应用于井眼电阻率成像中正弦波自动检测的计算机视觉技术。与MSD方法的比较

IF 0.7 4区 地球科学 Q4 GEOSCIENCES, MULTIDISCIPLINARY Earth Sciences Research Journal Pub Date : 2023-08-16 DOI:10.15446/esrj.v27n2.101556
Jorge Alberto Leal, Luis Hernan Ochoa Gutierrez, Sergio Francisco Acosta Lenis
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引用次数: 0

摘要

本研究将计算机视觉技术应用于井眼电阻率成像,以建立一种替代均方倾角(MSD)处理的方法。MSD通常用于在井眼成像和倾角仪测井中自动检测正弦波和倾角。目前的建议是基于Gabor滤波器,形态变换,霍夫变换和聚类技术。在1012 m的图像中对MSD方法和计算机视觉方案进行了测试,MSD处理的误报率为7.986%,计算机视觉方法的误报率为0.879%。该方法试图模拟地质学家在进行图像解译时的行为;而不是像MSD那样在电阻率曲线之间建立相关性。没有特殊的计算机要求,可以直接应用于现场,快速获得井场倾角结果。该程序可以很容易地集成到测井装置和大多数商业井眼成像处理软件中。处理工作流是使用标准库用python开发的。
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Computer vision techniques applied to automatic detection of sinusoids in borehole resistivity imaging – A comparison with the MSD method
In this research computer vision techniques are applied to borehole resistivity imaging in order to establish an alternative procedure to the mean square dip (MSD) processing. The MSD is regularly applied to detect sinusoids and dips automatically in borehole imaging and dipmeter logs. The present proposal is based on Gabor’s filters, morphological transformations, Hough’s transform, and clustering techniques. The MSD method and the computer vision proposal were tested in 1012 m of images, showing 7.986% of false positives for the MSD processing and 0.879% for the computer vision approach. This methodology tries to emulate the geologists behavior when they make image interpretation; instead of making correlations between resistivity curves like the MSD does. There are no special computer requirements, and it can be applied directly in the field for quick well-site dip results. This procedure can be easily integrated into log units and most commercial borehole-imaging processing software. The processing workflow was developed in python using standard libraries.
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来源期刊
Earth Sciences Research Journal
Earth Sciences Research Journal 地学-地球科学综合
CiteScore
1.50
自引率
0.00%
发文量
0
审稿时长
>12 weeks
期刊介绍: ESRJ publishes the results from technical and scientific research on various disciplines of Earth Sciences and its interactions with several engineering applications. Works will only be considered if not previously published anywhere else. Manuscripts must contain information derived from scientific research projects or technical developments. The ideas expressed by publishing in ESRJ are the sole responsibility of the authors. We gladly consider manuscripts in the following subject areas: -Geophysics: Seismology, Seismic Prospecting, Gravimetric, Magnetic and Electrical methods. -Geology: Volcanology, Tectonics, Neotectonics, Geomorphology, Geochemistry, Geothermal Energy, ---Glaciology, Ore Geology, Environmental Geology, Geological Hazards. -Geodesy: Geodynamics, GPS measurements applied to geological and geophysical problems. -Basic Sciences and Computer Science applied to Geology and Geophysics. -Meteorology and Atmospheric Sciences. -Oceanography. -Planetary Sciences. -Engineering: Earthquake Engineering and Seismology Engineering, Geological Engineering, Geotechnics.
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