卷积神经网络在地电学反问题中的应用

IF 0.9 4区 地球科学 Q4 GEOCHEMISTRY & GEOPHYSICS
M. I. Shimelevich, E. A. Rodionov, I. E. Obornev, E. A. Obornev
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引用次数: 0

摘要

摘要:神经网络(neural networks, NNs)已成功地用于求解地球物理学中的逆问题和其他问题。本工作是一组作者的一系列工作的延续,其目的是在构建作者的卷积神经网络的基础上,提高求解地电非线性逆三维问题的NN方法的效率。在经典MLP神经网络训练之前,该网络包括许多附加的特殊变换(数据压缩、未知背景环境影响的抑制等),并适应正在解决的逆问题。这使我们能够正式地,排除人为因素,解决大尺寸地电的逆问题,而无需指定基于在尺寸超过网络训练区域尺寸的区域中测量的数据的第一近似。反演速度为几十秒,不依赖于数据的物理维度(2D或3D)。用训练好的神经网络找到的逆问题的解,如有必要,可以用随机搜索方法加以改进。给出了利用模型和现场资料求解三维地电问题的数值结果,证实了所提出的开发参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Application of Convolutional Neural Networks in Inverse Problems of Geoelectrics

Application of Convolutional Neural Networks in Inverse Problems of Geoelectrics

Abstract—Neural networks (NNs) are successfully used to solve inverse and other problems in geophysics. The aim of this work, which is a continuation of a series of works by a group of authors, is to improve the efficiency of the NN method for solving nonlinear inverse 3D problems of geoelectrics, based on the construction of the author’s convolutional neural network. The network includes a number of additional special transformations (data compression, suppression of the influence of an unknown background environment, etc.) preceding the training of a classical MLP neural network and adapted to the inverse problem that is being solved. This allows us to formally, excluding the human factor, solve inverse problems of geoelectrics of large dimensions without specifying a first approximation based on data measured in areas whose dimensions exceed the dimensions of the network training area. The inversion speed is a few tens of seconds and does not depend on the physical dimensionality (2D or 3D) of the data. The solution to the inverse problem found using a trained neural network can, if necessary, be refined using a random search method. Numerical results of solving 3D geoelectric problems on model and field data are presented, confirming the stated development parameters.

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来源期刊
Izvestiya, Physics of the Solid Earth
Izvestiya, Physics of the Solid Earth 地学-地球化学与地球物理
CiteScore
1.60
自引率
30.00%
发文量
60
审稿时长
6-12 weeks
期刊介绍: Izvestiya, Physics of the Solid Earth is an international peer reviewed journal that publishes results of original theoretical and experimental research in relevant areas of the physics of the Earth''s interior and applied geophysics. The journal welcomes manuscripts from all countries in the English or Russian language.
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