Abstract

ABSTRACTThe aim of this research was to evaluate the predictive performances of frequency ratio (FR), logistic regression (LR) and weight of evidence (WoE), in flood susceptibility mapping in China. In addition, the ensemble WoE and LR and ensemble FR and LR techniques were applied and used in the evaluation. The flood inventory map, consisting of 196 flood locations, was extracted from a number of sources. The flood inventory data were randomly divided into a testing data-set, allocating 70% for training, and the remaining 30% for validation. The 15 flood conditioning factors included in the spatial database were altitude, slope, aspect, geology, distance from river, distance from road, distance from fault, soil type, land use/cover, rainfall, Normalized Difference Vegetation Index, Stream Power Index, Topographic Wetness Index, Sediment Transport Index and curvature. For validation, success and prediction rate curves were developed using area under the curve (AUC) method. The results indicated that the highest prediction rate of 90.36% was achieved using the ensemble technique of WoE and LR. The standalone WoE produced the highest prediction rate among the individual methods. It can be concluded that WoE offers a more advanced method of mapping prone areas, compared with the FR and LR methods.

Highlights

  • Floods are among the most devastating of natural disasters and may cause immeasurable damage (Rozalis et al 2010)

  • The frequency ratio (FR) and weight of evidence (WoE) results denote the weights of the classes of the conditioning factors

  • The trend of WoE outputs was similar to FR results (Table 2)

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Summary

Introduction

Floods are among the most devastating of natural disasters and may cause immeasurable damage (Rozalis et al 2010). River flooding may be predicted by specific methods (Jonkman 2005). While reaction time plays a major role in the management of all natural disasters, it is crucial in the case of floods (Walder and O’Connor 1997). There is a vast body of GEOMATICS, NATURAL HAZARDS AND RISK research on the measurement and classification of floods, as well as the effects. Urbanization and demographic development along rivers, as well as a reduction in forested areas, has contributed to increasing damage (Bronstert 2003; Christensen and Christensen 2003). Areas most susceptible to flooding indicate where further development should be avoided or controlled, as well as where emergency strategies should be planned

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