首页> 外文期刊>Journal of geophysical research. Solid earth: JGR >LLNL-G3Dv3: Global P wave tomography model for improved regional and teleseismic travel time prediction
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LLNL-G3Dv3: Global P wave tomography model for improved regional and teleseismic travel time prediction

机译:LLNL-G3Dv3:全球P波层析成像模型,用于改进区域和远震旅行时间预测

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We develop a global-scale P wave velocity model (LLNL-G3Dv3) designed to accurately predict seismic travel times at regional and teleseismic distances simultaneously. The model provides a new image of Earth's interior, but the underlying practical purpose of the model is to provide enhanced seismic event location capabilities. The LLNL-G3Dv3 model is based on ~2.8 million P and Pn arrivals that are re-processed using our global multiple-event locator called Bayesloc. We construct LLNL-G3Dv3 within a spherical tessellation based framework, allowing for explicit representation of undulating and discontinuous layers including the crust and transition zone layers. Using a multiscale inversion technique, regional trends as well as fine details are captured where the data allow. LLNL-G3Dv3 exhibits large-scale structures including cratons and superplumes as well numerous complex details in the upper mantle including within the transition zone. Particularly, the model reveals new details of a vast network of subducted slabs trapped within the transition beneath much of Eurasia, including beneath the Tibetan Plateau. We demonstrate the impact of Bayesloc multiple-event location on the resulting tomographic images through comparison with images produced without the benefit of multiple-event constraints (single-event locations). We find that the multiple-event locations allow for better reconciliation of the large set of direct P phases recorded at 0-97 distance and yield a smoother and more continuous image relative to the single-event locations. Travel times predicted from a 3-D model are also found to be strongly influenced by the initial locations of the input data, even when an iterative inversion/relocation technique is employed.
机译:我们开发了一个全球规模的P波速度模型(LLNL-G3Dv3),旨在精确地同时预测区域和远程地震距离下的地震传播时间。该模型提供了地球内部的新图像,但是该模型的基本实际目的是提供增强的地震事件定位功能。 LLNL-G3Dv3模型基于约280万个P和Pn到来,并使用我们称为Bayesloc的全球多事件定位器对其进行了重新处理。我们在基于球面细分的框架内构造LLNL-G3Dv3,以明确表示起伏和不连续的层,包括地壳和过渡带层。使用多尺度反演技术,可以在数据允许的范围内捕获区域趋势以及精细的细节。 LLNL-G3Dv3展示了包括克拉通和超羽的大规模结构,以及上地幔中包括过渡带内的众多复杂细节。特别是,该模型揭示了陷于欧亚大陆大部分地区(包括青藏高原以下)过渡带中的巨大俯冲板块网络的新细节。我们通过与没有多事件约束(单事件位置)的好处所产生的图像进行比较,证明了贝叶斯洛克多事件位置对所得断层图像的影响。我们发现,多事件位置可以更好地协调记录在0-97距离处的大量直接P相,并且相对于单事件位置,可以产生更平滑,更连续的图像。即使使用迭代反转/重定位技术,也发现从3-D模型预测的行进时间受输入数据的初始位置强烈影响。

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