Feasibility Study of Integrating Renewable Energy Generation System in Sark Island to Reduce Energy Generation Cost and CO2 Emissions
Abstract
:1. Introduction
- Estimate the island energy profile and different generation systems based on available data and system comparison;
- Use a combination of wind, solar, and battery storage with the current energy system and calculate the technical and financial feasibility assuming a 20-year lifespan;
- Showcase the advantages and disadvantages for three different case studies with different installation costs and operational implications; and
- Use a simplified levelized cost of energy (LCOE) estimation to compare the feasibility of the system.
- (1)
- This study used all of the available data and implemented educated assumptions to estimate data that were not available (load, wind velocity). Data analysis and manipulation were carried out to estimate an optimal integration of wind and solar as primary renewable energies with an energy storage system to stabilize the grid, if required.
- (2)
- The worst-case scenario was used for the load, running two highly different load profiles with peaks in winter and summer. Only the latter is presented here.
- (3)
- This method takes an hourly data analysis of the variation on the state of charge of the battery for the complete year with the help of three energy generation systems to keep the battery charged.
- (4)
- The validation was based on the use of a theoretical wind velocity estimation using the Rayleigh distribution function from the 2013–2019 data sets.
- (5)
- Monthly solar irradiation values available from NASA daily data were used for Sark Island. Those data were decomposed in hourly values by the present team.
- (6)
- Using MATLAB coding, the available data is analyzed in hourly and 15 min intervals to calculate the optimal battery size and auxiliary energy generation require (gas or diesel) to keep the batteries in a good state. Dalton et al. [4] based their research on the calculation of a medium-sized energy generation system by applying all the calculations using Homer software (Hybrid Optimization Models for Energy Resources) power optimization software by NREL (National Renewable Energy Laboratory). In contrast, the method applied in this research are more open to variabilities and adjustment due to the use of our own coding and calculation algorithms to find the most cost-effective system for an entire island.
- (7)
- The sensitivity analysis in this article evaluates more than 40 different scenarios to compare and validate the best energy mix for the island. Moreover, the way that it is implemented enables the coding to be used to calculate the same output for any other new set of data.
2. Background
3. Methodology
3.1. Data Research, Calculations and Estimations Analysis
3.2. Data Processing
3.3. Case Studies
- Case 1: 100% Renewable energy generation system with energy storage. A purely wind energy generation (500 kW) and an oversized battery bank.
- Case 2: Gen-set and renewable energy generation system with energy storage; 500 kW wind turbine with the addition of using the small generator of 375 KVA to charge the battery when renewable energy is insufficient.
- Case 3: 40% Renewable energy penetration. Mix of solar and wind to have a more stable energy output during the day when the peak on the load occurs with a 150 kW wind turbine and 150 kWp solar-PV system.
3.4. Economical and CO2 Emissions
4. Data Research and Processing (Section I and II of the Methodology)
4.1. Load Consumption Estimation
4.2. Wind Generation Estimation
4.2.1. Cononsyth Farm Wind Data Analysis
- U = wind speed;
- = annual mean wind speed.
4.2.2. Wind Turbine Power Output Calculation
- = velocity of the wind (m/s), at height h2;
- V10 = velocity of the wind (m/s), at height h10 = 10 m;
- α = Hellmann coefficient, in this case 0.11.
- Vturb = known wind velocity from turbine power curve (m/s);
- Y150 = known power output for the standard wind velocity (Vturb) (kW);
- = Sark calculated wind velocity at the hub height required.
4.3. Solar PV Generation
- Th = temperature in any hour;
- Tmax = daily maximum temperature;
- Tmin = daily maximum temperature;
- Z = ratio of hourly temperature variation.
- ηcell = solar cell temperature efficiency;
- ηstc = efficiency under Standard Test Conditions and is 18.5%;
- αp = temperature coefficient;
- TC = cell temperature;
- Tc,stc = cell temperature under standard test conditions.
5. Cases of Study (Section III of the Methodology)
5.1. Case 1: 100% Renewable Penetration
- Ewind: Wind energy generation (kW);
- Epv: Solar PV energy generation (kW);
- Eload: Sark Island consumption (kW).
- Ebal1: Initial Energy balance (kW);
- Ebal2: next Energy balance (kW).
