利用基于地理信息系统的不同双变量统计模型绘制孟加拉国东北部山洪易发区地图

Md. Sharafat Chowdhury
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引用次数: 0

摘要

山洪爆发给世界各地的环境和人类生活造成严重破坏,孟加拉国也不例外。严重的山洪暴发会在季风初期影响孟加拉国东北部地区,对社会经济发展和环境可持续性的各个方面构成严重威胁。为了管理这种威胁并减少洪水损失,绘制山洪易发区地图起着关键作用。因此,本研究旨在利用基于地理信息系统的双变量统计模型,绘制孟加拉国东北部丘陵地区的山洪易发区地图。所使用的模型包括频率比 (FR)、证据权重 (WoE)、确定性因子 (CF)、Shanon熵 (SE) 和信息值 (IV)。在确定的 250 个山洪暴发地点中,80% 的数据用于训练,20% 的数据用于测试。选定的 11 个山洪暴发条件因子包括海拔、坡度、坡向、曲率、TWI、TRI、SPI、与溪流的距离、溪流密度、降雨量和地形。利用 ArcGIS 环境将计算得出的权重分配给各条件因子,从而绘制出最终的山洪地图。ROC 的 AUC 结果表明,WoE(成功率 = 0.833,预测率 = 0.925)是绘制山洪易发性地图的最佳模型,其次是 FR(成功率 = 0.828,预测率 = 0.928)和 SE(成功率 = 0.827,预测率 = 0.923)。根据模型,地形(平坦区域)和水文因素在很大程度上控制着研究区域的山洪发生。绘制的山洪易发区地图将有助于研究区域的灾害管理者和庄园总体规划者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Flash flood susceptibility mapping of north-east depression of Bangladesh using different GIS based bivariate statistical models

Flash flood susceptibility mapping of north-east depression of Bangladesh using different GIS based bivariate statistical models

Flash flood causes severe damage to the environment and human life across the world, no exception is Bangladesh. Severe flash floods affect the northeastern portion of Bangladesh in the early monsoon and pose a serious threat to every aspect of socioeconomic development and environmental sustainability. To manage the threat and reduce flood loss, the map of flash flood susceptible zones plays a key role. Thus, the aim of this research is to map the flash flood-susceptible areas of the northeastern haor areas of Bangladesh utilizing GIS-based bivariate statistical models. The models utilized are frequency ratio (FR), weights of evidence (WoE), certainty factor (CF), Shanon’s entropy (SE) and information value (IV). Among the 250 identified flash flood locations, 80 % data was used for training purposes and 20 % data for testing purposes. Eleven selected conditioning factors of flash flood include elevation, slope, aspect, curvature, TWI, TRI, SPI, distance to stream, stream density, rainfall and physiography. The calculated weights are assigned to the conditioning factors using ArcGIS environment to prepare the final flash flood maps. Results of AUC of ROC indicate WoE (success rate = 0.833 and prediction rate = 0.925) is the best model for flash flood susceptibility mapping followed by FR (success rate = 0.828 and prediction rate = 0.928) and SE (success rate = 0.827 and prediction rate = 0.923). According to the models, topographic (flat area) and hydrologic factors significantly control flash flood occurrence in the study area. The prepared flash flood susceptibility maps will be helpful for disaster managers and haor master planners of the study area.

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