Abstract
Abstract. We propose a novel way to measure and analyze networks of drainage divides
from digital elevation models. We developed an algorithm that extracts
drainage divides based on the drainage basin boundaries defined by a stream
network. In contrast to streams, there is no straightforward approach to
order and classify divides, although it is intuitive that some divides are
more important than others. A meaningful way of ordering divides is the
average distance one would have to travel down on either side of a divide to
reach a common stream location. However, because measuring these distances
is computationally expensive and prone to edge effects, we instead sort
divide segments based on their tree-like network structure, starting from
endpoints at river confluences. The sorted nature of the network allows
for assigning distances to points along the divides, which can be shown to scale
with the average distance downslope to the common stream location.
Furthermore, because divide segments tend to have characteristic lengths, an
ordering scheme in which divide orders increase by 1 at junctions mimics
these distances. We applied our new algorithm to the Big Tujunga catchment
in the San Gabriel Mountains of southern California and studied the
morphology of the drainage divide network. Our results show that topographic
metrics, like the downstream flow distance to a stream and hillslope relief,
attain characteristic values that depend on the drainage area threshold used
to derive the stream network. Portions along the divide network that have
lower than average relief or are closer than average to streams are often
distinctly asymmetric in shape, suggesting that these divides are unstable.
Our new and automated approach thus helps to objectively extract and analyze
divide networks from digital elevation models.
Subject
Earth-Surface Processes,Geophysics
Cited by
30 articles.
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