ISSN 1004-4140
    CN 11-3017/P

    基于ResU-net网络和迭代迁移学习的断层自动识别技术及应用—以西湖凹陷A构造为例

    Automatic Fault Identification Technology and Application Based on ResU-Net Network and Iterative Transfer Learning: A Case Study of Structure A in Xihu Sag

    • 摘要: 深度学习的突破性进展为地震资料断层自动识别提供了新模式,并取得了显著成效,但在实际应用中仍存在跨工区模型泛化能力弱、合成样本与实际断层差异大且类型有限、断层识别效果不及预期等问题。为此,将应用效果较好的ResNet和Unet相结合,构建更为优秀的ResU-net网络,并利用合成数据集进行预训练,获得模型初始参数。依据预训练模型计算的断层概率体和研究区实际断层发育特征解释人工样本进行迁移学习,优化网络参数。考虑到人工解释的主观性,基于第1次迁移学习结果和断层发育模式对人工样本进行更新和优化,并对部分未识别出的断层增加人工样本,进行迭代迁移学习,如此反复,直到识别结果满足需求。基于该方法对西湖凹陷A构造的断裂进行自动识别,获得了高精度的结果,并重新梳理了A构造的断裂发育特征,指出背斜翼部相对于背斜核部断层级别更高,油气运移条件更好,是构造-岩性和岩性勘探的有利方向,支撑3口探井上钻并获得大型商业发现,证实了相关方法的可靠性。

       

      Abstract: Deep learning provides a novel approach for automatic fault recognition in seismic data, and has achieved remarkable results. However, several challenges remain in practical applications, including weak cross-regional generalization capability, large discrepancies between synthetic samples and actual faults, limited diversity of synthetic sample types, and occasional unexpected fault-recognition results. To address these issues, a modified ResU-Net network was developed by combining the strengths of ResNet and U-Net. The model’s initial parameters were obtained through pretraining on a synthetic dataset. Using the fault probability volumes calculated by the pretrained model and considering the actual fault characteristics in the study area, artificial samples were interpreted for transfer learning, and the network parameters were optimized. Given the subjectivity of manual interpretation, these artificial samples were updated and refined based on the first transfer learning results and the observed fault development patterns. Additional artificial samples were created at locations of previously unrecognized faults, and iterative transfer learning was performed until the results met the desired accuracy. Using this approach, faults in Structure A of the Xihu Sag were automatically identified with high precision. The fault development characteristics of Structure A were reinterpreted, revealing that faults in the anticlinal wings have higher grades than those in the anticlinal core and that hydrocarbon migration conditions are more favorable in these areas. This finding highlights a promising direction for structure-lithology and lithology exploration. The method supported the drilling of three exploration wells, all of which resulted in large-scale commercial discoveries, confirming its reliability.

       

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