Reprocessing and interpretation of legacy seismic data using machine learning from the Granada Basin, Spain

IF 2.7 3区 地球科学 Q2 GEOCHEMISTRY & GEOPHYSICS
Carlos José Araque-Pérez , Teresa Teixidó , Flor de Lis Mancilla , José Morales
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Abstract

The Granada Basin (Spain) is a Neogene sedimentary depression with irregular geomorphology and deep depocenters. It is located in the most seismically hazardous part of the Iberian Peninsula with an historically experienced extremely destructive earthquakes, followed by periods of low to moderate seismicity. In 1980s the Chevron Oil Company collected a set of 30 deep seismic reflection sections in this Basin of which only the results on paper are kept. Due to the fact that many of these seismic profiles are currently located in urban areas and the economic cost of carrying out a similar exploration, it was decided to recover these old data and apply a post-stack treatment to improve their quality. The purpose of this study is to show the applied reprocessing flow and, with the new sections, to present a spatial model of the basin. The first stage of recovery and enhacement of seismic sections has consisted in three phases: first, high-resolution scanning of paper copies to TIFF images followed by the transformation of TIFF images to SEG-Y format; second, poststack processing workflow to increasing resolution and lateral coherence of these seismic lines; and third, it has been used a machine learning algorithm, among others, increasing the spatial resolution, signal-to-noise ratio, and coherence of the seismic signals. In addition, basement horizons, as well as three sedimentary sequences, were identified in all seismic sections and interpolated to create a three-dimensional basement model composed by normal faults, horst and grabens related to the seismotectonic behavior of the basin. As an overall assessment, this work is an example of the usefulness of ‘recycling’ legacy seismic data, which nowadays are usually in archived boxes, but at the time required a great economic and acquisition effort.

Abstract Image

利用机器学习重新处理和解释西班牙格拉纳达盆地的遗留地震数据
格拉纳达盆地(西班牙)是一个新近纪沉积洼地,地貌不规则,沉积中心较深。它位于伊比利亚半岛地震危险性最大的地区,历史上曾发生过破坏性极大的地震,之后又经历过低度至中度地震。20 世纪 80 年代,雪佛龙石油公司在该盆地采集了 30 个深层地震反射剖面,目前只保留了纸质结果。由于这些地震剖面中的许多目前位于城市地区,而且进行类似勘探的经济成本较高,因此决定恢复这些旧数据,并进行叠后处理以提高其质量。本研究的目的是展示所应用的后处理流程,并通过新剖面展示盆地的空间模型。地震剖面恢复和增强的第一阶段包括三个阶段:首先,将纸质副本高分辨率扫描为 TIFF 图像,然后将 TIFF 图像转换为 SEG-Y 格式;其次,采用叠后处理工作流程,以提高这些地震线的分辨率和横向一致性;第三,采用机器学习算法等方法,提高地震信号的空间分辨率、信噪比和一致性。此外,还在所有地震剖面中确定了基底地层以及三个沉积序列,并对其进行内插,以创建一个由与盆地地震构造行为相关的正断层、地角和地堑组成的三维基底模型。总体评价认为,这项工作是 "回收 "遗留地震数据的一个范例,如今这些数据通常都已存档,但在当时却需要付出巨大的经济和采集努力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Tectonophysics
Tectonophysics 地学-地球化学与地球物理
CiteScore
4.90
自引率
6.90%
发文量
300
审稿时长
6 months
期刊介绍: The prime focus of Tectonophysics will be high-impact original research and reviews in the fields of kinematics, structure, composition, and dynamics of the solid arth at all scales. Tectonophysics particularly encourages submission of papers based on the integration of a multitude of geophysical, geological, geochemical, geodynamic, and geotectonic methods
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