NEURAL NETWORK-BASED APPROACH TO RESISTIVITY LOGS EXPRESS SIMULATION IN REALISTIC MODELS OF COMPLEX TERRIGENOUS SEDIMENTS

Q4 Earth and Planetary Sciences
A. M. Petrov, K. Danilovskiy, K. Sukhorukova, A. Leonenko, A. A. Lapkovskaya
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引用次数: 4

Abstract

The article proposes a new algorithmic approach to resistivity logs simulation based on convolutional neural networks wich allows constructing algorithms for solving forward problems for specific logging tools in detailed models of near-wellbore space with thin layers, accounting for radial resistivity changes, borehole wall irregularities and drilling fluid displacement by the logging tool. Experimental algorithms for expressmodeling for three common Russian galvanic and induсtion logging methods in two-dimensional models of the near-wellbore space have been implemented based on the proposed approach. Logs simulation using the developed neural network algorithms is multi pletimes faster than using numerical solvers. The proposed solutions open up possibilities to use more sophisticated basic geoelectric models of the near-wellbore space. The use of models adequate in complexity to the actual target geological objects will increase the reliability of interpretation results of resistivity logs measured in complex geological conditions.
基于神经网络的电阻率测井方法在复杂陆相沉积物真实模型中的表达模拟
本文提出了一种基于卷积神经网络的电阻率测井模拟新算法,该算法允许构建算法来解决特定测井工具在薄层近井空间详细模型中的正演问题,考虑测井工具的径向电阻率变化、井壁不规则性和钻井液驱替。在该方法的基础上,实现了三种常见的俄罗斯电磁感应测井方法在近井空间二维模型中的表达建模实验算法。使用开发的神经网络算法进行日志模拟比使用数值求解器快数倍。提出的解决方案为使用更复杂的近井空间基本地电模型开辟了可能性。采用与实际目标地质对象足够复杂的模型,可以提高复杂地质条件下电阻率测井解释结果的可靠性。
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
Geology and Mineral Resources of Siberia
Geology and Mineral Resources of Siberia Earth and Planetary Sciences-Geology
CiteScore
0.30
自引率
0.00%
发文量
23
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