Wind and Solar Intermittency and the Associated Integration Challenges: A Comprehensive Review Including the Status in the Belgian Power System
Abstract
:1. Introduction
2. Intermittency and the Power System
2.1. Power System Reserves
2.2. CO Emission
2.3. Power System Losses
2.4. Power Curtailment
2.5. Ancillary Services
2.6. Protection and Control Systems
2.7. Power System Reliability
3. Wind Energy
3.1. History and Improvements
3.2. Wind Speed Variations
4. Solar Energy
4.1. History and Improvements
4.2. Solar PV Systems
4.3. Solar Thermal Power Systems
4.4. Solar Irradiance Variations
5. Wind and Solar Forecasting Methods
6. Accommodating or Mitigating Intermittency
7. Belgian Power System
7.1. The Path towards Decarbonisation
7.2. Status of the Power System
7.3. RES Share Predictions
7.4. The Year Marked by COVID-19
8. Discussion and Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
RES | Renewable Energy Sources |
CO | Carbon Dioxide |
IPCC | Intergovernmental Panel on Climate Change |
IRENA | International Renewable Energy Agency |
PV | Photovoltaic |
AS | Ancillary Services |
LOLP | Loss Of Load Probability |
LOLE | Loss Of Load Event |
EU | European Union |
CSP | Concentrated Solar Power |
DC | Direct Current |
AC | Alternating Current |
MPPT | Maximum Power Point Tracking |
PT | Parabolic Trough |
ST | Solar Tower |
FR | Fresnel Reflector |
SD | Solar Dish |
DNI | Direct Normal Irradiance |
DHI | Diffused Horizontal Irradiance |
GHI | Global Horizontal Irradiance |
LCOE | Levelised Cost Of Energy |
c-Si | crystalline Silicon |
ESS | Energy Storage System |
ISO | International Organization for Standardization |
WT | Wavelet Transform |
ARIMA | Auto Regressive Integrated Moving Average |
NASA | National Aeronautics and Space Administration |
POWER | Prediction of Worldwide Energy Resources |
LSTM | Long Short Term Memory |
PSO | Particle Swarm Optimization |
ANN | Artificial Neural Network |
SSM | Supply-Side Management |
DSM | Demand-Side Management |
PEV | Plug-in Electric Vehicles |
PHES | Pumped Hydroelectric Storage |
CAES | Compressed Air Energy Storage |
RFB | Redox Flow Battery |
BESS | Battery Energy Storage System |
NiCd | Nickel-Cadmium |
ZnBr | Zinc-Bromide |
NaS | Sodium-Sulphur |
Li-ion | Lithium-ion |
NMC | Nickel Cobalt Aluminium |
NCA | Nickel Cobalt Aluminium Oxide |
LFP | Lithium Iron Phosphate |
CESS | Chemical Energy Storage Systems |
FC | Fuel Cell |
HFC | Hydrogen Fuel Cell |
PEMFC | Proton Exchange Menbrane Fuel Cell |
DMFC | Direct Methanol Fuel Cell |
AFC | Alkaline Fuel Cells |
SOFC | Solid Oxide Fuel Cells |
EESS | Electrical Energy Storage System |
UC | Ultra-Capacitors |
SMES | Superconducting Magnetic Energy Storage |
TESS | Thermal Energy Storage System |
NDC | Nationally Determined Contribution |
TSO | Transmission System Operator |
EENS | Expected Energy Not Served |
FCR | Frequency Containment Reserve |
aFRR | automatic Frequency Restoration Reserve |
mFRR | manual Frequency Restoration Reserve |
NECP | National Energy and Climate Plan |
DSO | Distribution System Operator |
WEM | With Existing Measures |
WAM | With Additional Measures |
NREAP | National Renewable Energy Action Plan |
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Parameter [32] | RES | Penetration Level | Variation of the Parameter | Ref. |
---|---|---|---|---|
System reserve (short-term) | wind wind | 5–50% 0–50% | 0.3–1.1% (of the installed wind capacity) 0–0.1 (wind power reserve/load) | [36] [37] |
CO2 reduction (short-term) | wind wind-solar wind-solar | 11% 23% 33% | 7% 2.3% <1% | [35,36] [35,36] [35,36] |
System losses (short term) | wind wind | 20% 30% | 2€/MWh (extra transmission cost) 3€/MWh (extra transmission cost) | [32] [32] |
Curtailment (short-term) | wind-solar wind-solar wind | 2.5–13.8% 10.9–25.3% 2.6%/9.8%/22.5% | 9.7–0.3% 0.3–1.6% 11%/0.7%/3% | [40] [40] [41] |
Capacity credit (long-term) | wind wind wind-solar | <5% >40% 16%/20%/27% | Equal to the average wind power Towards a constant value 30%/26.6%/23.7% (of rated capacity) | [61] [61] [62] |
Classification | Predictability | Aggregation Effect |
---|---|---|
Annual | Not predictable but small | NA |
Seasonal | Predictable | Limited |
Synoptic | Predictable few days ahead | Through wider geographical dispersion |
Diurnal | Predictable | NA |
Turbulences | Not predictable | Ideally rule |
Technology | Relative Cost | Land Occupancy | Thermo-Dynamic Efficienecy | Operating Temperature Range (°C) | Solar Concentration Ratio | Require Cooling System |
---|---|---|---|---|---|---|
PT | Low | Large | Low | 20–400 | 15–45 | Yes |
ST | High | Medium | High | 300–565 | 150–1500 | Yes |
FR | Very low | Medium | Low | 50–300 | 10–40 | Yes |
SD | Very high | Small | High | 120–1500 | 100–1000 | No |
Strengths | Challenges |
---|---|
