论文标题
基于光谱间隙的地震调查设计
Spectral Gap-Based Seismic Survey Design
论文作者
论文摘要
在具有挑战性的沉积盆地和储层中进行地震成像需要获取,加工和成像大量数据(数十个trabytes)。为了减少获取数据到产生地下图像的时间,已经开发和实施了基于压缩感应,低级别矩阵恢复和随机抽样的新型采集系统。这些方法使从业者可以从大幅减少的场样本中实现密集的波场重建。 但是,设计适合这种新样本范式的采购调查在石油,天然气和地热探索中仍然是重要且具有挑战性的作用。标准行业硬件很难实现在低级矩阵恢复和压缩传感文献中研究的典型随机设计。出于实际目的,需要在随机和可实现的样本之间妥协。在本文中,我们提出了一种确定性和计算廉价工具,以减轻调查部署和大规模优化之前的随机获取设计。我们考虑通用和确定性矩阵的完成在地震学的背景下导致的结果,在这种情况下,源接收器布局的两部分图表示允许各自的光谱差距充当波场重建的质量度量。我们提供了现实的场景,以证明光谱差距作为灵活的工具的实用性,可以通过低级别和稀疏的信号恢复将其纳入现有的调查设计工作流程中,以成功地进行地震数据采集。
Seismic imaging in challenging sedimentary basins and reservoirs requires acquiring, processing, and imaging very large volumes of data (tens of terabytes). To reduce the cost of acquisition and the time from acquiring the data to producing a subsurface image, novel acquisition systems based on compressive sensing, low-rank matrix recovery, and randomized sampling have been developed and implemented. These approaches allow practitioners to achieve dense wavefield reconstruction from a substantially reduced number of field samples. However, designing acquisition surveys suited for this new sampling paradigm remains a critical and challenging role in oil, gas, and geothermal exploration. Typical random designs studied in the low-rank matrix recovery and compressive sensing literature are difficult to achieve by standard industry hardware. For practical purposes, a compromise between stochastic and realizable samples is needed. In this paper, we propose a deterministic and computationally cheap tool to alleviate randomized acquisition design, prior to survey deployment and large-scale optimization. We consider universal and deterministic matrix completion results in the context of seismology, where a bipartite graph representation of the source-receiver layout allows for the respective spectral gap to act as a quality metric for wavefield reconstruction. We provide realistic scenarios to demonstrate the utility of the spectral gap as a flexible tool that can be incorporated into existing survey design workflows for successful seismic data acquisition via low-rank and sparse signal recovery.