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The application of GIS based decision-tree models for generating the spatial distribution of hydromorphic organic landscapes in relation to digital terrain data

机译:基于GIS的决策树模型在与数字地形数据相关的水文有机景观空间分布中的应用

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Accurate information about organic/mineral soil occurrence is a prerequisite for many land resources management applications (including climate change mitigation). This paper aims at investigating the potential of using geomorphometrical analysis and decision tree modeling to predict the geographic distribution of hydromorphic organic landscapes in unsampled area in Denmark. Nine primary (elevation, slope angle, slope aspect, plan curvature, profile curvature, tangent curvature, flow direction, flow accumulation, and specific catchment area) and one secondary (steady-state topographic wetness index) topographic parameters were generated from Digital Elevation Models (DEMs) acquired using airborne LIDAR (Light Detection and Ranging) systems. They were used along with existing digital data collected from other sources (soil type, geological substrate and landscape type) to explain organic/mineral field measurements in hydromorphic landscapes of the Danish area chosen. A large number of tree-based classification models (186) were developed using (1) all of the parameters, (2) the primary DEM-derived topographic (morphological/ hydrological) parameters only, (3) selected pairs of parameters and (4) excluding each parameter one at a time from the potential pool of predictor parameters. The best classification tree model (with the lowest misclassification error and the smallest number of terminal nodes and predictor parameters) combined the steady-state topographic wetness index and soil type, and explained 68% of the variability in organic/mineral field measurements. The overall accuracy of the predictive organic/inorganic landscapes' map produced (at 1:50 000 cartographic scale) using the best tree was estimated to be ca. 75%. The proposed classification-tree model is relatively simple, quick, realistic and practical, and it can be applied to other areas, thereby providing a tool to facilitate the implementation of pedological/hydrological plans for conservation and sustainable management. It is particularly useful when information about soil properties from conventional field surveys is limited.
机译:有关有机/矿物土壤发生的准确信息是许多土地资源管理应用程序(包括缓解气候变化)的先决条件。本文旨在研究使用地貌分析和决策树建模来预测丹麦未采样地区水形有机景观的地理分布的潜力。从数字高程模型中生成了九个主要(海拔,坡度角,坡向,平面曲率,轮廓曲率,切线曲率,流向,流量累积和特定汇水面积)和一个次要(稳态地形湿度指数)地形参数(DEM)使用机载LIDAR(光检测和测距)系统获取。它们与从其他来源(土壤类型,地质基质和景观类型)收集的现有数字数据一起用于解释所选丹麦地区水状景观中的有机/矿物场测量。使用(1)所有参数,(2)仅基于DEM的主要地形(形态/水文)参数,(3)选定的参数对和(4)开发了大量基于树的分类模型(186)。 )一次从预测变量的潜在池中排除每个参数。最佳分类树模型(具有最小的分类错误和最小的终端节点和预测参数)结合了稳态地形湿度指数和土壤类型,并解释了有机/矿场测量中68%的变异性。使用最好的树制作的预测有机/无机景观地图(以1:50 000制图比例)的整体准确性估计为。 75%。提出的分类树模型相对简单,快速,现实和实用,并且可以应用于其他领域,从而提供了一种工具来促进保护/可持续管理的生态学/水文计划的实施。当来自常规野外调查的有关土壤性质的信息有限时,此功能特别有用。

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