Large Scale Evaluation of Relationships between Hydrologic Signatures
and Processes
Abstract
Dominant processes in a watershed are those that most strongly control
hydrologic function and response. Estimating dominant processes enables
hydrologists to design physically realistic streamflow generation
models, design management interventions, and understand how climate and
landscape features control hydrologic function. A recent approach to
estimating dominant processes is through their link to hydrologic
signatures, which are metrics that characterize the streamflow
timeseries. Previous authors have used results from experimental
watersheds to link signature values to underlying processes, but these
links have not been tested on large scales. This paper fills that gap by
testing signatures in large sample datasets from the U.S., Great
Britain, Australia, and Brazil, and in Critical Zone Observatory (CZO)
watersheds. We found that most inter-signature correlations are
consistent with process interpretations, i.e., signatures that are
supposed to represent the same process are correlated, and most
signature values are consistent with process knowledge in CZO
watersheds. Some exceptions occurred, such as infiltration and
saturation excess processes that were often misidentified by signatures.
Signature distributions vary by country, emphasizing the importance of
regional context in understanding signature-process links and in
classifying signature values as ‘high’ or ‘low’. Not all signatures were
easily transferable from small- to large-scale studies, showing that
visual or process-based assessment of signatures is important before
large-scale use. We provide a summary table with information on the
reliability of each signature for process identification. Overall, our
results provide a reference for future studies that seek to use
signatures to identify hydrological processes.