FAULT-TRANSFORMER: AN AUTOMATIC FAULT DETECTION ALGORITHM ON SEISMIC IMAGES USING A TRANSFORMER ENHANCED NEURAL NETWORK

Tong Zhou, Yue Ma, Yuhan Sui, Nasher M. AlBinHassan
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Abstract

Seismic fault detection is a key step in seismic interpretation and reservoir characterization that often requires a large amount of human labor and interpretation time. Therefore, automatic seismic fault detection is critical for improving the efficiency of seismic data processing and interpretation. Existing AI methods are mostly based on convolutional neural networks (CNNs) with a U-shaped encoder-decoder structure, known as the U-net. However, the convolution is limited in modeling long-range correlative features. Instead, Transformers, utilizing self-attention mechanisms, avoid the local nature of the convolution, which has the potential to extract long-distance correlations. Transformers are proven to perform well in natural language processing, image classification, and segmentation tasks in precision and recall. Here, we develop a new deep neural network with transformers and a U-net-like structure: Fault-Transformer, to perform the fault detection task. The new network outperforms traditional U-net in the application with synthetic data sets.
故障-变压器:使用变压器增强神经网络的地震图像故障自动检测算法
地震断层探测是地震解释和储层特征描述的关键步骤,通常需要大量的人力和解释时间。因此,地震断层自动检测对于提高地震数据处理和解释效率至关重要。现有的人工智能方法大多基于具有 U 形编码器-解码器结构(即 U 网)的卷积神经网络(CNN)。然而,卷积在模拟远距离相关特征方面受到限制。相反,变换器利用自我注意机制,避免了卷积的局部性,从而有可能提取长距离相关性。事实证明,变换器在自然语言处理、图像分类和分割任务中的精确度和召回率都表现出色。在此,我们开发了一种具有变压器和类 U 网结构的新型深度神经网络:故障变换器,来执行故障检测任务。在合成数据集的应用中,新网络的性能优于传统的 U-net 网络。
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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