Smart Reserve Planning Using Machine Learning Methods in Power Systems with Renewable Energy Sources
Abstract
:1. Introduction
- i.
- The article proposes a useful approach for the integration of IRESs, such as solar and wind power plants, into power systems. It addresses the problem of uncertainties of power generated from IRESs and uncertainty of power consumed in the power system. Provides insights to improve power system reliability while maximizing the use of renewable energy.
- ii.
- The EPNS, a reliability criterion for power systems, was developed with a new method that takes into consideration the estimation errors in the power produced from intermittent sources such as wind and solar and the estimation errors of the power consumed in the power system.
- iii.
- The SRP approach was proposed using the EPNS formulation. In this approach, the limit EPNS value determined by the power system operator is taken into account for reliability and flexibility in power systems based on renewable energy. The SRP process aims to minimize the total cost by optimizing power generation, reserve allocation, and EPNS.
- iv.
- The paper investigates the relationship between forecast accuracy, reserve requirements, and total cost in power systems. It reveals how different forecasting methods affect reliability and reserve requirements. It also analyzes the impact of increasing the limit EPNS value allowed by the power system operator on the reserve requirement and total cost.
- v.
- Prediction results obtained from different machine learning algorithms, including MLP, LSTM, and CNN, were compared. The accuracy of the algorithms used for CP, GWP, and GSP predictions is evaluated, and the most successful prediction algorithm is highlighted.
2. Materials and Methods
2.1. Forecasting Methodologies
2.1.1. Data Sources and Pre-Processing
2.1.2. Network Structures of the Used Forecasting Methods
2.1.3. Error Metrics
2.2. Expected Power Not Served Formulation and Smart Reserve Planning
2.2.1. Formulation of Expected Power Not Served
2.2.2. Smart Reserve Planning and Cost Function
- Making CP, GWP, and GSP predictions using the CNN algorithm, which gives the best results among the prediction algorithms.
- Calculation of PCFE value using CP, GWP, and GSP estimates.
- Calculating the α variable and then calculating the EPNS value in the power system.
- Comparison of the calculated EPNS value with the limit EPNS value determined by the power system operator.
- If EPNS > EPNSmax, the reserve is increased by ∆x, and the process continues by recalculating the EPNS value and the α variable. This cycle continues until the EPNS ≤ EPNSmax condition is met. In the study, the ∆x value for the sample power system was determined as 0.1 kW.
- When the EPNS ≤ EPNSmax condition is met, the unit commitment is made, and the process ends.
3. Analysis and Results
3.1. Studies on Forecasting Methods
3.1.1. Network Training Processes Regarding the Prediction Methods
3.1.2. Accuracy of Prediction Methods
3.2. Studies on Smart Reserve Planning and Total Cost
3.2.1. The Impact of Forecast Accuracy on Reserve Requirement and Total Cost
3.2.2. Effect of Intermittent Source Penetration on Reserve Requirement and Total Cost
3.2.3. Effect of System Reliability on Reserve Requirement and Total Cost
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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References | Strengths of the Studies | Weaknesses of the Studies |
---|---|---|
[2,3,4,6,10] | The studies focused on local complementarity for power systems with renewable energy sources, the effects of these resources on storage systems, investment and production costs, measurement of CO2 emission costs, and power quality problems. | Energy planning is a crucial topic that needs to be assessed in the event that renewable energy sources are significantly integrated into power systems, even though studies have examined the varied implications of renewable energy sources on power systems. |
[35,36,37,38,39,40,41] | The studies focused on estimating the power obtained from IRESs and the power consumed in the power system by using machine learning methods. | Although the production from renewable energy sources is estimated in studies using machine learning methods, the integration of these resources into power systems should also be evaluated. |
