Compound natural hazards like El Niño events cause high damage to society, which to manage requires reliable risk assessments. Damage modelling is a prerequisite for quantitative risk estimations, yet many procedures still rely on expert knowledge, and empirical studies investigating damage from compound natural hazards hardly exist. A nationwide building survey in Peru after the El Niño event 2017–which caused intense rainfall, ponding water, flash floods and landslides–enables us to apply data-mining methods for statistical groundwork, using explanatory features generated from remote sensing products and open data. We separate regions of different dominant characteristics through unsupervised clustering, and investigate feature importance rankings for classifying damage via supervised machine learning. Besides the expected effect of precipitation, the classification algorithms select the topographic wetness index as most important feature, especially in low elevation areas. The slope length and steepness factor ranks high for mountains and canyons. Partial dependence plots further hint at amplified vulnerability in rural areas. An example of an empirical damage probability map, developed with a random forest model, is provided to demonstrate the technical feasibility.
CITATION STYLE
Brill, F., Passuni Pineda, S., Espichán Cuya, B., & Kreibich, H. (2020). A data-mining approach towards damage modelling for El Niño events in Peru. Geomatics, Natural Hazards and Risk, 11(1), 1966–1990. https://doi.org/10.1080/19475705.2020.1818636
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