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首页> 外文期刊>Geophysics: Journal of the Society of Exploration Geophysicists >Waveform inversion using a back-propagation algorithm and a Huber function norm
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Waveform inversion using a back-propagation algorithm and a Huber function norm

机译:使用反向传播算法和Huber函数范数的波形反演

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Waveform inversion faces difficulties when applied to real seismic data, including the existence of many kinds of noise. The l(1)-norm is more robust to noise with outliers than the least-squares method. Nevertheless, the least-squares method is preferred as an objective function in many algorithms because the gradient of the l(1)-norm has a singularity when the residual becomes zero. We propose a complex-valued Huber function for frequency-domain waveform inversion that combines the l(2)-norm (for small residuals) with the l(1)-norm (for large residuals). We also derive a discretized formula for the gradient of the Huber function. Through numerical tests on simple synthetic models and Marmousi data, we find the Huber function is more robust to outliers and coherent noise. We apply our waveform-inversion algorithm to field data taken from the continental shelf under the East Sea in Korea. In this setting, we obtain a velocity model whose synthetic shot profiles are similar to the real seismic data.
机译:将波形反演应用于实际地震数据时会遇到困难,包括存在多种噪声。与最小二乘法相比,l(1)范数对离群值的噪声更鲁棒。尽管如此,在许多算法中,最小二乘法还是首选的目标函数,因为当残差变为零时,l(1)-范数的梯度具有奇异性。我们提出用于频域波形反演的复数值Huber函数,该函数将l(2)-范数(对于小的残差)与l(1)-范数(对于大的残差)组合在一起。我们还导出了Huber函数梯度的离散公式。通过对简单的合成模型和Marmousi数据进行数值测试,我们发现Huber函数对于离群值和相干噪声更加健壮。我们将波形反演算法应用于从韩国东海下面的大陆架获取的现场数据。在这种情况下,我们获得了一个速度模型,其合成弹丸剖面与真实地震数据相似。

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