Session | ||
TUE05: Forecasting techniques
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Presentations | ||
Monitoring Hydropower Plants with LSTM-Based Time-series Forecasting University of Pisa, Italy Forecasting Day-Ahead PV Generation and Load Demand for an Individual Residential Consumer KU Leuven,Belgium A comparison of machine learning algorithms for the optimization of a day-ahead photovoltaic power forecast Bielefeld University of Applied Sciences and Arts, Germany Forecasting vertical grid load using machine learning algorithms Amprion GmbH, Germany The Impacts of the Effective Load Data Preprocessing in Long-Term Load Forecasting The University of Manchester, United Kingdom Multi-step ahead wind power forecasting based on N-BEATS model 1Graduate Program in Mechanical Engineering, Federal University of Parana, Brazil; 2Department of Computer Science, Pontifical Catholic University of Parana, Brazil; 3Graduate Program in Electrical Engineering, Federal University of Parana, Brazil Ultra short term power prediction of offshore wind power based on ICEEMD-KPCA-LSTM Shanghai university of electric power, China, People's Republic of |