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首页> 外文期刊>Environmental earth sciences >Susceptibility mapping of gully erosion using GlS-based statistical bivariate models: a case study from Ali AI-Gharbi District, Maysan Governorate, southern Iraq
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Susceptibility mapping of gully erosion using GlS-based statistical bivariate models: a case study from Ali AI-Gharbi District, Maysan Governorate, southern Iraq

机译:使用基于Gls的统计双变量模型绘制的沟壑侵蚀敏感性图:以伊拉克南部迈桑省阿里AI-加尔比区为例

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摘要

This work aims to evaluate the predictive capability of three bivariate statistical models, namely information value, frequency ratio, and evidential belief functions, in gully erosion susceptibility mapping in northeastern Maysan Governorate (Ali Al-Gharbi District) in southern Iraq. The gully inventory map, consisting of 21 gullies of different sizes, was prepared based on the interpretation of remotely sensed data supported by field survey. The gully inventory data (polygon format) were randomly partitioned into two sets: 14 gullies for build and training the bivariate model, and the remaining 7 gullies for validating purposes. Twelve gully influential factors were selected based on data availability and the literature review. The selected factors were related to lithology, geomorphology, soil, land cover, and topography (primary and secondary) settings. Analysis of factor importance using information gain ratio proved that out of 12 gully influential factors, eight were of more importance in developing gullies (the average merit was greater than zero). The most important factors and the training gully inventory map were used to generate three gully erosion susceptibility maps based on the three bivariate models used. For validation, the area under the operating characteristics curves for both success and prediction rates was used. The results indicated that the highest prediction rate of 82.9% was achieved using the information value technique. All the bivariate models had prediction rates greater than 80%, and thus they were regarded as very good estimators. The final conclusion was that the bivariate models offer advanced techniques for mapping gully erosion susceptibility.
机译:这项工作旨在评估三个双变量统计模型在伊拉克南部东北部Maysan省(Ali Al-Gharbi区)的沟壑易感性制图中的预测能力,即信息值,频率比和证据信念函数。根据对实地调查支持的遥感数据的解释,编制了由21个大小不同的沟壑组成的沟壑清单图。沟渠清单数据(多边形格式)随机分为两组:14个沟渠用于构建和训练双变量模型,其余7个沟渠用于验证。根据数据可用性和文献综述选择了十二个沟壑影响因素。选择的因素与岩性,地貌,土壤,土地覆盖和地形(主要和次要)设置有关。使用信息增益比对因子重要性进行分析,结果表明,在12个沟壑影响因子中,有8个在发育沟壑中更为重要(平均价值大于零)。根据所使用的三个双变量模型,使用最重要的因素和训练的沟壑清单图来生成三个沟蚀敏感性图。为了进行验证,使用了成功率和预测率的运行特性曲线下的面积。结果表明,使用信息值技术可达到82.9%的最高预测率。所有双变量模型的预测率均大于80%,因此被认为是非常好的估计量。最终结论是,双变量模型提供了用于绘制沟壑侵蚀敏感性的先进技术。

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