论文标题
MSSPN:使用多阶段分割选择网络自动首次到达选择
MSSPN: Automatic First Arrival Picking using Multi-Stage Segmentation Picking Network
论文作者
论文摘要
挑选Prestack Gathers的第一次到达时间被称为首次到达时间(FAT)选择,这是地震数据处理中必不可少的一步,过去主要是手动解决的。随着地震数据收集的当前密度,手动采摘效率无法满足实际需求。因此,近几十年来,自动采摘方法已经大大开发出来,尤其是基于深度学习的方法。但是,很少有目前的监督基于深度学习的方法可以避免对标记样品的依赖。此外,由于收集数据是一组与自然图像大不相同的信号,因此当前方法在低信号与噪声比(SNR)的情况下很难解决脂肪采摘问题。在本文中,对于Hard Rock地震收集数据,我们提出了一个多阶段分割拾取网络(MSSPN),该网络解决了跨工作地点的概括问题以及在低SNR的情况下的采摘问题。在MSSPN中,有四个子模型可以模拟手动采摘处理,从而将其从粗糙到细小的四个阶段。具有不同质量的七个现场数据集的实验表明,我们的MSSPN的表现要优于大幅度的基准。尤其是,在中等和高的SNR的情况下,我们的方法可以实现超过90 \%的精确采摘,甚至精细模型也可以实现88 \%的准确选择数据,并获得88 \%的数据。
Picking the first arrival times of prestack gathers is called First Arrival Time (FAT) picking, which is an indispensable step in seismic data processing, and is mainly solved manually in the past. With the current increasing density of seismic data collection, the efficiency of manual picking has been unable to meet the actual needs. Therefore, automatic picking methods have been greatly developed in recent decades, especially those based on deep learning. However, few of the current supervised deep learning-based method can avoid the dependence on labeled samples. Besides, since the gather data is a set of signals which are greatly different from the natural images, it is difficult for the current method to solve the FAT picking problem in case of a low Signal to Noise Ratio (SNR). In this paper, for hard rock seismic gather data, we propose a Multi-Stage Segmentation Pickup Network (MSSPN), which solves the generalization problem across worksites and the picking problem in the case of low SNR. In MSSPN, there are four sub-models to simulate the manually picking processing, which is assumed to four stages from coarse to fine. Experiments on seven field datasets with different qualities show that our MSSPN outperforms benchmarks by a large margin.Particularly, our method can achieve more than 90\% accurate picking across worksites in the case of medium and high SNRs, and even fine-tuned model can achieve 88\% accurate picking of the dataset with low SNR.