Title:
Flood Susceptibility Modeling in a Subtropical Humid Low-Relief Alluvial Plain Environment: Application of Novel Ensemble Machine Learning Approach

dc.contributor.authorManish Pandey
dc.contributor.authorAman Arora
dc.contributor.authorAlireza Arabameri
dc.contributor.authorRomulus Costache
dc.contributor.authorNaveen Kumar
dc.contributor.authorVarun Narayan Mishra
dc.contributor.authorHoang Nguyen
dc.contributor.authorJagriti Mishra
dc.contributor.authorMasood Ahsan Siddiqui
dc.contributor.authorYogesh Ray
dc.contributor.authorSangeeta Soni
dc.contributor.authorU.K. Shukla
dc.date.accessioned2026-02-07T10:37:02Z
dc.date.issued2021
dc.description.abstractThis study has developed a new ensemble model and tested another ensemble model for flood susceptibility mapping in the Middle Ganga Plain (MGP). The results of these two models have been quantitatively compared for performance analysis in zoning flood susceptible areas of low altitudinal range, humid subtropical fluvial floodplain environment of the Middle Ganga Plain (MGP). This part of the MGP, which is in the central Ganga River Basin (GRB), is experiencing worse floods in the changing climatic scenario causing an increased level of loss of life and property. The MGP experiencing monsoonal subtropical humid climate, active tectonics induced ground subsidence, increasing population, and shifting landuse/landcover trends and pattern, is the best natural laboratory to test all the susceptibility prediction genre of models to achieve the choice of best performing model with the constant number of input parameters for this type of topoclimatic environmental setting. This will help in achieving the goal of model universality, i.e., finding out the best performing susceptibility prediction model for this type of topoclimatic setting with the similar number and type of input variables. Based on the highly accurate flood inventory and using 12 flood predictors (FPs) (selected using field experience of the study area and literature survey), two machine learning (ML) ensemble models developed by bagging frequency ratio (FR) and evidential belief function (EBF) with classification and regression tree (CART), CART-FR and CART-EBF, were applied for flood susceptibility zonation mapping. Flood and non-flood points randomly generated using flood inventory have been apportioned in 70:30 ratio for training and validation of the ensembles. Based on the evaluation performance using threshold-independent evaluation statistic, area under receiver operating characteristic (AUROC) curve, 14 threshold-dependent evaluation metrices, and seed cell area index (SCAI) meant for assessing different aspects of ensembles, the study suggests that CART-EBF (AUCSR = 0.843; AUCPR = 0.819) was a better performant than CART-FR (AUCSR = 0.828; AUCPR = 0.802). The variability in performances of these novel-advanced ensembles and their comparison with results of other published models espouse the need of testing these as well as other genres of susceptibility models in other topoclimatic environments also. Results of this study are important for natural hazard managers and can be used to compute the damages through risk analysis. Copyright © 2021 Pandey, Arora, Arabameri, Costache, Kumar, Mishra, Nguyen, Mishra, Siddiqui, Ray, Soni and Shukla.
dc.identifier.doi10.3389/feart.2021.659296
dc.identifier.issn22966463
dc.identifier.urihttps://doi.org/10.3389/feart.2021.659296
dc.identifier.urihttps://dl.bhu.ac.in/bhuir/handle/123456789/36825
dc.publisherFrontiers Media S.A.
dc.subjectCART
dc.subjectEBF
dc.subjectensembles
dc.subjectFR
dc.subjectGanga Foreland Basin
dc.subjectMiddle Ganga Plain
dc.titleFlood Susceptibility Modeling in a Subtropical Humid Low-Relief Alluvial Plain Environment: Application of Novel Ensemble Machine Learning Approach
dc.typePublication
dspace.entity.typeArticle

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