at the hub height (m/s) | |
The coefficient of heat transfer (kW/m2) | |
Average voltage of a cell in the fuel cell (v) | |
Activation fuel cell overvoltage (v) | |
Concentration fuel cell overvoltage (v) | |
Fuel cell output voltage (v) | |
Volume of hydrogen in tank | |
Ohmic fuel cell overvoltage (v) | |
W | Watt |
WT | Wind turbine |
Rated capacity of PV system (kW) | |
yr | Year |
α | Solar absorption of PV array (%) |
Temperature coefficient (%/°C) | |
°C | Degree Celsius |
τ | Transmittance of the cover over PV system |
Real air density (kg/m3) | |
Electrical conversion efficiency of PV system | |
Biomass to electricity conversion efficiency | |
Fuel cell efficiency | |
Inverter efficiency | |
Hydrogen gas constant (4124.18 Nm/kg.K) |
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Component | Model (Abbreviation) | Technical Specifications | Capital Cost | Replacement Cost | Operation and Maintenance Cost | Ref. for Costs |
---|---|---|---|---|---|---|
PV | Fronius Symo 4.5-3-S (Fron4.5) | Rated capacity: 4.4 kW Lifetime: 25 yr Electrical bus: AC Derating factor: 96% Temperature coefficient: −0.41%/°C Operating temperature: 45 °C Efficiency at standard test conditions: 17.3% Ground reflectance: 20% Tracking system: no tacking Panel type: flat plate | 2000 ($/kW) | 2000 ($/kW) | 10 ($/kW.yr) | [97] |
WT | Bergey Excel 6 (XL6) | Rated capacity: 6 kW Lifetime: 20 yr Electrical bus: AC Hub height: 30 m Rotor diameter: 6.2 m Cut-in wind speed: 2.5 m/s Cut-out wind speed: none | 2000 ($/kW) | 1600 ($/kW) | 50 ($/#.yr) | [62] |
BMG | Generic Biogas Genset (Bio) | Size: 20 kW Lifetime: 20,000 h Electrical bus: AC Fuel type: animal manure LHV = 19 MJ/kg Gasification ratio: 0.047 kg/kg Density of biogas: 1.15 kg/m3 Carbon content: 44% Daily available biomass: 2000 kg Biogas fuel price: 0 $/kg | 2300 ($/kW) | 1500 ($/kW) | 0.01 ($/op.h) | [53] |
FC | Generic Fuel Cell (FC) | Size: 20 kW Lifetime: 50,000 h Electrical bus: DC Heat recover ratio: 60% Minimum runtime: 20 min Fuel type: stored hydrogen LHV = 120 MJ/kg Carbon content: 0 Stored hydrogen price: 0 $/kg | 2000 ($/kW) | 1860 ($/kW) | 0.01 ($/op.h) | [92] |
TLC | Generic thermal load controller (TLC) | Size: 100 kW Lifetime: 20 yr Electrical bus: DC and AC | 54 ($/kW) | 54 ($/kW) | 0 ($/kW) | [97] |
Boiler | Generic boiler | Efficiency: 85% Fuel type 1: stored hydrogen LHV= 120 MJ/kg Carbon content: 0 Stored hydrogen price: 0 $/kg Fuel type 2: natural gas LHV = 45 MJ/kg Density: 0.79 kg/m3 Carbon content: 67% Natural gas price: 0.3 $/m3 | - | - | - | - |
Converter | Leonics S-219Cp 5 kW (Leon5) | Lifetime: 10 yr Rectifier efficiency: 94% Rectifier relative capacity: 80% Inverter efficiency: 96% | 550 ($/kW) | 550 ($/kW) | 10 ($/kW/yr) | [108] |
Electrolyzer | Generic Electrolyzer | Size: specified in model Lifetime: 15 yr Electrical bus: DC Efficiency: 85% | 2000 ($/kW) | 2000 ($/kW) | 50 ($/kW/yr) | [93] |
