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A global prediction of seafloor sediment porosity using machine learning

机译:基于机器学习的海底沉积物孔隙度全球预测

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Porosity (void ratio) is a critical parameter in models of acoustic propagation, bearing strength, and many other seafloor phenomena. However, like many seafloor phenomena, direct measurements are expensive and sparse. We show here how porosity everywhere at the seafloor can be estimated using a machine learning technique (specifically, Random Forests). Such techniques use sparsely acquired direct samples and dense grids of other parameters to produce a statistically optimal estimate where direct measurements are lacking. Our porosity estimate is both qualitatively more consistent with geologic principles than the results produced by interpolation and quantitatively more accurate than results produced by interpolation or regression methods. We present here a seafloor porosity estimate on a 5 arc min, pixel registered grid, produced using widely available, densely sampled grids of other seafloor properties. These techniques represent the only practical means of estimating seafloor properties in inaccessible regions of the seafloor (e.g., the Arctic).
机译:孔隙率(空隙比)是声学传播,承载强度和许多其他海底现象模型中的关键参数。但是,像许多海底现象一样,直接测量非常昂贵且稀疏。我们在这里展示了如何使用机器学习技术(特别是随机森林)来估算海底各处的孔隙度。此类技术使用稀疏获取的直接样本和其他参数的密集网格来生成统计上的最佳估计值,而缺少直接测量值。我们的孔隙率估算在质量上与地质原理相比,比通过插值法得出的结果更加一致,并且在数量上比通过插值法或回归方法得出的结果更准确。我们在这里介绍了一个5弧分像素像素注册网格的海底孔隙度估算值,该网格是使用其他海底特性广泛可用的密集采样网格生成的。这些技术代表了估算海底不可访问区域(例如北极)中海底特性的唯一实用手段。

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