Comparison of artificial neural networks and reservoir models for simulating karst spring discharge on five test sites in the Alpine and Mediterranean regions
Guillaume Cinkus(Centre National de la Recherche Scientifique), Hervé Jourde(Centre National de la Recherche Scientifique), Naomi Mazzilli(Université d'Avignon et des Pays de Vaucluse), Bartolomé Andreo(Universidad de Málaga), Juan Antonio Barberá(Universidad de Málaga), Joanna Doummar(American University of Beirut), Nataša Ravbar(Karst Research Institute), Tanja Liesch(Karlsruhe Institute of Technology), Jaime Fernández-Ortega(Universidad de Málaga), Andreas Wünsch(Karlsruhe Institute of Technology), Zhao Chen(Groundwater Center), Nico Goldscheider(Karlsruhe Institute of Technology)
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