5.2. Case II: Renewable Energy Generation and Battery—GenSet System
5.3. Case III: 40% Renewable Penetration
6. Economical and CO2 Emissions (Section IV of the Methodology)
6.1. Case I: 100% Renewable Penetration
6.2. Case II: New Battery Sizing
6.3. Case III: 40% Renewable Penetration
7. Discussion
7.1. Case 1: 100% Renewable Penetration
7.2. Case 2: Renewable Energy Generation and Battery—GenSet System
7.3. Case 3: 40% Renewable Penetration
8. Conclusions
- Case 1: A purely wind energy generation (500 kW) and an oversized battery bank can obtain the minimum greenhouse gases emissions out of all the cases, with a reduction of 90%, but this requires a high investment cost due to the still elevated price of the battery storage. In this scenario, a battery size of approximately 54 MWH is required. Also, in the 20-year LCOE study, this case results in a 2.1 £/kWh energy cost. This is not suitable as a solution for this island, as the cost of energy would be three times higher than the current price.
- Case 2: In this case, the same wind turbine has been used rated at 500 kW, but with the addition of using the small generator of 375 KVA to charge the battery when renewables are not enough. This enables a drastic reduction of the battery bank to a 3.61 MWh of storage or 12 hours of autonomy of constant discharge. Also, the GHG emissions are 70% lower than the actual CO2 emissions level, with a value of 120 gCO2/kWh. Finally, this case shows the most economical feasible LCOE, with a reduction on the energy production cost of 33% to a minimum value of 0.42 p/kWh.
- Case 3: The final case used a mix of solar and wind to have a more stable energy output during the day, when the peak on the load occurs with a 150 kW wind turbine and 150 kWp solar-PV system, producing 39% of the total annual load—75% comes from wind and 25% from the solar arrangement. This set up ends with an energy surplus of 6%. For this case in particular, the battery storage was eliminated in order to reduce the initial installation cost, and instead, the grid stabilization relies on the diesel generator of 600 KVA working constantly at a minimum base generation of 20% is nominal capacity and supplying the load when the renewable are not enough. This system has a minimum installation cost but elevated O&M and GHG emissions, with a reduction of only 20% on the emissions. Finally, this set up will have a higher cost of energy than the actual by 33%.
9. Further Studies and Suggestions
- Implement data research for the load consumption of the island. With an actual island energy profile, the project could change drastically due to the fact that the energy profiles and times of peak demands dictate which renewable energy is more suitable.
- Install a weather station to monitor the wind speed, solar irradiance and tidal current around the island. An analysis of tidal generation was outside the scope of this study, but with better access to data, this could be integrated into this feasibility study.
- The simplified economical assessment in the study was meant to showcase the difference possible outcome between mixes of different technologies. To have a more accurate economical assessment, an actual cost of the island energy generation will be required.
- Evaluate economic incentives for energy distribution to ensure a stable diesel generation output even when most of the energy is produced by renewables.
- Evaluate the interconnection of the island to produce a more distributed energy system that can stabilize the use of the renewables on the island.
- Include incentives for the installation of renewable energy via government programs.
Supplementary Materials
Author Contributions
Funding
Conflicts of Interest
References
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Renewable Energy CO2 Emissions | |||
---|---|---|---|
CO2 Emissions | Solar Photovoltaics panels | 41 | kgCO2/MWh |
Wind turbine | 60 | kgCO2/MWh | |