[28,29,42] | The studies focus on the use of methodologies and techniques that can be used in assessing power system reliability in cost/benefit evaluation and power system energy planning. | The energy planning techniques recommended by the research address power system reliability, but it is also important to assess potential reliability issues that may develop from integrating renewable energy sources into power systems. |
[19,30,31,32,33,34] | In the studies, energy planning approaches have been presented in which the consumed power and produced wind power estimation errors are included in the optimization process as EPNS. | Not including machine learning methods in the planning process leads to an increase in EPNS. In addition, solar energy systems with high penetration in power systems were not included in the studies. |
Layer | CP | GWP | GSP | |||
---|---|---|---|---|---|---|
Output Shape | Parameter | Output Shape | Parameter | Output Shape | Parameter | |
Dense 1 | (, 20) | 420 | (, 20) | 420 | (, 60) | 3660 |
Dense 2 | (, 128) | 2688 | (, 128) | 2688 | (, 128) | 7808 |
Dense 3 | (, 256) | 33,024 | (, 256) | 33,024 | (, 256) | 33,024 |
Dense 4 | (, 1) | 257 | (, 1) | 257 | (, 1) | 257 |
Total Parameter | 36,389 | 36,389 | 44,749 |
Layer | CP | GWP | GSP | |||
---|---|---|---|---|---|---|
Output Shape | Parameter | Output Shape | Parameter | Output Shape | Parameter | |
LSTM | (, 200) | 162,400 | (, 200) | 162,400 | (, 200) | 165,600 |
Dense 1 | (, 128) | 25,728 | (, 128) | 25,728 | (, 128) | 25,728 |
Dense 2 | (, 256) | 33,024 | (, 256) | 33,024 | (, 256) | 33,024 |
Dense 3 | (, 1) | 257 | (, 1) | 257 | (, 1) | 257 |
Total Parameter | 221,409 | 221,409 | 224,609 |
Layer | CP | GWP | GSP | |||
---|---|---|---|---|---|---|
Output Shape | Parameter | Output Shape | Parameter | Output Shape | Parameter | |
Conv1D 1 | (, 9, 64) | 320 | (, 9, 64) | 192 | (, 9, 64) | 704 |
Conv1D 2 | (, 7, 64) | 12,352 | (, 7, 64) | 12,352 | (, 7, 64) | 12,352 |
Conv 1D 3 | (, 4, 64) | 16,448 | (, 4, 64) | 16,448 | (, 4, 64) | 16,448 |
Max Pooling 1D | (, 2, 64) | 0 | (, 2, 64) | 0 | (, 2, 64) | 0 |
Flatten | (, 128) | 0 | (, 128) | 0 | (, 128) | 0 |
Dense 1 | (, 128) | 16,512 | (, 128) | 16,512 | (, 128) | 16,512 |
Dense 2 | (, 256) | 33,024 | (, 256) | 33,024 | (, 256) | 33,024 |
Dense 3 | (, 512) | 131,584 | (, 512) | 131,584 | (, 512) | 131,584 |
Dense 4 | (, 256) | 131,584 | (, 256) | 131,328 | (, 256) | 131,328 |
Dense 5 | (, 1) | 257 | (, 1) | 257 | (, 1) | 257 |
Total Parameter | 341,825 | 341,697 | 342,209 |
Error Metrics | CP | GWP | GSP | ||||||
---|---|---|---|---|---|---|---|---|---|
MLP | LSTM | CNN | MLP | LSTM | CNN | MLP | LSTM | CNN | |
R2 | 0.65218 | 0.73558 | 0.99473 | 0.96038 | 0.96136 | 0.99904 | 0.97938 | 0.99586 | 0.99959 |
MSE | 0.00236 | 0.00179 | 4 × 10−5 | 0.00099 | 0.00097 | 2 × 10−5 | 0.00152 | 0.00031 | 3 × 10−5 |
RMSE | 0.04855 | 0.04233 | 0.00598 | 0.03147 | 0.03108 | 0.00491 | 0.03898 | 0.01748 | 0.00551 |
MAE | 0.03707 | 0.03275 | 0.00424 | 0.01712 | 0.01689 | 0.00248 | 0.01929 | 0.00784 | 0.0032 |
MAPE | 11.3498 | 10.6392 | 1.4961 | 6.749 | 6.9987 | 1.0776 | 7.4123 | 2.951 | 1.4512 |
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Atiç, S.; Izgi, E. Smart Reserve Planning Using Machine Learning Methods in Power Systems with Renewable Energy Sources. Sustainability 2024, 16, 5193. https://doi.org/10.3390/su16125193
Atiç S, Izgi E. Smart Reserve Planning Using Machine Learning Methods in Power Systems with Renewable Energy Sources. Sustainability. 2024; 16(12):5193. https://doi.org/10.3390/su16125193
Chicago/Turabian StyleAtiç, Serdal, and Ercan Izgi. 2024. "Smart Reserve Planning Using Machine Learning Methods in Power Systems with Renewable Energy Sources" Sustainability 16, no. 12: 5193. https://doi.org/10.3390/su16125193
APA StyleAtiç, S., & Izgi, E. (2024). Smart Reserve Planning Using Machine Learning Methods in Power Systems with Renewable Energy Sources. Sustainability, 16(12), 5193. https://doi.org/10.3390/su16125193