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Combining observations with acoustic swath bathymetry and backscatter to map seabed sediment texture classes: the empirical best linear unbiased predictor

机译:结合观测与声学条带测深和反向散射来绘制海底沉积物纹理类别:经验最佳线性无偏预测器

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摘要

Seabed sediment texture can be mapped by geostatistical prediction from limited direct observations such as grab-samples. A geostatistical model can provide local estimates of the probability of each texture class so the most probable sediment class can be identified at any unsampled location, and the uncertainty of this prediction can be quantified. In this paper we show, in a case study off the northeast coast of England, how swath bathymetry and backscatter can be incorporated into a geostatistical linear mixed model (LMM) as fixed effects (covariates).ududParameters of the LMM were estimated by maximum likelihood which allowed us to show that both covariates provided useful information. In a cross-validation, each observation was predicted from the rest using the LMMs with (i) no covariates, or (ii) bathymetry and backscatter as covariates. The proportion of cases in which the most probable class according to the prediction corresponded to the observed class was increased (from 58% to 65% of cases) by including the covariates which also increased the information content of the predictions, measured by the entropy of the class probabilities. A qualitative assessment of the geostatistical results shows that the model correctly predicts, for example, the occurrence of coarser sediment over discrete glacial sediment landforms, and muddier sediment in relatively quiescent, localized deep water environments. This demonstrates the potential for assimilating geophysical data with direct observations by the LMM, and could offer a basis for a routine mapping procedure which incorporates these and other ancillary information such as manually-interpreted geological and geomorphological maps.
机译:海底沉积物的质地可以通过地统计学的预测,从有限的直接观测数据(例如抓取样本)中绘制出来。地统计学模型可以提供每个纹理类别的概率的局部估计,因此可以在任何未采样的位置确定最可能的沉积物类别,并且可以量化此预测的不确定性。在本文中,我们展示了在英格兰东北沿海的一个案例研究中,如何将条幅测深和后向散射作为固定效应(协变量)纳入地统计线性混合模型(LMM)中。 ud ud估计了LMM的参数通过最大可能性,我们可以证明两个协变量都提供了有用的信息。在交叉验证中,使用(i)没有协变量,或(ii)测深和后向散射作为协变量,使用LMM来预测其余观察值。通过包含协变量也增加了预测中最可能的类别与观察到的类别相对应的案例的比例(从58%增至65%),这也增加了预测的信息含量(通过班级概率。对地统计学结果的定性评估表明,该模型可以正确预测,例如,离散的冰川沉积物地貌上较粗的沉积物的出现,以及相对静止的局部深水环境中的泥泞沉积物。这证明了通过LMM的直接观测将地球物理数据同化的潜力,并且可以为例行制图程序提供基础,该程序将这些信息和其他辅助信息(例如人工解释的地质和地貌图)相结合。

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