Abstract
Abstract. Changes in the steepness of river profiles or abrupt vertical
steps (i.e. waterfalls) are thought to be indicative of changes in erosion
rates, lithology or other factors that affect landscape evolution. These
changes are referred to as knickpoints or knickzones and are pervasive in
bedrock river systems. Such features are thought to reveal information about
landscape evolution and patterns of erosion, and therefore their locations
are often reported in the geomorphic literature. It is imperative that
studies reporting knickpoints and knickzones use a reproducible method of
quantifying their locations, as their number and spatial distribution play an
important role in interpreting tectonically active landscapes. In this
contribution we introduce a reproducible knickpoint and knickzone extraction
algorithm that uses river profiles transformed by integrating drainage area
along channel length (the so-called integral or χ method). The profile
is then statistically segmented and the differing slopes and step changes
in the
elevations of these segments are used to identify knickpoints, knickzones
and their relative magnitudes. The output locations of identified knickpoints
and knickzones compare favourably with human mapping: we test the method on
Santa Cruz Island, CA, using previously reported knickzones and also test the
method against a new dataset from the Quadrilátero Ferrífero in
Brazil. The algorithm allows for the extraction of varying knickpoint morphologies,
including stepped, positive slope-break (concave upward) and negative
slope-break knickpoints. We identify parameters that most affect the
resulting knickpoint and knickzone locations and provide guidance for both
usage and outputs of the method to produce reproducible knickpoint datasets.
Funder
H2020 Marie Skłodowska-Curie Actions
Subject
Earth-Surface Processes,Geophysics
Cited by
56 articles.
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