基于注意力神经网络的三维地震数据河道检测方法

    River channel detection from 3D seismic data based on the attention mechanism of neural networks

    • 摘要: 河道砂体检测在油气勘探、沉积物输运和古河流地貌分析等研究中发挥着重要作用 ,但由于人工识别河道耗时费力且主观性强,基于相干体、曲率等属性的传统河道检测方法易受噪声及断层影响。深度学习凭借其强大的特征提取能力和高效的特征表达能力,已广泛地应用于地震数据处理中。本文提出了一种基于注意力机制卷积神经网络的三维地震数据河道检测方法,使用人工合成地震数据以及河道标签对构建的网络进行训练,训练后的网络能够有效检测测试数据与实际三维地震数据中的河道,该方法对于实际生产工作中实现高效、自动化的河道检测具有重要意义。

       

      Abstract: The river channel sand detection can provide critical insights for hydrocarbon exploration, sediment transport, and paleofluvial geomorphology analysis. However, manual identification of river channels is time-consuming, cumbersome, and subjective, while traditional river channel detection methods based on attributes such as coherence cube and curvature are susceptible to noise and faults. In contrast, owing to powerful feature extraction and efficient feature representation capabilities, deep learning has been widely applied in seismic data processing. This paper proposed a river channel detection method using 3D seismic data and attention mechanisms in convolutional neural network (CNN). The method trained the constructed network using synthetic seismic data and river channel labels, achieving effective detection of river channels from test data and actual 3D seismic data. The proposed method is of great significance for achieving efficient and automated river channel detection during actual production.

       

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