首页> 外文期刊>Continental Shelf Research: A Companion Journal to Deep-Sea Research and Progress in Oceanography >Can we improve the spatial predictions of seabed sediments? A case study of spatial interpolation of mud content across the southwest Australian margin
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Can we improve the spatial predictions of seabed sediments? A case study of spatial interpolation of mud content across the southwest Australian margin

机译:我们可以改善海底沉积物的空间预测吗? 西南澳大利亚边缘泥土泥土空间插值的案例研究

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摘要

Spatially continuous data of environmental variables is often required for marine conservation and management. However, information for environmental variables is usually collected by point sampling, particularly for the marine region. Thus, methods generating such spatially continuous data by using point samples to estimate values for unknown locations become essential tools. Such methods are, however, often data- or even variable-specific and it is difficult to select an appropriate method for any given dataset. In this study, 14 methods (37 sub-methods) are compared using samples of mud content with five levels of sample density across the southwest Australian margin. Bathymetry, distance-to-coast, slope and geomorphic province were used as secondary variables. Ten-fold cross validation with relative mean absolute error (RMAE) and visual examination were used to assess the performance of these methods. A total of 1850 prediction datasets are produced and used to assess the performance of the methods and the effects of other factors considered. Considering both the accuracy and the visual examination, we found that a combined method (i.e., random forest and ordinary kriging: RKrf) is the most robust method. This method is novel, with a RMAE up to 17% less than that of the control. No threshold in sample density was detected in relation to prediction accuracy. No consistent patterns are observed between the performance of the methods and data variation. The RMAE of three most accurate methods is about 30% lower than that of the best methods in previous publications, highlighting the robustness of the methods selected in this study. The implications and limitations of this study are discussed and a number of suggestions are provided for further studies.
机译:海洋保护和管理通常需要空间变量的空间连续数据。但是,环境变量的信息通常通过点采样来收集,特别是海洋区域。因此,通过使用点样本来产生这种空间连续数据来估计未知位置的值成为必要的工具。然而,这种方法通常是数据甚至是可变特定的,并且难以为任何给定的数据集选择适当的方法。在本研究中,使用泥质含量的样品进行比较14种方法(37个副方法),澳大利亚西南部的泥浆含量为五个水平的样品密度。沐浴浴室,距离 - 海岸,斜坡和地貌省用作次要变量。使用相对平均绝对误差(RMAE)和视觉检查的十倍交叉验证来评估这些方法的性能。共产生1850个预测数据集,并用于评估方法的性能和所考虑的其他因素的效果。考虑到准确性和视觉检查,我们发现组合方法(即随机森林和普通Kriging:RKRF)是最强大的方法。该方法是新颖的,RMAE高达17%小于控制。关于预测精度,检测到样品密度的阈值。在方法和数据变化的性能之间没有观察到一致的模式。三种最准确的方法的RMAE比以前出版物中最好的方法低约30%,突出了本研究中选择的方法的稳健性。讨论了本研究的影响和局限性,并提供了更多的建议进行进一步研究。

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