Litcius/Paper detail

Building a landslide hazard indicator with machine learning and land surface models

Thomas Stanley, Dalia Kirschbaum, Steven Sobieszczyk, Michael F. Jasinski, Jordan S. Borak, Stephen L. Slaughter

2020Environmental Modelling & Software63 citationsDOIOpen Access PDF

Abstract

The U.S. Pacific Northwest has a history of frequent and occasionally deadly landslides caused by various factors. Using a multivariate, machine-learning approach, we combined a Pacific Northwest Landslide Inventory with a 36-year gridded hydrologic dataset from the National Climate Assessment – Land Data Assimilation System to produce a landslide hazard indicator (LHI) on a daily 0.125-degree grid. The LHI identified where and when landslides were most probable over the years 1979–2016, addressing issues of bias and completeness that muddy the analysis of multi-decadal landslide inventories. The seasonal cycle was strong along the west coast, with a peak in the winter, but weaker east of the Cascade Range. This lagging indicator can fill gaps in the observational record to identify the seasonality of landslides over a large spatiotemporal domain and show how landslide hazard has responded to a changing climate.

Topics & Concepts

LandslideHazardClimatologyLaggingPhysical geographyHazard analysisEnvironmental scienceGeologyGeographyGeomorphologyStatisticsMathematicsEngineeringOrganic chemistryAerospace engineeringChemistryLandslides and related hazardsCryospheric studies and observationsFlood Risk Assessment and Management
Building a landslide hazard indicator with machine learning and land surface models | Litcius