H2 Tank | Generic hydrogen tank (H2Tank) | Initial tank level: 0 | 600 ($/kg) | 600 ($/kg) | 10 ($/yr) | [109] |
Model | PV (kW) | WT (#) | FC (kW) | BMG (kW) | Electrolyzer (kW) | TLC (kW) | H2 Tank (kg) | Converter (kW) | TNPC ($) | LCOE ($) | Salvage Value ($) |
---|---|---|---|---|---|---|---|---|---|---|---|
No. 1 | 33.8 | 14 | 20 * | - | 40 * | 100 * | 10 * | 48.7 | 647,708 | 0.33 | −177,219 |
No. 2 | 28.4 | 9 | 20 * | - | 20 * | 100 * | 10 * | 28.8 | 548,906 | 0.248 | −139,048 |
No. 3 | 43 | 8 | - | 20 * | 30 * | 100 * | 10 * | 37.1 | 488,878 | 0.313 | −131,344 |
Model No. 1 | Model No. 2 | Model No. 3 | |
---|---|---|---|
Total electricity production (kWh/yr) | 241,422 | 180,162 | 181,722 |
The share of PV (%) | 25.6 | 29 | 40.9 |
The share of WT (%) | 65.9 | 56.7 | 50 |
The share of FC (%) | 8.5 | 14.3 | - |
The share of BMG (%) | - | - | 9.1 |
Excess electricity (kWh/yr) | 30,773 | 27,869 | 15,719 |
Unmet electric load (%) | 0.051 | 0.065 | 20.5 |
Renewable fraction | 43.9 | 41.7 | 53.3 |
Total thermal energy production (kWh/yr) | 85,234 | 80,134 | 71,153 |
The share of boiler (%) | 63.9 | 65.2 | 77.9 |
The share of excess electricity (%) | 36.1 | 34.8 | 22.1 |
Excess thermal energy (kWh/yr) | 25,655 | 20,556 | 11,574 |
H2 consumption by FC (kg/yr) | 618 | 771 | - |
Capacity factor of FC (%) | 11.7 | 14.7 | - |
Biomass consumption by BMG (tonnes/yr) | - | - | 730 |
Capacity factor of BMG (%) | - | - | 9.5 |
Total renewable production divided by load (%) | 109 | 105 | 114 |
Capacity factor of PV (%) | 20.9 | 21 | 19.7 |
Capacity factor of WT (%) | 21.6 | 21.6 | 21.6 |
H2 consumption by boiler (kg/yr) | 1922 | - | 1956 |
NG consumption by boiler (m3/yr) | - | 6905 | - |
Total H2 generation by electrolyzer (kg/yr) | 2759 | 1575 | 2167 |
Capacity factor of electrolyzer (%) | 36.5 | 41.7 | 38.3 |
CO2 emission (kg/yr) | 0 | 11,535 | 1175 |
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Rezaei, M.; Dampage, U.; Das, B.K.; Nasif, O.; Borowski, P.F.; Mohamed, M.A. Investigating the Impact of Economic Uncertainty on Optimal Sizing of Grid-Independent Hybrid Renewable Energy Systems. Processes 2021, 9, 1468. https://doi.org/10.3390/pr9081468
Rezaei M, Dampage U, Das BK, Nasif O, Borowski PF, Mohamed MA. Investigating the Impact of Economic Uncertainty on Optimal Sizing of Grid-Independent Hybrid Renewable Energy Systems. Processes. 2021; 9(8):1468. https://doi.org/10.3390/pr9081468
Chicago/Turabian StyleRezaei, Mostafa, Udaya Dampage, Barun K. Das, Omaima Nasif, Piotr F. Borowski, and Mohamed A. Mohamed. 2021. "Investigating the Impact of Economic Uncertainty on Optimal Sizing of Grid-Independent Hybrid Renewable Energy Systems" Processes 9, no. 8: 1468. https://doi.org/10.3390/pr9081468
APA StyleRezaei, M., Dampage, U., Das, B. K., Nasif, O., Borowski, P. F., & Mohamed, M. A. (2021). Investigating the Impact of Economic Uncertainty on Optimal Sizing of Grid-Independent Hybrid Renewable Energy Systems. Processes, 9(8), 1468. https://doi.org/10.3390/pr9081468