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    基于DAMFU-Net模型的三维地震断层识别方法

    3D seismic fault identification based on DAMFU-Net

    • 摘要: 地震断层识别在油气勘探与开发中具有重要作用,但目前的断层识别方法在处理复杂地震数据时,还面临多尺度特征覆盖不足、长距离连续性建模不充分以及噪声干扰等问题。针对这些问题,提出了一种基于双注意力多尺度融合U-Net (DAMFU-Net)模型的三维地震断层识别方法。首先,将多尺度特征融合模块作为基础特征提取器,通过多分支结构初步捕获地震数据中不同规模的断层特征,为后续地震资料处理提供丰富的多尺度特征表示;然后,利用空洞融合模块进一步扩展感受野,通过多扩张率卷积挖掘长程空间依赖关系,有效建模断层结构的全局连续性特征;最后,在前两个模块提取的多尺度、长程特征数据基础上,利用双注意力并行机制在跳跃连接中实现进一步的特征筛选与融合,通过在通道和空间维度上的协同注意力计算,提升模型对断层特征的敏感性和抗噪声干扰能力。实验结果表明,与目前主流的4种断层识别模型相比,DAMFU-Net模型比MARU-Net模型识别断层的准确度提高了1.66%,且展现出良好的抗噪声性能,该方法在F3和Kerry-3 D地震数据上的应用结果证明了基于DAMFU-Net模型的三维地震断层识别方法具有良好的泛化性能。

       

      Abstract: Seismic fault identification is critical for hydrocarbon exploration and development. However, existing fault identification methods still encounter several challenges when processing complex seismic data, including inadequate multi-scale feature coverage, insufficient modeling of long-range fault continuity, and susceptibility to noise interference. To address these limitations, a 3D seismic fault identification model based on dual-attention multi-scale fusion U-Net (DAMFU-Net) was proposed. Firstly, the multi-scale feature fusion module served as the basic feature extractor. Through a multi-branch structure, it initially captured the features of faults with different scales in the seismic data, providing rich multi-scale feature representations for subsequent processing. Furthermore, a dilated fusion module further expanded the receptive field on this basis. Through multi-expansion rate convolution, it explored long-range spatial dependencies and effectively modelled the global continuity characteristics of the fault structure. Finally, based on the multi-scale and long-range features extracted in the first two modules, the dual-attention parallel mechanism achieved further feature selection and fusion in the skip connections. Through the collaborative attention calculation in the channel and spatial dimensions, it enhanced the model’s sensitivity to fault features and its ability to resist noise interference. The experimental results show that, compared with the four currently mainstream methods for fault identification, the DAMFU-Net model has an accuracy improvement of 1.66% over the MARU-Net model in identifying fractures. It also demonstrates excellent noise resistance performance. Experimental verification on the F3 and Kerry-3D datasets has shown that this method has good generalization performance.

       

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