Two-step deep learning framework with error compensation technique for short-term, half-hourly electricity price forecasting
Fecha
2023
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Editor
Elsevier
Resumen
Prediction of electricity price is crucial for national electricity markets supporting sale prices, bidding
strategies, electricity dispatch, control and market volatility management. High volatility, non-stationarity
and multi-seasonality of electricity prices make it significantly challenging to estimate its future trend,
especially over near real-time forecast horizons. An error compensation strategy that integrates Long ShortTerm Memory (LSTM) network, Convolution Neural Network (CNN) and the Variational Mode Decomposition
(VMD) algorithm is proposed to predict the half-hourly step electricity prices. A prediction model incorporating
VMD and CLSTM is first used to obtain an initial prediction. To improve its predictive accuracy, a novel error
compensation framework, which is built using the VMD and a Random Forest Regression (RF) algorithm, is also used. The proposed VMD-CLSTM-VMD-ERCRF model is evaluated using electricity prices from Queensland,
Australia. The results reveal highly accurate predictive performance for all datasets considered, including the
winter, autumn, spring, summer, and yearly predictions. As compared with a predictive model without error
compensation (i.e., the VMD-CLSTM model), the proposed VMD-CLSTM-VMD-ERCRF model outperforms the
benchmark models. For winter, autumn, spring, summer, and yearly predictions, the average Legates and
McCabe Index is seen to increase by 15.97%, 16.31%, 20.23%, 10.24%, and 14.03%, respectively, relative to
the benchmark models. According to the tests performed on independent datasets, the proposed VMD-CLSTMVMD-ERCRF model can be a practical stratagem useful for short-term, half-hourly electricity price forecasting.
Therefore the research outcomes demonstrate that the proposed error compensation framework is an effective
decision-support tool for improving the predictive accuracy of electricity price. It could be of practical value
to energy companies, energy policymakers and national electricity market operators to develop their insight
analysis, electricity distribution and market optimization strategies.
Descripción
The authors thank data providers, all reviewers and Editor for their thoughtful comments, suggestions and review process. Partial support of this work was through a project PID2020-115454GB-C21 of the Spanish Ministry of Science and Innovation (MICINN) .
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Citación
Sujan Ghimire, Ravinesh C. Deo, David Casillas-Pérez, Sancho Salcedo-Sanz, Two-step deep learning framework with error compensation technique for short-term, half-hourly electricity price forecasting, Applied Energy, Volume 353, Part A, 2024, 122059, ISSN 0306-2619, https://doi.org/10.1016/j.apenergy.2023.122059
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