Recent Approaches of Forecasting and Optimal Economic Dispatch to Overcome Intermittency of Wind and Photovoltaic (PV) Systems: A Review
Abstract
:1. Introduction
2. Forecasting of Wind Power Generation
2.1. Wind Power Generation Fundamentals
2.2. Weibull Distribution (WD) for Wind Power Forecasting
2.3. Review of Wind Power Forecasting without NN
2.4. Review of Wind Power Forecasting with the Incorporation of NN
3. Forecasting Solar PV Power Generation
3.1. Solar PV Power Generation Fundamentals
3.2. Weibull Distribution (WD) for Solar (PV) Forecasting
3.3. Review of PV Power Forecasting without NN
3.4. Review of PV Power Forecasting with the Incorporation of NN
4. Optimal Economic Dispatching (OED) using PSO
4.1. A Brief Review of PSO Algorithm
4.2. Review of PSO Applied to OED Incorporating RESs
4.3. Constraints Handling by PSO
4.3.1. Compensation for Load and Voltage Variation
4.3.2. Control of Frequency Fluctuations
4.3.3. Regulation of Ramp-Rate Limits
4.3.4. Storage Mechanism as a Solution
- (i)
- Thermal Power Generation is dependable, but it presents major issues such as a rise in carbon emissions, an increase in fuel cost, and special consideration is required in system coordination. We cannot use thermal plants as backup generation only as they take a significant amount of time in their start-up, and fuel cost for spinning reserve contributes to disturbing the economic dispatch that is a major concern in current power system.
- (ii)
- Battery Storage compensation through batteries is a modern age replacement of backup thermal plants. It requires a properly designed storage system to provide adequate power to supply the load when power from RESs is lesser than the demand. The battery storage system also provides an additional benefit of peak shaving as RES starts supplying an excessive supply for storage [117,118]. The major concern is of designing a properly designed storage system to achieve the optimum cost-saving and stability of the power system.
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
Abbreviations
ANN | Artificial Neural Networks |
ANFIS | Artificial Neuro Fuzzy Inference System |
CNN | Convolutional Neural Networks |
CEED | Combined Emission Economic Dispatch |
DED | Dynamic Economic Dispatch |
DWPSO | Double Weighted Particle Swarm Optimization |
DNI | Direct Normal Solar Irradiation |
ED | Economic Dispatch |
EDP | Economic Dispatch Problem |
ERCOT | Electric Reliability Council of Texas |
ESRMC | Energy and Spinning Reserve Market Cleaning |
EMD | Empirical Mode Decomposition |
GHI | Graphical Horizontal Solar Irradiation |
GP | Genetic Programming |
HANN | Hybrid Artificial Neural Network |
ICA | Independent Component Analysis |
LUBE | Lower-Upper Bound Estimation |
MLFFNN | Multi-layer Feed-forward Neural Networks |
MAPE | Model Predictive Control |
MG | Micro-grid |
MMG | Multi Micro-grid |
MOM | Method of Moments |
NN | Neural Networks |
NWP | Numerical Weather Predictor |
OED | Optimal Economic Dispatch |
PSO | Particle Swarm Optimization |
PV | Photovoltaics |
PDEM | Part Density Energy Method |
PI | Prediction Interval |
PCA | Principal Component Analysis |
RES | Renewable Energy Sources |
RF | Reliability Factor |
RBFNN | Radial Basis Function Neural Networks |
RMSE | Root Mean Squared Error |
SVM | Support Vector Machine |
SD | Standard Deviation |
SVR | Support Vector Regression |
SSER | Small-Scale Energy Resource |
WD | Weibull Distribution |
WT | Wind Turbine |
WTG | Wind Turbine Generator |
WEC | World Energy Council |
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Characteristics | Weibull Distribution (WD) | Rayleigh Distribution (RD) | Gaussian/Normal Distribution (ND) | Ref. No. |
---|---|---|---|---|
Mathematical representation & parameters | > 0 is the scale parameter of the distribution. | is the scale parameter of the distribution. | is the mean, whereas σ is the standard deviation. | [41,42,43,44] |
Flexibility | WD is very flexible as a small sample size; the estimated shape of the distribution may be altered considerably. | Not flexible as a response to the out of range parameters are strict. | Not flexible as the shape doesn’t vary. | [45,46,47,48,49] |
