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首页> 外文期刊>Earth Surface Processes and Landforms: The journal of the British Geomorphological Research Group >Testing techniques to quantify drumlin height and volume: synthetic DEMs as a diagnostic tool
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Testing techniques to quantify drumlin height and volume: synthetic DEMs as a diagnostic tool

机译:量化drumlin高度和体积的测试技术:合成DEM作为诊断工具

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Glacial bedform height (H) and volume (V) likely preserve important information about the behaviour of former ice sheets. However, large systematic errors exist in the measurement of H and V. Three semi-automated methods to isolate drumlins from other components of the landscape (e.g. trees, hills) as portrayed by NEXTMap have recently been devised; however, it is unclear which is most accurate. This paper undertakes the first quantitative comparison of such readily implementable methods, illustrating the use of statistically representative 'synthetic landscapes' as a diagnostic tool. From this analysis, guidelines for quantifying the 3D attributes of drumlins are proposed. Specifically, to avoid obtaining incorrect estimates caused by substantial systematic biases, interpreters should currently take three steps: declutter the digital elevation model for estimating H but not V; remove height data within the drumlin; then interpolate across the resultant hole to estimate a basal surface using Delaunay triangulation. Results are demonstrated through analysis of drumlins in an area in western central Scotland. The guidance arguably represents the best current advice for subglacial bedforms in general, highlighting the need for more studies into the quality of mapped data using synthetic landscapes.
机译:冰河床形高度(H)和体积(V)可能保留有关前冰盖行为的重要信息。但是,H和V的测量存在很大的系统误差。NEXTMap描绘了三种半自动方法,将鼓形林与景观的其他部分(例如树木,丘陵)隔离开来。但是,尚不清楚哪个最准确。本文对这种易于实施的方法进行了首次定量比较,说明了使用具有统计代表性的“综合景观”作为诊断工具。通过此分析,提出了量化鼓槌3D属性的准则。具体而言,为避免获得由实质性系统偏差引起的不正确估计,口译员目前应采取三个步骤:整理数字高程模型以估计H而不是V;删除鼓林中的高度数据;然后使用Delaunay三角剖分法在生成的孔上进行插值以估计基面。通过分析苏格兰中西部地区的鼓林来证明结果。总体而言,该指南可以说是目前最好的冰川下床形建议,强调需要对使用合成景观的地图数据质量进行更多研究。

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