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Using machine learning as an aid to seismic geomorphology, which attributes are the best input?

机译:使用机器学习作为辅助地震作的辅助地貌,哪些属性是最佳输入?

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摘要

Volcanic rocks with intermediate magma composition indicate distinctive patterns in seismic amplitude data. Depending on the processes by which they were extruded to the surface, these patterns may be chaotic, moderate-amplitude reflectors (indicative of pyroclastic flows) or continuous high-amplitude reflectors (indicative of lava flows). We have identified appropriate seismic attributes that highlight the characteristics of such patterns and use them as input to self-organizing maps to isolate these volcanic facies from their clastic counterpart. Our analysis indicates that such clustering is possible when the patterns are approximately self-similar, such that the appearance of objects does not change at different scales of observation. We adopt a workflow that can help interpreters to decide what methods and what attributes to use as an input for machine learning algorithms, depending on the nature of the target pattern of interest, and we apply it to the Kora 3D seismic survey acquired offshore in the Taranaki Basin, New Zealand. The resulting clusters are then interpreted using the limited well control and principles of seismic geomorphology.
机译:具有中间岩浆组成的火山岩表示地震幅度数据中的独特模式。取决于将它们挤出到表面的过程,这些图案可以是混沌的,中等幅度反射器(指示发动机流量的指示)或连续的高幅度反射器(指示熔岩流量)。我们已经确定了适当的地震属性,突出了这种模式的特征,并使用它们作为自组织地图的输入,以将这些火山相从碎片对应物隔离。我们的分析表明,当模式近似自相似时,这种聚类是可能的,使得物体的外观在不同的观察范围内不会改变。我们采用了一个工作流程,可以帮助口译员决定用作机器学习算法的输入的方法和哪些属性,这取决于目标的目标模式的性质,我们将其应用于洛拉3D地震调查中的海上收购塔拉纳基盆地,新西兰。然后使用有限的井控制和地震地貌原理来解释所得到的簇。

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