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Accuracy of Interpolated Bathymetric Digital Elevation Models

机译:内插测深数字高程模型的精度

摘要

Digital elevation models (DEMs) are the framework for the modeling of numerous coastal processes including tsunami propagation and inundation, storm-surge, and sea-level-rise. The National Oceanic and Atmospheric Administration (NOAA) National Geophysical Data Center (NGDC) develops integrated bathymetric-topographic DEMs across coastal zones to support tsunami propagation and inundation modeling efforts. The development of integrated bathymetric-topographic DEMs requires extreme interpolation across large distances between sparse bathymetric measurements in order for the model to retain the resolution of dense coastal topographic data, particularly lidar. This study examines the accuracy of three common interpolation methods used to develop bathymetric DEMs of Kachemak Bay, Alaska: inverse distance weighting (IDW), spline, and triangular irregular network (TIN). The goal of the study is to examine the relationship between interpolation deviations from measured depths and sample density, distance to the nearest depth measurement, and terrain characteristics.A split-sample method was used to determine that the accuracy of the three evaluated interpolation methods decreases in areas of high surface curvature, at greater distances from the nearest measurement, and at smaller sampling densities. Furthermore, spline is the most accurate interpolation method at all sampling densities. Predictive equations of interpolation uncertainty derived from the quantification of interpolation deviations in relationship to sample density and distance to the nearest depth measurement were developed. These predictive equations of the uncertainty in DEMs introduced by interpolation methods can aid mitigation efforts for coastal communities prone to tsunamis, storm-surge, and other coastal hazards, by improving the understanding of the propagation of uncertainty into the modeling of such coastal processes that rely on integrated bathymetric-topographic DEMs.
机译:数字高程模型(DEM)是许多沿海过程建模的框架,包括海啸传播和淹没,风暴潮和海平面上升。国家海洋和大气管理局(NOAA)国家地球物理数据中心(NGDC)在整个沿海地区开发了综合的测深地形DEM,以支持海啸传播和淹没建模工作。集成水深地形DEM的发展需要在稀疏水深测量之间的较大距离上进行极值插值,以使模型保持密集的沿海地形数据(尤其是激光雷达)的分辨率。本研究检查了用于开发阿拉斯加Kachemak湾测深DEM的三种常见插值方法的准确性:反距离权重(IDW),样条和三角不规则网络(TIN)。这项研究的目的是检查与测量深度和样本密度,到最近的深度测量的距离以及地形特征之间的插值偏差之间的关系。使用分割样本方法来确定三种评估的插值方法的准确性会降低在表面曲率高的区域中,距最近测量值的距离较大,并且采样密度较小。此外,样条曲线是所有采样密度下最精确的插值方法。建立了由插值偏差量化得出的插值不确定性预测方程,该插值偏差与样品密度和至最近深度测量的距离有关。这些通过插值方法引入的DEM不确定性的预测方程式,可以通过提高对不确定性传播的理解,来帮助依赖海啸,风暴潮和其他沿海灾害的沿海社区减灾工作,在集成的测深地形DEM上。

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    Amante Christopher Joseph;

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  • 年度 2012
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