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A novel flood risk mapping approach with machine learning considering geomorphic and socio-economic vulnerability dimensions

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dc.contributor.author DEROLIYA P.
dc.contributor.author GHOSH M.
dc.contributor.author MOHANTY M.P.
dc.contributor.author GHOSH S.
dc.contributor.author RAO K.H.V.D.
dc.contributor.author KARMAKAR S.
dc.date.accessioned 2023-03-17T05:56:50Z
dc.date.available 2023-03-17T05:56:50Z
dc.date.issued 2022
dc.identifier.citation Science of the Total Environment,851 en_US
dc.identifier.issn 489697
dc.identifier.uri https://dx.doi.org/10.1016/j.scitotenv.2022.158002
dc.identifier.uri http://localhost:8080/xmlui/handle/100/41236
dc.description.abstract Quantifying flood hazards by employing hydraulic/hydrodynamic models for flood risk mapping is a widely implemented non-structural flood management strategy. However, the unavailability of multi-domain and multi-dimensional input data and expensive computational resources limit its application in resource-constrained regions. The fifth and sixth ipcc assessment reports recommend including vulnerability and exposure components along with hazards for capturing risk on human-environment systems from natural and anthropogenic sources. In this context, the present study showcases a novel flood risk mapping approach that considers a combination of geomorphic flood descriptor (gfd)-based flood susceptibility and often neglected socio-economic vulnerability components. Three popular machine learning (ml) models, namely decision tree (dt), random forest (rf), and gradient-boosted decision trees (gbdt), are evaluated for their abilities to combine digital terrain model-derived gfds for quantifying flood susceptibility in a flood-prone district, jagatsinghpur, located in the lower mahanadi river basin, india. The area under receiver operating characteristics curve (auc) along with cohen's kappa are used to identify the best ml model. It is observed that the rf model performs better compared to the other two models on both training and testing datasets, with auc score of 0.88 on each. The socio-economic vulnerability assessment follows an indicator-based approach by employing the charnes-cooper-rhodes (ccr) model of data envelopment analysis (dea), an efficient non-parametric ranking method. It combines the district's relevant socio-economic sensitivity and adaptive capacity indicators. The flood risk classes at the most refined administrative scale, i.e., Village level, are determined with the jenks natural breaks algorithm using flood susceptibility and socio-economic vulnerability scores estimated by the rf and ccr-dea models, respectively. It was observed that >40 % of the villages spread over jagatsinghpur face high and very high flood risk. The proposed novel framework is generic and can be used to derive a wide variety of flood susceptibility, vulnerability, and subsequently risk maps under a data-constrained scenario. Furthermore, since this approach is relatively data and computationally parsimonious, it can be easily implemented over large regions. The exhaustive flood maps will facilitate effective flood control and floodplain planning. © 2022 elsevier b.v. en_US
dc.language.iso English en_US
dc.publisher Elsevier B.V. en_US
dc.subject DATA ENVELOPMENT ANALYSIS en_US
dc.subject FLOOD RISK ASSESSMENT en_US
dc.subject FLOOD SUSCEPTIBILITY MAPPING en_US
dc.subject GEOMORPHIC APPROACH en_US
dc.subject SUPERVISED LEARNING en_US
dc.subject VULNERABILITY MAPPING en_US
dc.subject.other Data envelopment analysis en_US
dc.subject.other Decision trees en_US
dc.subject.other Discriminant analysis en_US
dc.subject.other Flood control en_US
dc.subject.other Floods en_US
dc.subject.other Forestry en_US
dc.subject.other Hazards en_US
dc.subject.other Learning algorithms en_US
dc.subject.other Maps en_US
dc.subject.other Risk analysis en_US
dc.subject.other Risk assessment en_US
dc.subject.other Risk perception en_US
dc.subject.other Rural areas en_US
dc.subject.other Supervised learning en_US
dc.subject.other Flood risk assessments en_US
dc.subject.other Flood risks en_US
dc.subject.other Flood susceptibility mapping en_US
dc.subject.other Geomorphic approach en_US
dc.subject.other Machine learning models en_US
dc.subject.other Random forests en_US
dc.subject.other Risk mappings en_US
dc.subject.other Socio-economic vulnerability en_US
dc.subject.other Susceptibility mapping en_US
dc.subject.other Vulnerability mappings en_US
dc.subject.other Mapping en_US
dc.subject.other article en_US
dc.subject.other decision tree en_US
dc.subject.other floodplain en_US
dc.subject.other human en_US
dc.subject.other India en_US
dc.subject.other learning en_US
dc.subject.other machine learning en_US
dc.subject.other quantitative analysis en_US
dc.subject.other random forest en_US
dc.subject.other receiver operating characteristic en_US
dc.subject.other risk assessment en_US
dc.subject.other river basin en_US
dc.subject.other socioeconomic vulnerability en_US
dc.subject.other flooding en_US
dc.subject.other machine learning en_US
dc.subject.other river en_US
dc.subject.other socioeconomics en_US
dc.subject.other Floods en_US
dc.subject.other Humans en_US
dc.subject.other Machine Learning en_US
dc.subject.other Rivers en_US
dc.subject.other ROC Curve en_US
dc.subject.other Socioeconomic Factors en_US
dc.title A novel flood risk mapping approach with machine learning considering geomorphic and socio-economic vulnerability dimensions en_US
dc.type Article en_US


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