ANN-Based Forecasting of Hydropower Reservoir Inflow
            
            2016 57th International Scientific Conference on Power and Electrical Engineering of Riga Technical University (RTUCON 2016): Proceedings
            2016
            
        
                Antans Sauļus Sauhats,
        
                Romāns Petričenko,
        
                Zane Broka,
        
                Kārlis Baltputnis,
        
                Dmitrijs Soboļevskis
        
    
            
            
            Reservoir inflow forecasting with artificial neural networks is presented in this paper. Different types of ANN input data were considered such as temperature, precipitation and historical water inflow. Performance of the hourly inflow forecasts was assessed based on a case study of a specific hydropower reservoir in Latvia. The results showed that all the approaches had similar prediction errors implying that for optimal hydropower scheduling uncertainties need to be modelled which is also proposed in this study through generation of several forecast realisations in addition to point predictions.
            
            
            
                Atslēgas vārdi
                ANN; forecasting; hydropower; reservoir inflow
            
            
                DOI
                10.1109/RTUCON.2016.7763129
            
            
                Hipersaite
                http://ieeexplore.ieee.org/document/7763129/
            
            
            Sauhats, A., Petričenko, R., Broka, Z., Baltputnis, K., Soboļevskis, D. ANN-Based Forecasting of Hydropower Reservoir Inflow. No: 2016 57th International Scientific Conference on Power and Electrical Engineering of Riga Technical University (RTUCON 2016): Proceedings, Latvija, Riga, 13.-14. oktobris, 2016. Piscataway, NJ: IEEE, 2016, 267.-272.lpp. ISBN 978-1-5090-3732-2. e-ISBN 978-1-5090-3731-5. Pieejams: doi:10.1109/RTUCON.2016.7763129
            
                Publikācijas valoda
                English (en)