A Combined Method for Short-Term Load Forecasting Considering the Characteristics of Components of Seasonal and Trend Decomposition Using Local Regression
Abstract
:1. Introduction
2. The Proposed Combined Method and Principles
2.1. The Proposed Combined Method
2.2. Principle of STL
2.3. Principle of LSTM
2.4. Principle of CNN
2.5. Principle of GPR
3. Experimental Analysis
3.1. Evaluation Indicators
3.2. Experimental Dataset
3.3. Load Decomposition
3.4. Component Prediction
3.4.1. Trend Component Prediction Based on LSTM
3.4.2. Seasonal Component Prediction Based on CNN
3.4.3. Residual Component Prediction Based on GPR
3.5. Comparison of Prediction Results and Methods
4. Conclusions
- (1)
- Compared to the LSTM, CNN, GPR, STL-LSTM, STL-CNN, and STL-GPR models, the proposed combined method demonstrates higher prediction accuracy, indicating that applying different prediction methods to the characteristics of the STL components can effectively improve prediction accuracy.
- (2)
- The proposed combined method comprehensively considers the trend, periodic, and random characteristics of the load sequence. It can effectively extract the trend and periodic characteristics of the load sequence while taking into account the uncertainty of load variations.
- (3)
- The proposed combined forecasting method, which integrates STL with deep learning technologies, has shown considerable improvements in predicting accuracy and stability. Although this method offers advantages over traditional forecasting models, there is still room for enhancement when dealing with the complexity and dynamics of the power system. Therefore, future research will concentrate on integrating a broader range of data sources, including meteorological conditions, economic indicators, and electricity market prices, with the aim of enhancing the model’s predictive capabilities for power load fluctuations by incorporating both macro and micro factors. Additionally, the exploration of novel data decomposition techniques and the adoption of more sophisticated machine learning algorithms will be a primary focus of future research aiming to reveal the intrinsic characteristics of data, thereby boosting the accuracy and reliability of predictions. Through thorough research and implementation in these key areas, it is anticipated that not only will the overall performance of short-term power load forecasting be significantly enhanced but also more robust and precise decision support will be provided for the effective and reliable operation of the power system. These efforts will further enhance the adaptability and robustness of forecasting models in response to the intricate dynamics of the power system, establishing a solid foundation for addressing the challenges encountered by future energy systems.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Prediction Method | MAPE | MAE (MW) | RMSE (MW) |
---|---|---|---|
The proposed combined method | 0.14% | 151.3506 | 265.1293 |
LSTM | 2.52% | 1421.0175 | 1756.1287 |
CNN | 1.69% | 893.1694 | 1014.3561 |
GPR | 1.74% | 961.3262 | 1225.6124 |
STL-LSTM | 0.81% | 350.3907 | 432.0894 |
STL-CNN | 0.60% | 288.1016 | 397.1486 |
STL-GPR | 1.05% | 521.2655 | 660.9917 |
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Hu, S.; Wang, Y.; Cai, W.; Yu, Y.; Chen, C.; Yang, J.; Zhao, Y.; Gao, Y. A Combined Method for Short-Term Load Forecasting Considering the Characteristics of Components of Seasonal and Trend Decomposition Using Local Regression. Appl. Sci. 2024, 14, 2286. https://doi.org/10.3390/app14062286
Hu S, Wang Y, Cai W, Yu Y, Chen C, Yang J, Zhao Y, Gao Y. A Combined Method for Short-Term Load Forecasting Considering the Characteristics of Components of Seasonal and Trend Decomposition Using Local Regression. Applied Sciences. 2024; 14(6):2286. https://doi.org/10.3390/app14062286
Chicago/Turabian StyleHu, Sile, Yuan Wang, Wenbin Cai, Yuan Yu, Chao Chen, Jiaqiang Yang, Yucan Zhao, and Yuan Gao. 2024. "A Combined Method for Short-Term Load Forecasting Considering the Characteristics of Components of Seasonal and Trend Decomposition Using Local Regression" Applied Sciences 14, no. 6: 2286. https://doi.org/10.3390/app14062286
APA StyleHu, S., Wang, Y., Cai, W., Yu, Y., Chen, C., Yang, J., Zhao, Y., & Gao, Y. (2024). A Combined Method for Short-Term Load Forecasting Considering the Characteristics of Components of Seasonal and Trend Decomposition Using Local Regression. Applied Sciences, 14(6), 2286. https://doi.org/10.3390/app14062286