4.6 Article

A new metric for morphologic variability using landform shape classification via supervised machine learning

Journal

GEOMORPHOLOGY
Volume 399, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.geomorph.2021.108065

Keywords

Landform classification; Morphologic variability; Geomorphometry; Scarp

Funding

  1. National Science Foundation Graduate Research Fellowship - department of Earth and Space Sciences (University of Washington)
  2. Quaternary Research Center (University of Washington)
  3. Geological Society of America

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This article presents a workflow for quantifying the frequency and degree of change in landform-profile shape, providing insights into the evolution of complex landforms. By combining the expertise of a geomorphologist and the efficiency of a machine-learning algorithm, the study focuses on the degradation of fault scarps in jointed bedrock. Field observations and aerial imagery were used to classify fault-scarp profiles and apply principal component analysis and support vector machine methods for quantitative analysis. The results demonstrate that the morphologic variability metric is a promising tool for understanding the evolution of complex landforms.
The frequency and degree of change in landform-profile shape can provide insights into the evolution of complex landforms. Here, we present a workflow that can be used to quantify this aspect of morphologic variability along any landform, leveraging both the expertise of a geomorphologist and the efficiency of a machine-learning algorithm. As a case study, we tackle the problem of degradation of fault scarps in jointed bedrock. We made field observations of seven fault scarps in jointed bedrock from Hawai'i, California and Iceland and collected aerial imagery for Structure-from-Motion (SfM) photogrammetry. From these observations, we first manually classify fault-scarp profiles extracted from SfM-derived point clouds into six morphologic categories defined by a geomorphologist with a view towards geologic process. Then, we use principal component analysis with singular value decomposition to quantitatively distinguish morphologic classes. We follow this by employing the support vector machine (SVM) method to build a supervised classifier, using the principal-component coordinates of the classified profiles in principal component space as a training set. Classification performance was assessed using 5fold cross validation (81% accuracy) and with independent test data (80% accuracy). Finally, we define a morphologic variability metric and calculate it by determining the number of classes represented and the standard deviation of their proportions in a moving window along a fault scarp. By analyzing the covariance between the morphologic variability metric and other geomorphic parameters, we can quantitatively determine the drivers of scarp form. We find that morphologic variability decreases with scarp maturity. Our results suggest that the morphologic variability metric is a promising tool to understand the evolution of complex landforms.(c) 2021 Elsevier B.V. All rights reserved.

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