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Land degradation risk mapping using topographic, human-induced, and geo-environmental variables and machine learning algorithms, for the Pole-Doab watershed, Iran

机译:使用地形,人类诱导和地理环境变量和机器学习算法的土地退化风险映射,为杆 - Doab流域,伊朗

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摘要

Land degradation (LD) is a complex process affected by both anthropogenic and natural driving variables, and its prevention has become an essential task globally. The aim of the present study was to develop a new quantitative LD mapping approach using machine learning techniques, benchmark models, and human-induced and socio-environmental variables. We employed four machine learning algorithms [Support Vector Machine (SVM), Multivariate Adaptive Regression Splines (MARS), Generalized Linear Model (GLM), and Dragonfly Algorithm (DA)] for LD risk mapping, based on topographic (n = 7), human-induced (n = 5), and geo-environmental (n = 6) variables, and field measurements of degradation in the Pole-Doab watershed, Iran. We assessed the performance of different algorithms using receiver operating characteristic, Kappa index, and Taylor diagram. The results revealed that the main topographic, geoenvironmental, and human-induced variable was slope, geology, and land use change, respectively. Assessments of model performance indicated that DA had the highest accuracy and efficiency, with the greatest learning and prediction power in LD risk mapping. In LD risk maps produced using SVM, GLM, MARS, and DA, 19.16%, 19.29%, 21.76%, and 22.40%, respectively, of total area in the Pole-Doab watershed had a very high degradation risk. The results of this study demonstrate that in LD risk mapping for a region, topographic, and geological factors (static conditions) and human activities (dynamic conditions, e.g., residential and industrial area expansion) should be considered together, for best protection at watershed scale. These findings can help policymakers prioritize land and water conservation efforts.
机译:土地退化(LD)是受人类学和自然驾驶变量影响的复杂过程,其预防已成为全球必不可少的任务。本研究的目的是使用机器学习技术,基准模型和人类诱导和社会环境变量开发一种新的定量LD映射方法。我们采用四台机器学习算法[支持向量机(SVM),多变量自适应回归样条(MARS),广义线性模型(GLM)和Dragonfly算法(DRACLANFEL算法(DACLANGFLY算法(DA),基于地形(n = 7),人诱导的(n = 5),以及地质环境(n = 6)变量,杆状水域中的降解现场测量,伊朗。我们评估了使用接收器操作特性,κ指数和泰勒图来评估不同算法的性能。结果表明,主要地形,地理环境和人诱导的变量分别是坡,地质和土地利用变化。模型性能的评估表明,DA具有最高的准确性和效率,具有最大的学习和预测力量在LD风险映射中。在使用SVM,GLM,MARS和DA生产的LD风险地图中,19.16%,19.29%,21.76%和22.40%,21.76%和22.40%,总面积在极点水域中的总面积具有非常高的降解风险。本研究的结果表明,在LD风险映射中,地形和地质因素(静态条件)和人类活动(动态条件,例如住宅和工业区扩展)应在一起,以便在流域等级中获得最佳保护。这些调查结果可以帮助政策制定者优先考虑土地和水资源保护努力。

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