Accuracy | Fatigue test results follow WD, showing it to be more accurate. It is effective for both values above and below the sample size N. | Close to WD. | Effective only for values below the sample size N. | |
Reliability | WD is more reliable even in situations where distribution parameters (shape and scale) tend to vary. | RD loses its effectiveness in situations where variables undergo variation. | Reliability in ND suffers severely at the hands of variation in variables. |
Wind Speed Probability Distribution | Wind Power Distribution | Explanation |
---|---|---|
where is electric output power of WT; , and represent cut-in, cut-out, and the rated wind speed, respectively [50,51]. | ||
The authors suggest that wind velocity follows Rayleigh distribution, whereas the power follows Weibull distribution [52]. | ||
where is generated power at speed , and , and are wind turbine parameters [53]. | ||
Here and are the shape and scale parameters; is power output against wind speed [54,56]. | ||
[55] | ||
[57] | ||
Resource/Power Forecasting Model | Prediction Error | Description |
---|---|---|
Here , and are mean wind speed, standard deviation, and gamma function, respectively. Also, , and are total input and output pairs, forecasted wind speed, and actual wind speed for one hour, respectively [61]. | ||
Here n denotes the specified time period Pi,pred and Pi,means are predicted and calculated wind powers [64]. | ||
[65] | ||
Here denotes the specified time period, and and are predicted and calculated wind powers, respectively [66]. |
Solar Distribution Functions for Prediction | PV Power Production | Reference |
---|---|---|
are the reliability function, slope, location and scale parameters, respectively [78] stand for solar active power, amount of solar irradiance, efficiency, the total area of PV modules, PV cell temperature’s forecast error, and co-efficient of the temperature, respectively. | ||
and η are active power, active power-voltage relationship, and converter efficiency, respectively [80]. | ||
[81] | ||
is the solar irradiance function [83]. |
Model Used for Power Production or Resource/Power Forecasting | Prediction Error | Reference |
---|---|---|
are voltage fluctuations and voltage imbalance factor, respectively [85]. | ||
Here are measured and predicted solar irradiations respectively [86]. | ||
Here are estimated, measured, and average estimated and measured values, respectively [87]. | ||
hist and pred historical and predicted results [88] stand for solar active power, amount of solar irradiance, efficiency, total area of PV modules, PV cell temperature’s forecast error, and co-efficient of the temperature, respectively. |
Constraints | Presented Model | Objective Function | Reference |
---|---|---|---|
Load and Voltage Variations | are the load demand, transmission losses, solar and wind powers, respectively [103,104]. | ||
Frequency Fluctuations | [105,106,107,108,109] | ||
Ramp-Rate Limits | [110,111,112,113] | ||
Storage Mechanism | [114,115,116,117,118,119,120,121,122,123,124,125] |
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Ellahi, M.; Abbas, G.; Khan, I.; Koola, P.M.; Nasir, M.; Raza, A.; Farooq, U. Recent Approaches of Forecasting and Optimal Economic Dispatch to Overcome Intermittency of Wind and Photovoltaic (PV) Systems: A Review. Energies 2019, 12, 4392. https://doi.org/10.3390/en12224392
Ellahi M, Abbas G, Khan I, Koola PM, Nasir M, Raza A, Farooq U. Recent Approaches of Forecasting and Optimal Economic Dispatch to Overcome Intermittency of Wind and Photovoltaic (PV) Systems: A Review. Energies. 2019; 12(22):4392. https://doi.org/10.3390/en12224392
Chicago/Turabian StyleEllahi, Manzoor, Ghulam Abbas, Irfan Khan, Paul Mario Koola, Mashood Nasir, Ali Raza, and Umar Farooq. 2019. "Recent Approaches of Forecasting and Optimal Economic Dispatch to Overcome Intermittency of Wind and Photovoltaic (PV) Systems: A Review" Energies 12, no. 22: 4392. https://doi.org/10.3390/en12224392
APA StyleEllahi, M., Abbas, G., Khan, I., Koola, P. M., Nasir, M., Raza, A., & Farooq, U. (2019). Recent Approaches of Forecasting and Optimal Economic Dispatch to Overcome Intermittency of Wind and Photovoltaic (PV) Systems: A Review. Energies, 12(22), 4392. https://doi.org/10.3390/en12224392