Travel-time distributions are a comprehensive tool for the characterization
of hydrological system dynamics. Unlike the streamflow hydrograph, they
describe the movement and storage of water within and throughout the
hydrological system. Until recently, studies using such travel-time
distributions have generally either been applied to lumped models or to
real-world catchments using available time series, e.g., stable isotopes.
Whereas the former are limited in their realism and lack information on the
spatial arrangements of the relevant quantities, the latter are limited in
their use of available data sets. In our study, we employ the spatially
distributed mesoscale Hydrological Model (mHM) and apply it to a catchment in
central Germany. Being able to draw on multiple large data sets for
calibration and verification, we generate a large array of spatially
distributed states and fluxes. These hydrological outputs are then used to
compute the travel-time distributions for every grid cell in the modeling
domain. A statistical analysis indicates the general soundness of the
upscaling scheme employed in mHM and reveals precipitation, saturated soil
moisture and potential evapotranspiration as important predictors for
explaining the spatial heterogeneity of mean travel times. In addition, we
demonstrate and discuss the high information content of mean travel times for
characterization of internal hydrological processes
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