Near-Surface Seismic Arrival Time Picking with Transfer and Semi-Supervised Learning

IF 4.9 2区 地球科学 Q1 GEOCHEMISTRY & GEOPHYSICS
Ngo Nghi Truyen Huynh, Roland Martin, Thomas Oberlin, Bastien Plazolles
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Abstract

The understanding of subsurface information on the Earth is crucial in numerous fields such as economics of oil and gas, geophysical exploration, archaeology and hydro-geophysics, particularly in a context of climate change. The methodology consists in reconstructing the seismic velocity model of the near surface, that contains information about the basement structure, by solving the inverse problem and resolving the related complex nonlinear systems with the data collected from seismic experiments and measurements. In the last few years, many deep neural networks have been proposed to simplify the seismic inversion problem based, for instance, on automatic differentiation of the adjoint operator, or on automatic arrival time picking. However, such approaches require a large amount of labeled training data, which are hardly available in real applications. We present here a deep learning approach for arrival time picking, aimed to deal with unlabeled data. The main building blocks are transfer learning, as well as a semi-supervised learning strategy where the pseudo-labels are greedily computed with robust regression, and classification algorithms. The hybrid method showcases very high scores when evaluating on synthetic data, and its application to a real dataset containing a limited amount of labeled data shows the computational efficiency and very accurate results.

Abstract Image

基于传递和半监督学习的近地表地震到达时间选取
了解地球上的地下信息在许多领域都是至关重要的,如石油和天然气经济学、地球物理勘探、考古学和水文地球物理学,特别是在气候变化的背景下。该方法是利用地震实验和测量数据,通过求解反问题和求解相关的复杂非线性系统,重建包含基底结构信息的近地表地震速度模型。在过去的几年里,人们提出了许多深度神经网络来简化地震反演问题,例如,基于伴随算子的自动微分,或者基于自动到达时间选择。然而,这种方法需要大量的标记训练数据,而这些数据在实际应用中很难获得。我们在这里提出了一种深度学习方法来选择到达时间,旨在处理未标记的数据。主要的构建模块是迁移学习,以及半监督学习策略,其中伪标签是用鲁棒回归贪婪地计算的,以及分类算法。混合方法在对合成数据进行评估时显示出很高的分数,并将其应用于包含有限数量标记数据的真实数据集,显示出计算效率和非常准确的结果。
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来源期刊
Surveys in Geophysics
Surveys in Geophysics 地学-地球化学与地球物理
CiteScore
10.00
自引率
10.90%
发文量
64
审稿时长
4.5 months
期刊介绍: Surveys in Geophysics publishes refereed review articles on the physical, chemical and biological processes occurring within the Earth, on its surface, in its atmosphere and in the near-Earth space environment, including relations with other bodies in the solar system. Observations, their interpretation, theory and modelling are covered in papers dealing with any of the Earth and space sciences.
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