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首页> 外文期刊>Geoderma: An International Journal of Soil Science >A comparison of LiDAR-based DEMs and USGS-sourced DEMs in terrain analysis for knowledge-based digital soil mapping.
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A comparison of LiDAR-based DEMs and USGS-sourced DEMs in terrain analysis for knowledge-based digital soil mapping.

机译:基于LiDAR的DEM和基于USGS的DEM在基于知识的数字土壤制图的地形分析中的比较。

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While LiDAR-based digital elevation models (DEM) are more accurate and precise than the USGS-sourced DEM that are widely used in soil mapping in the US, their high cost and other problems prohibit an easy decision of adopting them in service-oriented soil mapping conducted by a government agency like USDA-NRCS. This study compares the performances of LiDAR-based DEM and the USGS-sourced DEM in calculating slope gradient as an input for knowledge-based digital soil mapping (KBDSM), aiming to provide scientific evidence and more importantly, propose a scientific approach to evaluating the two types of DEM for KBDSM. We conducted the comparison by evaluating how closely the DEM-based slope gradient values match the field-measured values. For a small watershed in northern Vermont, US, we prepared three DEM, including a 10-m DEM interpolated from the 7.5-minute USGS topographic map, a 1-m DEM based on LiDAR points, and a 5-m DEM resampled from the 1-m DEM. When calculating slope gradient, we applied two neighborhood sizes (10 m and 30 m), two neighborhood shapes (square and circular), and three slope gradient algorithms (Evans-Young, Horn, and modified Zevenbergen-Thorne) to the three DEM. We then compared the calculated slope gradient values with the values measured by soil scientists at 159 sample locations in the study area. Statistics show that across all the tested settings, the LiDAR-based DEM perform significantly better than the USGS-sourced DEM. We conclude that LiDAR-based DEM may considerably improve the quality of inputs for KBDSM. We also find that the results from the 1-m LiDAR-based DEM and the resampled 5-m DEM do not show considerable and consistent differences.
机译:尽管基于LiDAR的数字高程模型(DEM)比美国USGS来源的DEM更为精确和精确,DEM在美国的土壤测绘中被广泛使用,但其高昂的成本和其他问题使人们难以轻易决定在面向服务的土壤中采用它们由USDA-NRCS等政府机构进行的地图绘制。这项研究比较了基于LiDAR的DEM和基于USGS的DEM在计算坡度作为基于知识的数字土壤制图(KBDSM)的输入时的性能,旨在提供科学依据,更重要的是,提出一种科学方法来评估坡度。 KBDSM的两种DEM。我们通过评估基于DEM的坡度梯度值与现场测量值的接近程度进行了比较。对于美国佛蒙特州北部的一个小流域,我们准备了三个DEM,其中包括从7.5分钟的USGS地形图内插的10-m DEM,基于LiDAR点的1-m DEM,以及从美国北达科他州重采样的5-m DEM。 1米DEM。在计算坡度坡度时,我们将三个邻域大小(10 m和30 m),两个邻域形状(正方形和圆形)和三个坡度坡度算法(Evans-Young,Horn和改良的Zevenbergen-Thorne)应用于三个DEM。然后,我们将计算出的坡度梯度值与土壤科学家在研究区域的159个采样点处测得的值进行了比较。统计数据表明,在所有测试设置中,基于LiDAR的DEM的性能明显优于基于USGS的DEM。我们得出结论,基于LiDAR的DEM可能会大大提高KBDSM的输入质量。我们还发现,基于1-m LiDAR的DEM和重新采样的5-m DEM的结果没有显示出明显且一致的差异。

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