首页> 外文期刊>The Science of the Total Environment >Gully erosion susceptibility assessment and management of hazard-prone areas in India using different machine learning algorithms
【24h】

Gully erosion susceptibility assessment and management of hazard-prone areas in India using different machine learning algorithms

机译:使用不同的机器学习算法,对印度易发地区的沟壑易感性进行评估和管理

获取原文
获取原文并翻译 | 示例
           

摘要

Gully erosion is one of the most effective drivers of sediment removal and runoff from highland areas to valley floors and stable channels, where continued off-site effects of water erosion occur. Gully initiation and development is a natural process that greatly impacts natural resources, agricultural activities, and environmental quality as it promotes land and water degradation, ecosystem disruption, and intensification of hazards. In this research, an attempt is made to produce gully erosion susceptibility maps for the management of hazard-prone areas in the Pathro River Basin of India using four well-known machine learning models, namely, multivariate additive regression splines (MARS), flexible discriminant analysis (FDA), random forest ( RF), and support vector machine (SVM). To support this effort, observations from 174 gully erosion sites were made using field surveys. Of the 174 observations, 70% were randomly split into a training data set to build susceptibility models and the remaining 30% were used to validate the newly built models. Twelve gully erosion conditioning factors were assessed to find the areas most susceptible to gully erosion. The predisposing factors were slope gradient, altitude, plan curvature, slope aspect, land use, slope length (LS), topographical wetness index (TWI), drainage density, soil type, distance from the river, distance from the lineament, and distance from the road. Finally, the results from the four applied models were validated with the help of ROC (Receiver Operating Characteristics) curves. The AUC value for the RF model was calculated to be 96.2%, whereas for those for the FDA, MARS, and SVM models were 842%, 91.4%, and 88.3%, respectively. The AUC results indicated that the random forest model had the highest prediction accuracy, followed by the MARS, SVM, and FDA models. However, it could be concluded that all the machine learning models performed well according to their prediction accuracy. The produced GESMs can be very useful for land managers and policy makers as they can be used to initiate remedial measures and erosion hazard mitigation in prioritized areas. (C) 2019 Elsevier B.V. All rights reserved.
机译:沟壑侵蚀是从高地到谷底和稳定河道的泥沙清除和径流最有效的驱动因素之一,在河道中不断发生水蚀的场外影响。沟壑的形成和发展是一个自然过程,会极大地影响自然资源,农业活动和环境质量,因为它会加剧土地和水的退化,生态系统的破坏和危害的加剧。在这项研究中,尝试使用四种著名的机器学习模型,即多变量加性回归样条(MARS),柔性判别法,来生产沟蚀敏感性图,以管理印度Pathro流域易发风险地区。分析(FDA),随机森林(RF)和支持向量机(SVM)。为了支持这项工作,使用现场调查从174个沟壑侵蚀点进行了观测。在174个观测值中,有70%被随机分为训练数据集以建立敏感性模型,其余30%被用于验证新建立的模型。评估了十二种沟壑侵蚀调节因素,以找出最容易发生沟壑侵蚀的区域。诱发因素包括坡度,海拔,平面曲率,坡度,土地利用,坡度(LS),地形湿度指数(TWI),排水密度,土壤类型,距河的距离,距线的距离以及距地面的距离。马路。最后,借助ROC(接收器工作特性)曲线验证了来自四个应用模型的结果。 RF模型的AUC值计算为96.2%,而FDA,MARS和SVM模型的AUC值分别为842%,91.4%和88.3%。 AUC结果表明,随机森林模型具有最高的预测准确性,其次是MARS,SVM和FDA模型。但是,可以得出结论,所有机器学习模型根据其预测精度均表现良好。产生的GESM对土地管理者和政策制定者非常有用,因为它们可用于在优先区域内采取补救措施和减轻侵蚀危害。 (C)2019 Elsevier B.V.保留所有权利。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号