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Landslide Assessment Classification Using Deep Neural Networks Based on Climate and Geospatial Data

Yadviga Tynchenko, В В Кукарцев, В С Тынченко, Oksana Kukartseva, Tatyana Panfilova, Alexey Gladkov, Van-Linh Nguyen, Ivan Malashin

2024Sustainability22 citationsDOIOpen Access PDF

Abstract

This study presents a method for classifying landslide triggers and sizes using climate and geospatial data. The landslide data were sourced from the Global Landslide Catalog (GLC), which identifies rainfall-triggered landslide events globally, regardless of size, impact, or location. Compiled from 2007 to 2018 at NASA Goddard Space Flight Center, the GLC includes various mass movements triggered by rainfall and other events. Climatic data for the 10 years preceding each landslide event, including variables such as rainfall amounts, humidity, pressure, and temperature, were integrated with the landslide data. This dataset was then used to classify landslide triggers and sizes using deep neural networks (DNNs) optimized through genetic algorithm (GA)-driven hyperparameter tuning. The optimized DNN models achieved accuracies of 0.67 and 0.82, respectively, in multiclass classification tasks. This research demonstrates the effectiveness of GA to enhance landslide disaster risk management.

Topics & Concepts

Geospatial analysisLandslideArtificial neural networkRemote sensingCartographyComputer scienceArtificial intelligenceData miningGeographyEnvironmental scienceGeologyGeomorphologyLandslides and related hazardsFlood Risk Assessment and ManagementFire effects on ecosystems