基于卷积神经网络的电阻率测井肩床效应校正方法

IF 1.2 4区 地球科学 Q3 GEOSCIENCES, MULTIDISCIPLINARY
A. Leonenko, A. M. Petrov, K. Danilovskiy
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引用次数: 0

摘要

--肩床可能对电阻率测井响应有显著影响。这个问题在研究由具有对比性质的薄层组成的复杂地层时尤为突出。考虑肩床效应对测井信号的影响的不同方法是已知的,例如校正图、反褶积操作和使用先进的数值数据反演算法,这些算法允许考虑剖面的垂直不均匀性。使用反演工具包可以获得最佳结果,但该方法的高劳动和资源密集性限制了其广泛使用。反褶积方法没有这些缺点,但它没有考虑介质性质的径向变化对测量信号形状的影响。探讨了利用人工神经网络提高测井资料垂向分辨率的可能性。我们假设存在类似反褶积的变换,其中还考虑了介质性质在径向上的变化。在这种情况下,我们可以使用神经网络来找到它的近似值。该方法通过创建高频电磁测井(VIKIZ)测深工具的转换算法进行了验证,该工具在独联体国家广泛用于石油勘探。所开发的算法已在Fedorovskoe油田(纬度Ob’地区)的VIKIZ测井上进行了测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Method for Correction of Shoulder-Bed Effect on Resistivity Logs Based on a Convolutional Neural Network
—Shoulder beds may have a significant effect on the resistivity log responses. This problem is especially acute in studies of complex strata composed of thin beds with contrasting properties. Different approaches to taking account of the shoulder-bed effect on logging signals are known, such as correction charts, deconvolution operations, and using advanced algorithms of numerical data inversion, which allow one to consider the vertical inhomogeneity of the section. The best result is achieved using the inversion toolkit, but the high labor- and resource-intensiveness of the approach limits its widespread use. The deconvolution approach does not have these disadvantages, but it does not take into account the influence of radial changes in the medium properties on the shapes of measured signals.The possibility of using artificial neural networks (ANN) to increase the vertical resolution of the measured logging data is explored. We assume the existence of a deconvolution-like transformation in which change in the medium properties in the radial direction is also considered. In this case, we can find its approximation using a neural network. The approach is demonstrated by creating a transformation algorithm for the high-frequency electromagnetic logging (VIKIZ) sounding tool, which is widely used in the CIS countries for petroleum exploration. The developed algorithm has been tested on the VIKIZ logs from the Fedorovskoe oilfield (Latitudinal Ob’ region).
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来源期刊
Russian Geology and Geophysics
Russian Geology and Geophysics 地学-地球科学综合
CiteScore
2.00
自引率
18.20%
发文量
95
审稿时长
4-8 weeks
期刊介绍: The journal publishes original reports of theoretical and methodological nature in the fields of geology, geophysics, and geochemistry, which contain data on composition and structure of the Earth''s crust and mantle, describes processes of formation and general regularities of commercial mineral occurrences, investigations on development and application of geological-geophysical methods for their revealing. As to works of regional nature, accelerated publication are available for original papers on a variety of problems of comparative geology taking into account specific character of Siberia, adjacent Asian countries and water areas. The journal will also publish reviews, critical articles, chronicle of the most important scientific events, and advertisements.
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