- In line with its strategy, Belgium has established and maintained a robust and interconnected electricity and gas infrastructure as well as a leading position in market design and integration | - Stemming from small area of Belgium, only a limited part of the country’s demand could be provided by domestic renewable generation, making Belgium unable to rely upon domestic capacity on the way of decarbonisation |
- Surrounded by large countries such as Germany, France and the UK with different strategies in terms of energy, giving Belgium the freedom to opt for their best choices | - In the current market design, with the presence of higher amounts of renewables in the system, the profitability of conventional units are of concerns |
- Situated at the center of Europe, crossroads of important renewable generation hubs and close to the main load centers | - Meeting load demand becomes growingly burdensome as in less than a decade from now nuclear plants are supposed to phase- out in Belgium |
Year | 2015 | 2016 | 2017 | 2017 | 2019 |
---|---|---|---|---|---|
Index (Belgium) [159] | 10.48 | 10.57 | 10.69 | 10.89 | 10.78 |
Index (Country) No.1 [160] | (Germany) 9.48 | (Germany) 9.37 | (Germany) 9.20 | (Germany) 8.79 | (Germany) 7.64 |
Index (Country) No.2 [161] | (UK) 6.68 | (UK) 6.27 | (UK) 6.05 | (UK) 5.91 | (UK) 5.73 |
Index (Country) No.3 [162] | (Turkey) 4.33 | (Turkey) 4.50 | (Turkey) 4.89 | (Turkey) 4.76 | (Turkey) 4.60 |
Index (Country) No.4 [163] | (Italy) 5.44 | (Italy) 5.44 | (Italy) 5.49 | (Italy) 5.47 | (Italy) 5.37 |
Index (Country) No.5 [164,165] | (France) 4.76 | (France) 4.83 | (France) 4.90 | (Poland) 8.42 | (Poland) 8.02 |
Index (Country) No.6 [164,165] | (Poland) 7.71 | (Poland) 8.05 | (Poland) 8.31 | (France) 4.73 | (France) 4.59 |
Index (Europe) [166] | 5.66 | 5.73 | 5.77 | 5.69 | 5.50 |
Year | Total Hours | Share of Annual Consumed Electricity |
---|---|---|
2018 | 0 | 0.0% |
2019 | 8 | 0.1% |
2020 | 119 | 1.4% |
RES Type | Advantage | Disadvantage | Technology | Advantage |
---|---|---|---|---|
Wind | - A proven renewable source - Provide inertia for the grid - Could be available 24/7 - Occupies a small are | - Intermittent - Eyesore on the nature - Noise pollution | Onshore | - A proven technology - Easier and quicker to install - Shorter distance to load - Cheaper compared to onshore turbines |
Offshore | - Higher wind speed - More foreseeable and consistent wind - Less mechanical stress of turbine - Less importance of noise | |||
Solar | - A proven renewable source - More predictable compared to wind - Higher correlation with the demand | - Decreases inertia of the grid - Not available after daylight - Intermittent | PV | - Collects all three components of the sunlight - A proven technology - Declining cost of equipment - Easier to manufacture - Low operating and maintenance cost - Locally available |
CSP | - Able to use thermal storage systems - Higher efficiency compared to PV - Low operating cost | |||
Disadvantage | Maturity | Recently Developing | Cumulative Installed Capacity World/Belgium | |
- Noise pollution - Occupies land - Eyesore on the land | High | NA | 594.25/2.2 GW (Onshore) | |
- More maintenance costs - Harder to build - Eyesore on the sea - Negative impact on marine life | Medium | Yes | 28.15/1.5 GW (Offshore) | |
- Needs additional equipment such as inverters - Low efficiency - Dependent on the location, such as for residential purposes or whether panels are covered by tall buildings - Requires large area for land-mounted plants | High | NA | 578.5/4.5 GW (PV) | |
- Only use DNI component of the sunlight - Strongly dependant on the geographical location - Hard and expensive to manufacture - Requires large area | PT: High ST: Medium FR: Low SD: Low | PT: NA ST: Yes FR: No SD: No | 6.3/- GW (CSP) |
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Asiaban, S.; Kayedpour, N.; Samani, A.E.; Bozalakov, D.; De Kooning, J.D.M.; Crevecoeur, G.; Vandevelde, L. Wind and Solar Intermittency and the Associated Integration Challenges: A Comprehensive Review Including the Status in the Belgian Power System. Energies 2021, 14, 2630. https://doi.org/10.3390/en14092630
Asiaban S, Kayedpour N, Samani AE, Bozalakov D, De Kooning JDM, Crevecoeur G, Vandevelde L. Wind and Solar Intermittency and the Associated Integration Challenges: A Comprehensive Review Including the Status in the Belgian Power System. Energies. 2021; 14(9):2630. https://doi.org/10.3390/en14092630
Chicago/Turabian StyleAsiaban, Siavash, Nezmin Kayedpour, Arash E. Samani, Dimitar Bozalakov, Jeroen D. M. De Kooning, Guillaume Crevecoeur, and Lieven Vandevelde. 2021. "Wind and Solar Intermittency and the Associated Integration Challenges: A Comprehensive Review Including the Status in the Belgian Power System" Energies 14, no. 9: 2630. https://doi.org/10.3390/en14092630
APA StyleAsiaban, S., Kayedpour, N., Samani, A. E., Bozalakov, D., De Kooning, J. D. M., Crevecoeur, G., & Vandevelde, L. (2021). Wind and Solar Intermittency and the Associated Integration Challenges: A Comprehensive Review Including the Status in the Belgian Power System. Energies, 14(9), 2630. https://doi.org/10.3390/en14092630