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首页> 外文期刊>Journal of Hydrology >Evaluating the potential for site-specific modification of LiDAR DEM derivatives to improve environmental planning-scale wetland identification using Random Forest classification
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Evaluating the potential for site-specific modification of LiDAR DEM derivatives to improve environmental planning-scale wetland identification using Random Forest classification

机译:评估LIDAR DEM衍生品的现场特异性修改潜力,采用随机森林分类改善环境规划规模湿地鉴定

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摘要

Wetlands are important ecosystems that provide many ecological benefits, and their quality and presence are protected by federal regulations. These regulations require wetland delineations, which can be costly and time-consuming to perform. Computer models can assist in this process, but lack the accuracy necessary for environmental planning-scale wetland identification. In this study, the potential for improvement of wetland identification models through modification of digital elevation model (DEM) derivatives, derived from high-resolution and increasingly available light detection and ranging (LiDAR) data, at a scale necessary for small-scale wetland delineations is evaluated. A novel approach of flow convergence modelling is presented where Topographic Wetness Index (TWI), curvature, and Cartographic Depth-to-Water index (DTW), are modified to better distinguish wetland from upland areas, combined with ancillary soil data, and used in a Random Forest classification. This approach is applied to four study sites in Virginia, implemented as an ArcGIS model. The model resulted in significant improvement in average wetland accuracy compared to the commonly used National Wetland Inventory (84.9% vs. 32.1%), at the expense of a moderately lower average non-wetland accuracy (85.6% vs. 98.0%) and average overall accuracy (85.6% vs. 92.0%). From this, we concluded that modifying TWI, curvature, and DTW provides more robust wetland and non-wetland signatures to the models by improving accuracy rates compared to classifications using the original indices. The resulting ArcGIS model is a general tool able to modify these local LiDAR DEM derivatives based on site characteristics to identify wetlands at a high resolution. (C) 2018 Elsevier B.V. All rights reserved.
机译:湿地是提供许多生态效益的重要生态系统,其质量和存在受联邦法规的保护。这些法规需要湿地描绘,这可能是昂贵且耗时的表现。计算机型号可以协助这一过程,但缺乏环境规划规模湿地鉴定所需的准确性。在这项研究中,通过改变数字高度模型(DEM)衍生物来改善湿地识别模型的可能性,从高分辨率和越来越可用的光检测和测距(LIDAR)数据,以小规模湿地描绘所需的规模评估。提出了一种新的流量收敛建模方法,其中地形湿度指数(TWI),曲率和制图深度到水指数(DTW)被修改为更好地区分从高地区域的湿地,与辅助土壤数据相结合,并用于随机森林分类。这种方法适用于弗吉尼亚州的四个研究网站,实现为ArcGIS模型。与常用的国家湿地库存相比,该模型的平均湿地精度的显着提高(84.9%与32.1%),以适度降低的平均非湿地精度(85.6%与98.0%)和平均水平为代价准确性(85.6%vs.92.0%)。由此,我们得出结论,通过使用原始索引的分类,改进TWI,曲率和DTW通过提高精度率来提供更强大的湿地和非湿地签名。由此产生的ArcGIS模型是一种能够基于现场特征来修改这些本地LIDAR DEM衍生物的一般工具,以识别高分辨率的湿地。 (c)2018年elestvier b.v.保留所有权利。

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