Lithium Battery storage | 150 | kgCO2/MWh | |
Diesel Generator | 458 | kgCO2/MWh |
Technical Data | ||||
---|---|---|---|---|
Specification | HUMMER H13.2-20 kW | AERODAN 75/15 | AN Bonus 150/30 | ATB RIVA CALZONI 500.54 |
Rated Power (kW) | 20 | 75 | 150 | 500 |
Rotor Diameter (m) | 13.2 | 17 | 23 | 54 |
Hub Height (m) | 35 | 23 | 30/40 | 50 |
N°. Blades | 3 | 3 | 3 | 3 |
Swept Area (m2) | 136.9 | 227.0 | 415.0 | 2290.0 |
Cut-in Wind Speed (m/s) | 3.0 | 5.0 | 3.5 | 3.5 |
Cut-out Wind Speed (m/s) | 25 | 25 | 25 | 25 |
Parameter | Jan. | Feb. | Mar. | Apr. | May | Jun. | Jul. | Aug. | Sep. | Oct. | Nov. | Dec. |
---|---|---|---|---|---|---|---|---|---|---|---|---|
Tmax | 8.91 | 8.52 | 9.57 | 10.93 | 13.35 | 15.65 | 17.68 | 18.49 | 17.51 | 15.44 | 12.26 | 10.04 |
Tmin | 6.84 | 6.33 | 7.19 | 8.39 | 10.74 | 13.13 | 15.18 | 16.08 | 15.17 | 13.22 | 10.22 | 7.97 |
ID | 0.61 | 0.96 | 1.58 | 2.09 | 2.48 | 2.65 | 2.55 | 2.21 | 1.76 | 1.12 | 0.73 | 0.5 |
IG | 0.94 | 1.70 | 2.90 | 4.61 | 5.94 | 6.27 | 6.10 | 5.22 | 3.84 | 2.14 | 1.18 | 0.74 |
Case 1: Energy Balanced | |||||||
---|---|---|---|---|---|---|---|
Scenario N°. | WTC (kWp) | WTAEG (mWh/year) | WEI (%) | ESPVC (kWp) | SPVAEG (mWh/year) | PVEI (%) | SIAEC (MWh/Year) |
1 | 40 | 211.42 | 13.2 | 1579.6 | 1388.58 | 86.8 | 1600.0 |
2 | 115 | 330.15 | 20.6 | 1444.5 | 1269.85 | 79.4 | 1600.0 |
3 | 150 | 555.15 | 34.7 | 1188.6 | 1044.85 | 65.3 | 1600.0 |
4 | 225 | 779.59 | 48.7 | 933.3 | 820.41 | 51.3 | 1600.0 |
5 | 245 | 885.30 | 55.3 | 813.0 | 714.70 | 44.7 | 1600.0 |
6 | 300 | 1110.29 | 66.4 | 557.1 | 489.71 | 30.6 | 1600.0 |
7 | 320 | 1216.00 | 76.0 | 436.8 | 384.00 | 24.0 | 1600.0 |
8 | 435 | 1514.99 | 94.6 | 97.5 | 85.71 | 5.4 | 1600.0 |
9 | 450 | 1665.44 | 104.1 | 0.0 | 0.00 | 0.0 | 1600.0 |
10 | 500 | 2425.84 | 151.6 | 0.0 | 0.00 | 0.0 | 1600.0 |
Renewable Energy Systems | Scenario N°. | Battery Size | |
---|---|---|---|
Case 1. Scenario 6 | 557 kWp PV and 300 kW Wind | 1 | 0.90 |
2 | 1.80 | ||
3 | 3.61 | ||
4 | 7.22 | ||
Case 1. Scenario 10 | 500 kW Wind | 5 | 0.90 |
6 | 1.80 | ||
7 | 3.61 | ||
8 | 7.22 |
RS | Scenario N°. | BS (MWh) | SIC (MWh/year) | RG (MWh/year) | EW (MWh/year) | GD (MWh/year) | CPY | GAU (Hours) | WDAC |
---|---|---|---|---|---|---|---|---|---|
Case 1. Scenario 6. | 1 | 0.90 | 1600.0 | 1681.18 | 518.89 | 285.7 | 354 | 866 | 4.0 |
2 | 1.80 | 1600.0 | 1681.21 | 489.85 | 332.2 | 290 | 1,007 | 2.0 | |
3 | 3.61 | 1600.0 | 1681.29 | 414.30 | 291.3 | 266 | 883 | 1.0 | |
4 | 7.22 | 1600.0 | 1681.37 | 331.43 | 229.6 | 184 | 696 | 0.5 | |
Case 1. Scenario 10 | 5 | 0.90 | 1600.0 | 2424.60 | 1245.90 | 286.1 | 287 | 867 | 4.0 |
6 | 1.80 | 1600.0 | 2424.65 | 1194.43 | 312.1 | 245 | 946 | 2.0 | |
7 | 3.61 | 1600.0 | 2424.69 | 1152.20 | 307.8 | 175 | 933 | 1.0 | |
8 | 7.22 | 1600.0 | 2424.76 | 1083.22 | 255.7 | 156 | 775 | 0.5 |
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Robinson, S.; Papadopoulos, S.; Jadraque Gago, E.; Muneer, T. Feasibility Study of Integrating Renewable Energy Generation System in Sark Island to Reduce Energy Generation Cost and CO2 Emissions. Energies 2019, 12, 4722. https://doi.org/10.3390/en12244722
Robinson S, Papadopoulos S, Jadraque Gago E, Muneer T. Feasibility Study of Integrating Renewable Energy Generation System in Sark Island to Reduce Energy Generation Cost and CO2 Emissions. Energies. 2019; 12(24):4722. https://doi.org/10.3390/en12244722
Chicago/Turabian StyleRobinson, Shamir, Savvas Papadopoulos, Eulalia Jadraque Gago, and Tariq Muneer. 2019. "Feasibility Study of Integrating Renewable Energy Generation System in Sark Island to Reduce Energy Generation Cost and CO2 Emissions" Energies 12, no. 24: 4722. https://doi.org/10.3390/en12244722
APA StyleRobinson, S., Papadopoulos, S., Jadraque Gago, E., & Muneer, T. (2019). Feasibility Study of Integrating Renewable Energy Generation System in Sark Island to Reduce Energy Generation Cost and CO2 Emissions. Energies, 12(24), 4722. https://doi.org/10.3390/en12244722