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A Comparative Assessment of Random Forest and k-Nearest Neighbor Classifiers for Gully Erosion Susceptibility Mapping

机译:随机森林和k最近邻分类机的比较评估沟壑腐蚀敏感性测绘

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摘要

This research was conducted to determine which areas in the Robat Turk watershed in Iran are sensitive to gully erosion, and to define the relationship between gully erosion and geo-environmental factors by two data mining techniques, namely, Random Forest (RF) and k-Nearest Neighbors (KNN). First, 242 gully locations we determined in field surveys and mapped in ArcGIS software. Then, twelve gully-related conditioning factors were selected. Our results showed that, for both the RF and KNN models, altitude, distance to roads, and distance from the river had the highest influence upon gully erosion sensitivity. We assessed the gully erosion susceptibility maps using the Receiver Operating Characteristic (ROC) curve. Validation results showed that the RF and KNN models had Area Under the Curve (AUC) 87.4 and 80.9%, respectively. As a result, the RF method has better performance compared with the KNN method for mapping gully erosion susceptibility. Rainfall, altitude, and distance from a river were identified as the most important factors affecting gully erosion in this area. The methodology used in this research is transferable to other regions to determine which areas are prone to gully erosion and to explicitly delineate high-risk zones within these areas.
机译:进行了这项研究,以确定伊朗的罗布特土耳其水域中的哪些地区对沟壑侵蚀敏感,并通过两个数据挖掘技术来定义沟壑侵蚀和地理环境因素之间的关系,即随机森林(rf)和k-最近的邻居(knn)。首先,我们在现场调查中确定的242个沟壑位置,并在ArcGIS软件中映射。然后,选择了12个沟壑相关的调节因子。我们的研究结果表明,对于RF和KNN模型,海拔高度,与道路的距离以及河流的距离对沟壑侵蚀敏感度的影响最高。我们使用接收器操作特征(ROC)曲线评估了沟壑侵蚀敏感性图。验证结果表明,射频和KNN模型分别具有曲线(AUC)87.4和80.9%的区域。结果,与用于绘制沟壑腐蚀易感性的KNN方法相比,RF方法具有更好的性能。距离河流的降雨量,高度和距离被确定为影响该地区沟壑侵蚀的最重要因素。本研究中使用的方法可转移到其他地区,以确定哪些区域易于沟壑侵蚀,并在这些区域内明确地描绘高危区域。

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