TY - JOUR A1 - Oppel, Henning A1 - Schumann, Andreas H. T1 - Machine learning based identification of dominant controls on runoff dynamics Y1 - 2020-03-16 VL - 34 IS - 11 SP - 2450 EP - 2465 JF - Hydrological Processes DO - 10.23689/fidgeo-4368 PB - John Wiley & Sons CY - Inc. N2 - Hydrological models used for flood prediction in ungauged catchments are commonly fitted to regionally transferred data. The key issue of this procedure is to identify hydrologically similar catchments. Therefore, the dominant controls for the process of interest have to be known. In this study, we applied a new machine learning based approach to identify the catchment characteristics that can be used to identify the active processes controlling runoff dynamics. A random forest (RF) regressor has been trained to estimate the drainage velocity parameters of a geomorphologic instantaneous unit hydrograph (GIUH) in ungauged catchments, based on regionally available data. We analyzed the learning procedure of the algorithm and identified preferred donor catchments for each ungauged catchment. Based on the obtained machine learning results from catchment grouping, a classification scheme for drainage network characteristics has been derived. This classification scheme has been applied in a flood forecasting case study. The results demonstrate that the RF could be trained properly with the selected donor catchments to successfully estimate the required GIUH parameters. Moreover, our results showed that drainage network characteristics can be used to identify the influence of geomorphological dispersion on the dynamics of catchment response. N2 - A new machineā€learning based approach is applied to identify catchment characteristics affecting runoff dynamics. The learning procedure of the algorithms revealed that drainage system characteristics define hydrologic similarity in terms of dynamics. UR - http://resolver.sub.uni-goettingen.de/purl?gldocs-11858/8714 ER -