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Evaluating DEM conditioning techniques, elevation source data, and grid resolution for field-scale hydrological parameter extraction

机译:评估DEM调节技术,高程源数据和网格分辨率,以进行现场规模的水文参数提取

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Although digital elevation models (DEMs) prove useful for a number of hydrological applications, they are often the end result of numerous processing steps that each contains uncertainty. These uncertainties have the potential to greatly influence DEM quality and to further propagate to DEM-derived attributes including derived surface and near-surface drainage patterns. This research examines the impacts of DEM grid resolution, elevation source data, and conditioning techniques on the spatial and statistical distribution of field-scale hydrological attributes for a 12,000 ha watershed of an agricultural area within southwestern Ontario, Canada. Three conditioning techniques, including depression filling (DF), depression breaching (DB), and stream burning (SB), were examined. The catchments draining to each boundary of 7933 agricultural fields were delineated using the surface drainage patterns modeled from LiDAR data, interpolated to a 1 m, 5 m, and 10 m resolution DEMs, and from a 10 m resolution photogrammetric DEM. The results showed that variation in DEM grid resolution resulted in significant differences in the spatial and statistical distributions of contributing areas and the distributions of downslope flowpath length. Degrading the grid resolution of the LiDAR data from 1 m to 10 m resulted in a disagreement in mapped contributing areas of between 29.4% and 37.3% of the study area, depending on the DEM conditioning technique. The disagreements among the field-scale contributing areas mapped from the 10 m LiDAR DEM and photogrammetric DEM were large, with nearly half of the study area draining to alternate field boundaries. Differences in derived contributing areas and flowpaths among various conditioning techniques increased substantially at finer grid resolutions, with the largest disagreement among mapped contributing areas occurring between the 1 m resolution DB DEM and the SB DEM (37% disagreement) and the DB-DF comparison (36.5% disagreement in mapped areas). These results demonstrate that the decision to use one DEM conditioning technique over another, and the constraints of available DEM data resolution and source, can greatly impact the modeled surface drainage patterns at the scale of individual fields. This work has significance for applications that attempt to optimize best-management practices (BMPs) for reducing soil erosion and runoff contamination within agricultural watersheds. (C) 2016 Elsevier B.V. All rights reserved.
机译:尽管数字高程模型(DEM)已证明对许多水文应用有用,但它们通常是许多处理步骤的最终结果,每个处理步骤都包含不确定性。这些不确定性可能会极大地影响DEM的质量,并进一步传播到DEM派生的属性,包括派生的地面和近地表排水模式。这项研究探讨了DEM网格分辨率,高程源数据和条件处理技术对加拿大西南安大略省一个农业区的12,000公顷流域的田间尺度水文属性的空间和统计分布的影响。研究了三种调理技术,包括凹陷填充(DF),破坏凹陷(DB)和流燃烧(SB)。使用从LiDAR数据建模,插入到1 m,5 m和10 m分辨率DEM和10 m分辨率摄影测量DEM的地表排水模式描绘了流向7933个农田的每个边界的集水区。结果表明,DEM网格分辨率的变化导致影响区域的空间和统计分布以及下坡流径长度的分布存在显着差异。将LiDAR数据的网格分辨率从1 m降低到10 m,导致在映射的贡献区域(研究区域的29.4%至37.3%)之间存在分歧,具体取决于DEM调节技术。从10 m LiDAR DEM和摄影测量DEM测绘的场尺度贡献区域之间的分歧很大,其中将近一半的研究区域排入了交替的场边界。在更精细的网格分辨率下,各种调节技术之间的推导贡献面积和流径的差异大大增加,其中映射贡献面积之间最大的分歧发生在1 m分辨率的DB DEM和SB DEM之间(37%分歧),与DB-DF比较(在地图区域中存在36.5%的分歧)。这些结果表明,决定使用一种DEM预处理技术来替代另一种,以及可用的DEM数据分辨率和源的约束,可以在各个字段的范围内极大地影响建模的地面排水模式。这项工作对于尝试优化最佳管理实践(BMP)以减少农业流域内的土壤侵蚀和径流污染的应用具有重要意义。 (C)2016 Elsevier B.V.保留所有权利。

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