In this study, a new tool for quantitative, data-driven susceptibility zoning (SZ) is presented. The SZ plugin has been implemented as a QGIS plugin to maximize its operational use within the geoscientific community. QGIS is in fact a commonly used open-source geographic information system. We have scripted the plugin in Python, and developed it as a collection of functions that allow one to pre-process the input data, calculate the susceptibility, and then estimate the quality of the classification results. The susceptibility zoning can be carried out via a number of classifiers including weight of evidence, frequency ratio, logistic regression, random forest, support vector machine, and decision tree. The plugin allows one to use any kind of mapping units, to fit the model, to test it via a k-fold cross-validation, and to visualize the relative receiving operating characteristic (ROC) curves. Moreover, a new classification method of the susceptibility index (SI) has been implemented in the SZ plugin. A typical workflow of the SZ plugin is described, and its application for landslide susceptibility zoning in Northeast India is reported. The data of the predisposing factors used are open, and the analysis has been carried out using a logistic regression and weight of evidence models. The corresponding area under the curve of the relative ROC curves reflects an optimal model prediction capacity. The user-friendly graphical interface of the plugin has allowed us to perform the analysis efficiently in few steps.

Titti, G., Sarretta, A., Lombardo, L., Crema, S., Pasuto, A., Borgatti, L. (2022). Mapping Susceptibility With Open-Source Tools: A New Plugin for QGIS. FRONTIERS IN EARTH SCIENCE, 10, 1-14 [10.3389/feart.2022.842425].

Mapping Susceptibility With Open-Source Tools: A New Plugin for QGIS

Titti, Giacomo
;
Borgatti, Lisa
2022

Abstract

In this study, a new tool for quantitative, data-driven susceptibility zoning (SZ) is presented. The SZ plugin has been implemented as a QGIS plugin to maximize its operational use within the geoscientific community. QGIS is in fact a commonly used open-source geographic information system. We have scripted the plugin in Python, and developed it as a collection of functions that allow one to pre-process the input data, calculate the susceptibility, and then estimate the quality of the classification results. The susceptibility zoning can be carried out via a number of classifiers including weight of evidence, frequency ratio, logistic regression, random forest, support vector machine, and decision tree. The plugin allows one to use any kind of mapping units, to fit the model, to test it via a k-fold cross-validation, and to visualize the relative receiving operating characteristic (ROC) curves. Moreover, a new classification method of the susceptibility index (SI) has been implemented in the SZ plugin. A typical workflow of the SZ plugin is described, and its application for landslide susceptibility zoning in Northeast India is reported. The data of the predisposing factors used are open, and the analysis has been carried out using a logistic regression and weight of evidence models. The corresponding area under the curve of the relative ROC curves reflects an optimal model prediction capacity. The user-friendly graphical interface of the plugin has allowed us to perform the analysis efficiently in few steps.
2022
Titti, G., Sarretta, A., Lombardo, L., Crema, S., Pasuto, A., Borgatti, L. (2022). Mapping Susceptibility With Open-Source Tools: A New Plugin for QGIS. FRONTIERS IN EARTH SCIENCE, 10, 1-14 [10.3389/feart.2022.842425].
Titti, Giacomo; Sarretta, Alessandro; Lombardo, Luigi; Crema, Stefano; Pasuto, Alessandro; Borgatti, Lisa
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/877410
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