大地基准
地震学
地震破裂
地质学
地震模拟
断层(地质)
序列(生物学)
地震灾害
大地测量学
遗传学
生物
作者
Taufiq Taufiqurrahman,Alice‐Agnes Gabriel,Duo Li,Thomas Ulrich,Bo Li,Sara Carena,Alessandro Verdecchia,František Gallovič
出处
期刊:Nature
[Springer Nature]
日期:2023-05-24
卷期号:618 (7964): 308-315
被引量:23
标识
DOI:10.1038/s41586-023-05985-x
摘要
The observational difficulties and the complexity of earthquake physics have rendered seismic hazard assessment largely empirical. Despite increasingly high-quality geodetic, seismic and field observations, data-driven earthquake imaging yields stark differences and physics-based models explaining all observed dynamic complexities are elusive. Here we present data-assimilated three-dimensional dynamic rupture models of California's biggest earthquakes in more than 20 years: the moment magnitude (Mw) 6.4 Searles Valley and Mw 7.1 Ridgecrest sequence, which ruptured multiple segments of a non-vertical quasi-orthogonal conjugate fault system1. Our models use supercomputing to find the link between the two earthquakes. We explain strong-motion, teleseismic, field mapping, high-rate global positioning system and space geodetic datasets with earthquake physics. We find that regional structure, ambient long- and short-term stress, and dynamic and static fault system interactions driven by overpressurized fluids and low dynamic friction are conjointly crucial to understand the dynamics and delays of the sequence. We demonstrate that a joint physics-based and data-driven approach can be used to determine the mechanics of complex fault systems and earthquake sequences when reconciling dense earthquake recordings, three-dimensional regional structure and stress models. We foresee that physics-based interpretation of big observational datasets will have a transformative impact on future geohazard mitigation.
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