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Using artificial neural networks to invert 2D DC resistivity imaging data for high resistivity contrast regions: A MATLAB application

机译:使用人工神经网络对高电阻率对比区域的2D直流电阻率成像数据进行反演:MATLAB应用

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摘要

MATLAB is a high-level matrix/array language with control flow statements and functions. MATLAB has several useful toolboxes to solve complex problems in various fields of science, such as geophysics. In geophysics, the inversion of 2D DC resistivity imaging data is complex due to its non-linearity, especially for high resistivity contrast regions. In this paper, we investigate the applicability of MATLAB to design, train and test a newly developed artificial neural network in inverting 2D DC resistivity imaging data. We used resilient propagation to train the network. The model used to produce synthetic data is a homogeneous medium of 100 Ωm resistivity with an embedded anomalous body of 1000Ωm. The location of the anomalous body was moved to different positions within the homogeneous model mesh elements. The synthetic data were generated using a finite element forward modeling code by means of the RES2DM0D. The network was trained using 21 datasets and tested on another 16 synthetic datasets, as well as on real field data. In field data acquisition, the cable covers 120 m between the first and the last take-out, with a 3 m x-spacing. Three different electrode spacings were measured, which gave a dataset of 330 data points. The interpreted result shows that the trained network was able to invert 2D electrical resistivity imaging data obtained by a Wenner-Schlumberger configuration rapidly and accurately.
机译:MATLAB是一种具有控制流语句和函数的高级矩阵/数组语言。 MATLAB有几个有用的工具箱,可以解决地球科学等各个科学领域的复杂问题。在地球物理学中,二维DC电阻率成像数据的反演由于其非线性而复杂,尤其是对于高电阻率对比区域。在本文中,我们研究了MATLAB在反演二维DC电阻率成像数据中设计,训练和测试新开发的人工神经网络的适用性。我们使用弹性传播来训练网络。用于产生合成数据的模型是电阻率为100Ωm的均质介质,埋入的异常体为1000Ωm。异常物体的位置被移动到均匀模型网格元素内的不同位置。通过RES2DM0D使用有限元正向建模代码生成合成数据。该网络使用21个数据集进行了训练,并在另外16个综合数据集以及实际数据上进行了测试。在现场数据采集中,电缆在第一个和最后一个输出之间覆盖120 m,x间距为3 m。测量了三个不同的电极间距,这提供了330个数据点的数据集。解释结果表明,经过训练的网络能够快速,准确地反转通过Wenner-Schlumberger配置获得的2D电阻率成像数据。

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