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Using Diffusion Maps for Latent Space Analysis of Seismic Waveforms of Incised Valleys in the Anadarko Basin, Oklahoma, USA

机译:利用扩散图,在美国俄克拉荷马州安扎湾盆地中切口山谷的地震波形潜在空间分析

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Summary In this work we present a new method for latent space mapping based upon inter-point similarities. This method, diffusion maps, has a number of nice qualities compared with previous methods including the fact that it is based upon inter-point similarities rather than a Euclidean space. We then demonstrate application of this approach to mapping an incised valley system from the Anadarko Basin, Oklahoma, USA. Introduction Multi-dimensional data is commonly encountered in attribute analysis where the desire is to combine several attributes with complementary properties. As geophysicists, we tend to view attribute spaces higher than four dimensional as being undesirable as they cannot be visualized using common color models such as ARGB space. Furthermore, mathematical considerations such as the Curse of Dimensionality (Bellmann, 1957) make working in lower dimensional space necessary. (Guo, Marfurt, Liu, & Dou, 2006) discussed an unsupervised learning method for doing dimensionality reduction of attributes using Principal Component Analysis (PCA). While this method has been shown to be useful in a broad range of applications, they are limited in their ability to capture non-linear structure in multidimensional attribute space. Retaining this non-linearity is important as data sets generally present a heterogeneous mix of latent processes that, taken as a whole, are unlikely to be well represented by a single low- dimensional linear manifold. A number of non-linear methods of manifold learning have been applied to seismic attributes and waveform modeling (Wallet & Marfurt, 2008) . Self organizing maps (SOM) is the best known of these approaches, and it is available in a number of commercial products. (Wallet & Perez, 2009) also demonstrated the use of a statistical method, generative topographical maps (GTM). (Wallet & Perez, 2009) applied diffusion maps to the problem of modeling well log data. They noted that the high computational demands of diffusion maps was an impediment to scaling to reasonable sized seismic problems. In this paper, we present an estimation method that deals with this problem.
机译:发明内容在这项工作中,我们为基于点间相似性提出了一种潜在空间映射的新方法。与以前的方法相比,这种方法,扩散图,与以前的方法相比,包括基于焦点相似性而不是欧几里德空间的事实。然后,我们展示了这种方法的应用,从美国俄克拉荷马州阿拉邦盆地映射了一个切割的谷体系。简介多维数据通常遇到属性分析,其中欲望是将多个属性与互补属性组合起来。作为地球物理学家,我们倾向于将高于四维的属性空间视为不希望的空间,因为它们无法使用诸如ARGB空间的常见颜色模型可视化。此外,数学考虑如维度(Bellmann,1957)的诅咒,使得在必要的较低的尺寸空间中工作。 (郭,Marfurt,Liu,&Dou,2006)讨论了使用主成分分析(PCA)进行维度减少属性的无监督学习方法。虽然该方法已被证明是在广泛的应用中有用的,但它们的能力受到捕获多维属性空间中的非线性结构的能力。保留这种非线性是重要的,因为数据集通常存在作为整体所用的潜在过程的异质混合,不太可能通过单个低维线性歧管很好地表示。多种歧管学习的非线性方法已应用于地震属性和波形建模(Wallet&Marfurt,2008)。自组织地图(SOM)是最着名的这些方法,可在许多商业产品中提供。 (钱包和Perez,2009)还展示了使用统计方法,生成地形图(GTM)。 (Wallet&Perez,2009)应用扩散图对模拟井日志数据的问题。他们指出,扩散图的高计算需求是扩展到合理大小的地震问题的障碍。在本文中,我们提出了一种统计解决此问题的估计方法。

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