基于深度学习的面波频散和接收器函数联合反演

Feiyi Wang, Xiaodong Song, Jiangtao Li
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摘要

我们提出了一种基于多标签卷积神经网络和递归神经网络的深度学习(DL)方法,以从射线波色散和接收函数的联合反演中推导出 VS 模型。我们使用基于样条线的方法生成合成模型,而不是直接使用现有模型来建立训练数据集,从而提高了该方法的泛化能力。与通常设定固定 VP/VS 比值的传统方法不同,我们的方法充分利用了 DL 强大的数据挖掘能力,在假设不同 VP/VS 比值的情况下反演 VS 模型。我们专门设计了一个损失函数,该函数关注模型空间的关键特征,例如莫霍的形状和深度。合成测试表明,所提出的方法准确、快速。在青藏高原东南边缘的应用显示,其结果与之前的 P 约束联合反演结果一致,表明所提出的方法是可靠和稳健的。
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Joint Inversion of Surface-Wave Dispersions and Receiver Functions Based on Deep Learning
We proposed a deep learning (DL) method to derive VS models from joint inversion of Rayleigh-wave dispersions and receiver functions, which is based on multilabel convolutional neural network and recurrent neural network. We used a spline-based approach to generate synthetic models instead of directly using existing models to build the training data set, which improves the generalization of the method. Unlike the traditional methods, which usually set a fixed VP/VS ratio, our method makes full use of the powerful data mining ability of DL to invert the VS models assuming different VP/VS ratios. A loss function is specially designed that focuses on key features of the model space, for example, the shape and depth of Moho. Synthetic tests demonstrate that the proposed method is accurate and fast. Application to the southeast margin of the Tibetan Plateau shows results consistent with the previous joint inversion with P constraints, indicating the proposed method is reliable and robust.
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