Short-Term Load Forecasting (STLF) plays a crucial role in energy management for planning and managing the operation strategy of hybrid energy sources. A common STLF approach involves making predictions based on multiple input variables which affect the load. However, additional data besides historical load data often are not available, making STLF a challenging univariate task. Two approaches are discussed in this paper for the univariate day-ahead STLF: the first integrates temporal information into the input regression vector, with Seasonal Auto-Regressive Moving Average (SARMA) and Prophet being the best representatives for the application considered; the second integrates temporal information directly into its architecture through the feedback of the internal state, with Long Short-Term Memory (LSTM) and vanilla Recurrent Neural Network (RNN) chosen for this purpose. The models were evaluated on a real case study involving a university building in Italy. The results validate the effectiveness of the LSTM model. LSTM performed significantly better than SARIMA, and slightly better than RNN and Prophet, achieving a Mean Absolute Error (MAE) equal to 13.12 kW, a Root Mean Square Error (RMSE) equal to 25.09 kW, a Mean Absolute Percentage Error (MAPE) equal to 10.97% and an R2 score equal to 0.85. This work provides a foundation for the improvement and deployment of such time series forecasting techniques in the emerging field of STLF for energy management.
Ghione, G., Judge, M., Badami, M., Pasero, E., Franzitta, V., Cirrincione, G. (2024). A Comparison of Univariate Methods for Day-Ahead Short-Term Load Forecasting. In 2024 IEEE 22nd Mediterranean Electrotechnical Conference, MELECON 2024 (pp. 662-667). Institute of Electrical and Electronics Engineers Inc. [10.1109/MELECON56669.2024.10608727].
A Comparison of Univariate Methods for Day-Ahead Short-Term Load Forecasting
Judge, M. A.;Franzitta, V.;
2024-07-30
Abstract
Short-Term Load Forecasting (STLF) plays a crucial role in energy management for planning and managing the operation strategy of hybrid energy sources. A common STLF approach involves making predictions based on multiple input variables which affect the load. However, additional data besides historical load data often are not available, making STLF a challenging univariate task. Two approaches are discussed in this paper for the univariate day-ahead STLF: the first integrates temporal information into the input regression vector, with Seasonal Auto-Regressive Moving Average (SARMA) and Prophet being the best representatives for the application considered; the second integrates temporal information directly into its architecture through the feedback of the internal state, with Long Short-Term Memory (LSTM) and vanilla Recurrent Neural Network (RNN) chosen for this purpose. The models were evaluated on a real case study involving a university building in Italy. The results validate the effectiveness of the LSTM model. LSTM performed significantly better than SARIMA, and slightly better than RNN and Prophet, achieving a Mean Absolute Error (MAE) equal to 13.12 kW, a Root Mean Square Error (RMSE) equal to 25.09 kW, a Mean Absolute Percentage Error (MAPE) equal to 10.97% and an R2 score equal to 0.85. This work provides a foundation for the improvement and deployment of such time series forecasting techniques in the emerging field of STLF for energy management.File | Dimensione | Formato | |
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