Wavefield solutions from machine learned functions constrained by the Helmholtz equation

Tariq Alkhalifah , Chao Song , Umair bin Waheed , Qi Hao
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引用次数: 30

Abstract

Solving the wave equation is one of the most (if not the most) fundamental problems we face as we try to illuminate the Earth using recorded seismic data. The Helmholtz equation provides wavefield solutions that are dimensionally reduced, per frequency, compared to the time domain, which is useful for many applications, like full waveform inversion. However, our ability to attain such wavefield solutions depends often on the size of the model and the complexity of the wave equation. Thus, we use here a recently introduced framework based on neural networks to predict functional solutions through setting the underlying physical equation as a loss function to optimize the neural network (NN) parameters. For an input given by a location in the model space, the network learns to predict the wavefield value at that location, and its partial derivatives using a concept referred to as automatic differentiation, to fit, in our case, a form of the Helmholtz equation. We specifically seek the solution of the scattered wavefield considering a simple homogeneous background model that allows for analytical solutions of the background wavefield. Providing the NN with a reasonable number of random points from the model space will ultimately train a fully connected deep NN to predict the scattered wavefield function. The size of the network depends mainly on the complexity of the desired wavefield, with such complexity increasing with increasing frequency and increasing model complexity. However, smaller networks can provide smoother wavefields that might be useful for inversion applications. Preliminary tests on a two-box-shaped scatterer model with a source in the middle, as well as, the Marmousi model with a source at the surface demonstrate the potential of the NN for this application. Additional tests on a 3D model demonstrate the potential versatility of the approach.

由亥姆霍兹方程约束的机器学习函数的波场解
当我们试图利用记录的地震数据来照亮地球时,求解波动方程是我们面临的最基本(如果不是最基本)的问题之一。与时域相比,亥姆霍兹方程提供了每频率维数降低的波场解,这对许多应用都很有用,比如全波形反演。然而,我们获得这种波场解的能力往往取决于模型的大小和波动方程的复杂程度。因此,我们在这里使用最近引入的基于神经网络的框架,通过将底层物理方程设置为损失函数来优化神经网络(NN)参数,从而预测函数解。对于模型空间中给定位置的输入,网络学习预测该位置的波场值及其偏导数,使用称为自动微分的概念,在我们的情况下,拟合亥姆霍兹方程的一种形式。我们特别寻求散射波场的解,考虑一个简单的均匀背景模型,允许背景波场的解析解。从模型空间中为神经网络提供合理数量的随机点,最终将训练出一个完全连接的深度神经网络来预测散射波场函数。网络的大小主要取决于所需波场的复杂性,这种复杂性随着频率的增加和模型复杂性的增加而增加。然而,较小的网络可以提供更平滑的波场,这可能对反演应用有用。在中间有源的两盒形散射体模型以及表面有源的Marmousi模型上进行的初步测试证明了神经网络在这种应用中的潜力。在3D模型上的额外测试证明了该方法的潜在多功能性。
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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CiteScore
4.20
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