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Machine Learning-Based Gully Erosion Susceptibility Mapping: A Case Study of Eastern India

机译:基于机器学习的沟壑侵蚀敏感性图:以印度东部为例

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摘要

Gully erosion is a form of natural disaster and one of the land loss mechanisms causing severe problems worldwide. This study aims to delineate the areas with the most severe gully erosion susceptibility (GES) using the machine learning techniques Random Forest (RF), Gradient Boosted Regression Tree (GBRT), Naïve Bayes Tree (NBT), and Tree Ensemble (TE). The gully inventory map (GIM) consists of 120 gullies. Of the 120 gullies, 84 gullies (70%) were used for training and 36 gullies (30%) were used to validate the models. Fourteen gully conditioning factors (GCFs) were used for GES modeling and the relationships between the GCFs and gully erosion was assessed using the weight-of-evidence (WofE) model. The GES maps were prepared using RF, GBRT, NBT, and TE and were validated using area under the receiver operating characteristic (AUROC) curve, the seed cell area index (SCAI) and five statistical measures including precision (PPV), false discovery rate (FDR), accuracy, mean absolute error (MAE), and root mean squared error (RMSE). Nearly 7% of the basin has high to very high susceptibility for gully erosion. Validation results proved the excellent ability of these models to predict the GES. Of the analyzed models, the RF (AUROC = 0.96, PPV = 1.00, FDR = 0.00, accuracy = 0.87, MAE = 0.11, RMSE = 0.19 for validation dataset) is accurate enough for modeling and better suited for GES modeling than the other models. Therefore, the RF model can be used to model the GES areas not only in this river basin but also in other areas with the same geo-environmental conditions.
机译:沟壑侵蚀是自然灾害的一种形式,也是造成世界范围内严重问题的土地流失机制之一。这项研究旨在使用机器学习技术随机森林(RF),梯度增强回归树(GBRT),朴素贝叶斯树(NBT)和树组合(TE)来描述最严重的河谷侵蚀易感性(GES)区域。沟壑清单图(GIM)由120个沟壑组成。在120个排水沟中,有84个排水沟(占70%)用于训练,有36个排水沟(占30%)用于验证模型。使用14个沟壑条件因子(GCF)进行GES建模,并使用证据权重(WofE)模型评估GCF与沟壑侵蚀之间的关系。使用RF,GBRT,NBT和TE绘制GES图,并使用接收器工作特征(AUROC)曲线下的面积,种子细胞面积指数(SCAI)和五种统计量度(包括精度(PPV),错误发现率)进行验证(FDR),准确性,平均绝对误差(MAE)和均方根误差(RMSE)。流域近7%的沟壑易感性很高。验证结果证明了这些模型预测GES的出色能力。在分析的模型中,RF(对于验证数据集,AUROC = 0.96,PPV = 1.00,FDR = 0.00,准确性= 0.87,MAE = 0.11,RMSE = 0.19)对于建模而言足够准确,并且比其他模型更适合于GES建模。因此,RF模型不仅可用于对该流域的GES区域进行建模,而且还可用于具有相同地质环境条件的其他区域。

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