A benchmark dataset and workflow for landslide susceptibility zonation

Alvioli, Massimiliano and Loche, Marco and Jacobs, Liesbet and Grohmann, Carlos H. and Abraham, Minu Treesa and Gupta, Kunal and Satyam, Neelima and Scaringi, Gianvito and Bornaetxea, Txomin and Rossi, Mauro and Marchesini, Ivan and Moreno, Mateo and Steger, Stefan and Camera, Corrado A.S. and Bajni, Greta and Samodra, Guruh and Wahyudi, Erwin Eko and Susyanto, Nanang and Sinčić, Marko and Gazibara, Sanja Bernat and Sirbu, Flavius and Torizin, Jewgenij and Schüßler, Nick and Mirus, Benjamin B and Woodard, Jacob B and Aguilera, Héctor and Rivera-Rivera, Jhonatan (2024) A benchmark dataset and workflow for landslide susceptibility zonation. Earth-Science Reviews, 258: 104927. ISSN 00128252

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Abstract

Landslide susceptibility shows the spatial likelihood of landslide occurrence in a specific geographical area and is a relevant tool for mitigating the impact of landslides worldwide. As such, it is the subject of countless scientific studies. Many methods exist for generating a susceptibility map, mostly falling under the definition of statistical or machine learning. These models try to solve a classification problem: given a collection of spatial variables, and their combination associated with landslide presence or absence, a model should be trained, tested to reproduce the target outcome, and eventually applied to unseen data. Contrary to many fields of science that use machine learning for specific tasks, no reference data exist to assess the performance of a given method for landslide susceptibility. Here, we propose a benchmark dataset consisting of 7360 slope units encompassing an area of about 4,100km2 in Central Italy. Using the dataset, we tried to answer two open questions in landslide research: (1) what effect does the human variability have in creating susceptibility models; (2) how can we develop a reproducible workflow for allowing meaningful model comparisons within the landslide susceptibility research community. With these questions in mind, we released a preliminary version of the dataset, along with a “call for collaboration,” aimed at collecting different calculations using the proposed data, and leaving the freedom of implementation to the respondents. Contributions were different in many respects, including classification methods, use of predictors, implementation of training/validation, and performance assessment. That feedback suggested refining the initial dataset, and constraining the implementation workflow. This resulted in a final benchmark dataset and landslide susceptibility maps obtained with many classification methods. Values of area under the receiver operating characteristic curve obtained with the final benchmark dataset were rather similar, as an effect of constraints on training, cross–validation, and use of data. Brier score results show larger variability, instead, ascribed to different model predictive abilities. Correlation plots show similarities between results of different methods applied by the same group, ascribed to a residual implementation dependence. We stress that the experiment did not intend to select the “best” method but only to establish a first benchmark dataset and workflow, that may be useful as a standard reference for calculations by other scholars. The experiment, to our knowledge, is the first of its kind for landslide susceptibility modeling. The data and workflow presented here comparatively assess the performance of independent methods for landslide susceptibility and we suggest the benchmark approach as a best practice for quantitative research in geosciences.

Item Type: Article
Uncontrolled Keywords: Benchmark dataset; Geomorphological mapping; Geomorphometry; Landslide inventory; Landslide susceptibility; Landslide susceptibility mapping; Machine learning; Slope units; Spatial analysis; Statistical modeling
Subjects: Q Science > QA Mathematics > QA75 Electronic computers. Computer science
Divisions: Faculty of Mathematics and Natural Sciences > Computer Science & Electronics Department
Depositing User: Wiyarsih Wiyarsih
Date Deposited: 12 Mar 2025 04:45
Last Modified: 12 Mar 2025 04:45
URI: https://ir.lib.ugm.ac.id/id/eprint/15721

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