MSSPN:利用多级分段拣选网络实现自动首到拣选

GEOPHYSICS Pub Date : 2024-02-02 DOI:10.1190/geo2023-0110.1
Hongtao Wang, Jiangshe Zhang, Xiaoli Wei, Chunxia Zhang, Lihong Long, Zhenbo Guo
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引用次数: 0

摘要

在地震数据处理过程中,挑选预叠加采集的初至(first arrival)是一个不可或缺的步骤。为了提高地震数据处理的效率,人们提出了一些基于深度学习的初至提取方法。然而,当将当前训练好的模型应用于与训练集有显著差异的数据时,结果往往不尽如人意。我们将这种预测情况称为交叉调查拣选。因此,进一步提高模型泛化能力以实现准确的交叉调查筛选已成为一个亟待解决的问题。为了解决这个问题,我们提出了一种名为 "多阶段分割-拣选网络(MSSPN)"的多阶段拣选方法,它将复杂的拣选任务分解为四个阶段。在第一阶段,我们提出了粗分段网络(CSN)来识别初到货物的大致趋势。其次,在第二阶段,我们提出了一种稳健的趋势估算方法,以进一步获得更精确的首到货物范围。第三,在第三阶段进行细化分割网络(RSN),以挑选高精度的初至。最后,我们提出了一种基于速度约束的后处理策略,以去除网络选取的异常值。大量实验表明,在交叉调查测试情况下,MSSPN 在准确性和稳定性指标方面优于目前最先进的方法。特别是在中值数据和低信噪比(SNR)数据的交叉调查情况下,MSSPN 的准确率分别达到 94.64% 和 89.74%。
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MSSPN: Automatic First Arrival Picking using Multi-Stage Segmentation-Picking Network
Picking the first arrival of prestack gathers is an indispensable step in seismic data processing. To enhance the efficiency of seismic data processing, some deep-learning-based methods for first arrival picking have been proposed. However, when applying currently trained models to data that significantly differs from the training set, the results are often suboptimal. We refer to this predictive scenario as cross-survey picking. Therefore, further improving model generalization for accurate cross-survey picking has become an urgent problem. To overcome the problem, we propose a multi-stage picking method named Multi-Stage Segmentation-Picking Network (MSSPN), which breaks down the complex picking task into four stages. In the first stage, we propose a Coarse Segmentation Network (CSN) to recognize a rough trend of first arrivals. Second, a robust trend estimation method is proposed in the second stage to further obtain a tighter range of first arrivals. Third, a Refined Segmentation Network (RSN) is conducted in the third stage to pick high-precision first arrivals. Finally, we propose a velocity constraint-based post-processing strategy to remove the outliers of network pickings. Extensive experiments show that MSSPN outperforms current state-of-the-art methods under the cross-survey test situation in terms of the metrics of accuracy and stability. Particularly, MSSPN achieves 94.64% and 89.74% accuracy under the cross-survey field cases of the median and low signal-noise ratio (SNR) data, respectively.
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