2019
DOI: 10.3390/su11133733
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A Bayesian Network-Based Integrated for Flood Risk Assessment (InFRA)

Abstract: Floods are natural disasters that should be considered a top priority in disaster management, and various methods have been developed to evaluate the risks. However, each method has different results and may confuse decision-makers in disaster management. In this study, a flood risk assessment method is proposed to integrate various methods to overcome these problems. Using factor analysis and principal component analysis (PCA), the leading indicators that affect flood damage were selected and weighted using t… Show more

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Cited by 25 publications
(10 citation statements)
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“…The evaluation factors considered in this study are related to the danger of flooding by sub-basin and it is important to clarify that the factors are decided based on the results of previous studies such as [1,15,24,25] and expert judgment. Summarizing, the parameters and sub-parameters that affect the flooding risk of road networks and that are considered in this study are summarized in Figure 2.…”
Section: Factors Affecting the Flood Risk Of Road Infrastructuresmentioning
confidence: 99%
“…The evaluation factors considered in this study are related to the danger of flooding by sub-basin and it is important to clarify that the factors are decided based on the results of previous studies such as [1,15,24,25] and expert judgment. Summarizing, the parameters and sub-parameters that affect the flooding risk of road networks and that are considered in this study are summarized in Figure 2.…”
Section: Factors Affecting the Flood Risk Of Road Infrastructuresmentioning
confidence: 99%
“…Ten factors are selected to evaluate urban flood inundation risk and determine inundation-prone areas in the study area according to previous studies [1,2,11,14,[32][33][34]41,44], the actual situation of the study area, the availability of data, as well as experts' knowledge and experience. The hazard factor is annual rainfall; the vulnerability factors are elevation, slope, soil water retention (SWR), river density, distance to river; the capacity factors are pipe density, road density, population density, and per unit GDP (Figure 2).…”
Section: Selection Of Criteria and Risk Factorsmentioning
confidence: 99%
“…Some AHP extension methods are also used to assess flood risk [8][9][10]. Qualitative evaluation methods also include: constant sum scale [11], entropy [12], additive weighting [13], or multi-criteria analysis approach [14,15]. There are also other methods, such as quantitative evaluation methods, many hydrological and hydrodynamic models [16][17][18][19], and a series of flood risk simulation models, such as random forest [20], gradient boosting decision tree [21], genetic algorithm [2], simulated annealing [22], rapid urban flood inundation and damage assessment model [1], meteorological research and prediction model [23], alternate decision tree [24], etc.…”
Section: Introductionmentioning
confidence: 99%
“… 2 , 36 ), Bayesian belief network (e.g., Refs. 37 , 38 , or by leveraging machine learning models (e.g. Refs.…”
Section: Introductionmentioning
confidence: 99%