Energy generation forecasting: elevating performance with machine and deep learning

Distribution System Operators (DSOs) and Aggregators benefit from novel Energy Generation Forecasting (EGF) approaches. Improved forecasting accuracy may make it easier to deal with energy imbalances between production and consumption. It also aids operations such as Demand Response (DR) management...

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Veröffentlicht in:Computing 2023-08, Vol.105 (8), p.1623-1645
Hauptverfasser: Mystakidis, Aristeidis, Ntozi, Evangelia, Afentoulis, Konstantinos, Koukaras, Paraskevas, Gkaidatzis, Paschalis, Ioannidis, Dimosthenis, Tjortjis, Christos, Tzovaras, Dimitrios
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Sprache:eng
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Zusammenfassung:Distribution System Operators (DSOs) and Aggregators benefit from novel Energy Generation Forecasting (EGF) approaches. Improved forecasting accuracy may make it easier to deal with energy imbalances between production and consumption. It also aids operations such as Demand Response (DR) management in Smart Grid architecture. This work aims to develop and test a new solution for EGF. It combines various methodologies running EGF tests on historical data from buildings. The experimentation yields different data resolutions (15 min, one hour, one day, etc.) while reporting accuracy errors. The optimal forecasting technique should be relevant to a variety of forecasting applications in a trial-and-error manner, while utilizing different forecasting strategies, ensemble approaches, and algorithms. The final forecasting evaluation incorporates performance metrics such as coefficient of determination ( R 2 ), Mean Absolute Error (MAE), Mean Squared Error (MSE) and Root Mean Squared Error (RMSE), presenting a comparative analysis of results.
ISSN:0010-485X
1436-5057
DOI:10.1007/s00607-023-01164-y