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Morphometric Landslide Susceptibility Results of the Northwestern United States Derived from Elevation Data

Landslide susceptibility models show the potential of landslide occurrence at a location. These models are pivotal for reducing losses associated with landslides (Godt et al., 2022). In this data release, we include susceptibility results from the associated manuscript by Woodard and Mirus (2025). This manuscript shows how a morphometric model can create consistent and effective susceptibility models over large regions (> 100 km2) by analyzing the terrain’s topography. The model assumes that areas with high relative slope and hillslope area in comparison to the rest of the terrain are more susceptible to landsliding. As the model’s only input is elevation data, it mitigates the data biases common in the data-driven statistical methods (e.g., machine learning) generally used over these scales. We compare the morphometric model outputs to a parsimonious national susceptibility map and logistic regression machine learning models. The national susceptibility map is available in Belair et al., (2024). The two logistic regression models are trained on the landslide data available in the Willamette Valley Hydrologic Unit Code (HUC) 4 watershed (DOGAMI, 2024). To account for the effects of the sampling ratio of event to non-event data points, we create two logistic regression models. The first uses a 1:1 sampling ratio of landslide to non-landslide points and the second uses all the data within the training data which results in a 1:33 sampling ratio. Environmental datasets requisite for the logistic regression models are all derived from the three-dimensional elevation program (3DEP) (U.S. Geological Survey, 2019a) preprocessed within the National Hydrography Dataset (U.S. Geological Survey, 2019b). The morphometric model was derived using only the 3DEP dataset without any input of where landslides have occurred. All model outputs are shown with slope units. This data release includes the following files: 1) logistic regression results with 1:1 sampling ratio over Willamette Valley HUC4 watershed (1709) (Logistic_1709_1.zip); 2) logistic regression results with 1:33 sampling ratio over Willamette Valley HUC4 watershed (1709) (Logistic_1709_All.zip); 3) morphometric results with uniform weights over the Willamette Valley HUC4 watershed (1709) (Morph_Uniform_1709.zip); 4) morphometric results with area weights over the 1701 HUC 4 watershed (Morph_Area_1701.zip); 5) morphometric results with area weights over the 1702 HUC 4 watershed (Morph_Area_1702.zip); 6) morphometric results with area weights over the 1703 HUC 4 watershed (Morph_Area_1703.zip); 7) morphometric results with area weights over the 1704 HUC 4 watershed (Morph_Area_1704.zip); 8) morphometric results with area weights over the 1705 HUC 4 watershed (Morph_Area_1705.zip); 9) morphometric results with area weights over the 1706 HUC 4 watershed (Morph_Area_1706.zip); 10) morphometric results with area weights over the 1707 HUC 4 watershed (Morph_Area_1707.zip); 11) morphometric results with area weights over the 1708 HUC 4 watershed (Morph_Area_1708.zip); 12) morphometric results with area weights over the 1709 HUC 4 watershed (Morph_Area_1709.zip); 13) morphometric results with area weights over the 1710 HUC 4 watershed (Morph_Area_1710.zip); 14) morphometric results with area weights over the 1711 HUC 4 watershed (Morph_Area_1711.zip); 15) morphometric results with area weights over the 1712 HUC 4 watershed (Morph_Area_1712.zip). 16) shape file field descriptors (Field_Descriptors.txt) Each zip-file contains the vector shapefiles of interest which can be extracted using most archiver software. References Cited DOGAMI. (2024). SLIDO (Version 4.5) [Data set]. https://pubs.oregon.gov/dogami/SLIDO/4.5/SLIDO_Release_4p5_wMetadata.gdb.zip. Gina M Belair, Jeanne M Jones, Sabrina N Martinez, Benjamin B Mirus, & Nathan J Wood. (2024). Slope-Relief Threshold Landslide Susceptibility Models for the United States and Puerto Rico [Data Release]. U.S. Geological Survey. https://doi.org/10.5066/P13KAGU3 Godt, J. W., Wood, N. J., Pennaz, A. B., Mirus, B. B., Schaefer, L. N., & Slaughter, S. L. (2022). National Strategy for Landslide Loss Reduction (p. 36). Geological Survey Open-File Report 2022–1075. https://doi.org/10.3133/ofr20221075 U.S. Geological Survey. (2019a). 3D Elevation Program 1/3 arcsecond. Retrieved from https://apps.nationalmap.gov/downloader/ U.S. Geological Survey. (2019b). USGS National Hydrography Dataset Plus High Resolution [Data set]. Retrieved from https://www.sciencebase.gov/catalog/item/57645ff2e4b07657d19ba8e8

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Author(s) Jacob B Woodard orcid, Benjamin B Mirus orcid
Publication Date 2025-01-29
Beginning Date of Data 2024
Ending Date of Data 2024
Data Contact
DOI https://doi.org/10.5066/P13AXWAA
Citation Woodard, J.B., and Mirus, B.B., 2025, Morphometric Landslide Susceptibility Results of the Northwestern United States Derived from Elevation Data: U.S. Geological Survey data release, https://doi.org/10.5066/P13AXWAA.
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Metadata Date 2025-01-29
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Harvest Source: ScienceBase
Harvest Date: 2025-01-31T05:05:32.530Z