Seismic Facies Classification Algorithm Based on the EarthTransNet

Haoran Liang, Yanxin Yang, Liang Shi, Qingqiang Wu
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Abstract

Seismic exploration is an interdisciplinary subject. Combined with artificial intelligence, it can automatically identify seismic dips and distinguish faults. The application of Deep Neural Network can reduce the error of manual recognition and improve the efficiency of recognition. Most seismic exploration datasets lack labels, so the supervised learning algorithm cannot be used to extract image features in order to obtain better seismic facies classification effect. Due to the proposal of the F3 dataset which contains real labels in 2019, the supervised learning algorithm can be used on 3D seismic data to take less time and get better prediction results. It is an effective means of evaluation. However, the classification effect of some deep learning models is not satisfactory, especially the neglect of underlying features and the misclassification of small categories on the F3 dataset. Therefore, we apply firstly the TransUNET to the F3 dataset, and modify the input method to 3D volume data, the Transformer layers are added at the end of the CNN layers to collect deep and potential information. The output of the decoder needs to be integrated in the X, Y and Z directions to get the final result. Finally, we propose EarthTransNet, which is applied to the seismic dataset to obtain higher accuracy and better boundary characterization ability.
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基于EarthTransNet的地震相分类算法
地震勘探是一门交叉学科。结合人工智能,可以自动识别地震倾角,识别断层。深度神经网络的应用可以减少人工识别的误差,提高识别效率。大多数地震勘探数据集缺乏标签,因此无法使用监督学习算法提取图像特征以获得更好的地震相分类效果。由于2019年提出了包含真实标签的F3数据集,因此可以将监督学习算法用于三维地震数据,从而节省时间并获得更好的预测结果。它是一种有效的评价手段。然而,一些深度学习模型的分类效果并不令人满意,特别是在F3数据集上忽略了底层特征和小类别的错误分类。因此,我们首先将TransUNET应用于F3数据集,并将输入法修改为3D体数据,在CNN层的最后添加Transformer层,收集深层和潜在信息。解码器的输出需要在X, Y和Z方向上进行集成才能得到最终结果。最后,我们提出了EarthTransNet,将其应用于地震数据集,以获得更高的精度和更好的边界表征能力。
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