The interpolation and reconstruction of missing traces is a crucial step in seismic data processing, moreover it is also a highly ill-posed problem, especially for complex cases such as high-ratio random discrete missing, continuous missing and missing in fault-rich or salt body surveys. These complex cases are rarely mentioned in current works. To cope with complex missing cases, we propose Multi-Dimensional Adversarial GAN (MDA GAN), a novel 3-D GAN framework. It keeps anisotropy and spatial continuity of the data after 3D complex missing reconstruction using three discriminators. The feature stitching module is designed and embedded in the generator to retain more information of the input data. The Tanh cross entropy (TCE) loss is derived, which provides the generator with the optimal reconstruction gradient to make the generated data smoother and continuous. We experimentally verified the effectiveness of the individual components of the study and then tested the method on multiple publicly available data. The method achieves reasonable reconstructions for up to 95% of random discrete missing and 100 traces of continuous missing. In fault and salt body enriched surveys, MDA GAN still yields promising results for complex cases. Experimentally it has been demonstrated that our method achieves better performance than other methods in both simple and complex cases.https://github.com/douyimin/MDA_GAN
翻译:缺少的痕迹的内插和重建是地震数据处理中的一个关键步骤,此外,它也是一个极坏的问题,特别是对于高鼠随机随机离散失踪、在有缺陷或盐体调查中持续失踪和失踪等复杂案件,这些复杂案件在目前工作中很少提及。为了处理复杂的失踪案件,我们提议采用3DGAN这个新型的3D GAN框架,即多分解的Adversarial GAN(MDA Adversarial GAN)框架,在3D复杂失踪重建后,使用三个导体对数据保持厌食和空间连续性。功能缝合模块设计并嵌入发电机,以保存更多输入数据的信息。Tanh十字环流(TCE)损失是推断出来的,为生成者提供最佳的重建梯度,使生成的数据更加平稳和连续。我们实验的单个组成部分的有效性,然后用多种公开数据测试方法。该方法实现了高达95%的随机离散失踪和100个连续失踪痕迹的合理重建。在断层和盐体调查中,MDAGA/GA的缝合体损失是得出更好的业绩结果。在复杂案例中,MDAGA/GA还展示了比简单的GA/MDA/MDA的复杂案例都展示了更好的业绩结果。