Flood probability quantification for road infrastructure_ Data-driven spatial-statistical approach and case study applications

Kalantari Z.; Cavalli M.; Cantone C.; Crema S.; Destouni G., 2017, Flood probability quantification for road infrastructure_ Data-driven spatial-statistical approach and case study applications, Science of the total environment 581-582 (2017): 386–398. doi_10.1016/j.scitotenv.2016.12.147,
URL: http://www.cnr.it/prodotto/i/364542

Climate-driven increase in the frequency of extreme hydrological events is expected to impose greater strain on the built environment and major transport infrastructure, such as roads and railways. This study develops a data-driven spatial-statistical approach to quantifying and mapping the probability of flooding at critical road-stream intersection locations, where water flow and sediment transport may accumulate and cause serious road damage. The approach is based on novel integration of key watershed and road characteristics, including also measures of sediment connectivity. The approach is concretely applied to and quantified for two specific study case examples in southwest Sweden, with documented road flooding effects of recorded extreme rainfall. The novel contributions of this study in combining a sediment connectivity account with that of soil type, land use, spatial precipitation-runoff variability and road drainage in catchments, and in extending the connectivity measure use for different types of catchments, improve the accuracy of model results for road flood probability.

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