Broadband Ground‐Motion Synthesis via Generative Adversarial Neural Operators: Development and Validation

IF 2.6 3区 地球科学 Q2 GEOCHEMISTRY & GEOPHYSICS Bulletin of the Seismological Society of America Pub Date : 2024-08-01 DOI:10.1785/0120230207
Yaozhong Shi, Grigorios Lavrentiadis, Domniki Asimaki, Zachary E. Ross, Kamyar Azizzadenesheli
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Abstract

We present a data‐driven framework for ground‐motion synthesis that generates three‐component acceleration time histories conditioned on moment magnitude (M), rupture distance (⁠Rrup⁠), time‐average shear‐wave velocity at the top 30 m (⁠VS30⁠), and style of faulting. We use a Generative Adversarial Neural Operator (GANO)—a resolution invariant architecture that guarantees model training independent of the data sampling frequency. We first present the conditional ground‐motion synthesis algorithm (cGM‐GANO) and discuss its advantages compared to the previous work. We next train cGM‐GANO on simulated ground motions generated by the Southern California Earthquake Center Broadband Platform (BBP) and on recorded the Kiban–Kyoshin network (KiK‐net) data, and show that the model can learn the overall magnitude, distance, and VS30 scaling of effective amplitude spectra (EAS) ordinates and pseudospectral accelerations (PSA). Results specifically show that cGM‐GANO produces consistent median scaling with the training data for the corresponding tectonic environments over a wide range of frequencies for scenarios with sufficient data coverage. For the BBP dataset, cGM‐GANO cannot learn the ground‐motion scaling of the stochastic frequency components (f > 1 Hz); for the KiK‐net dataset, the largest misfit is observed at short distances (⁠Rrup<50 km⁠) and for soft‐soil conditions (⁠VS30<200 m/s⁠) due to the scarcity of such data. Except for these conditions, the aleatory variability of EAS and PSA are captured reasonably well. Finally, cGM‐GANO produces similar median scaling to traditional ground‐motion models (GMMs) for frequencies greater than 1 Hz for both PSA and EAS but underestimates the aleatory variability of EAS. Discrepancies in the comparisons between the synthetic ground motions and GMMs are attributed to inconsistencies between the training dataset and the datasets used in GMM development. Our pilot study demonstrates GANO’s potential for efficient synthesis of broadband ground motions.
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通过生成对抗神经算子合成宽带地面运动:开发与验证
我们提出了一个数据驱动的地动合成框架,该框架可生成三分量加速度时间历程,条件是力矩大小(M)、断裂距离(Rrup)、顶部 30 米处的时间平均剪切波速度(VS30)和断层类型。我们使用了生成对抗神经运算器(GANO)--一种分辨率不变的结构,可确保模型训练不受数据采样频率的影响。我们首先介绍了条件地动合成算法(cGM-GANO),并讨论了它与之前工作相比的优势。接下来,我们在南加州地震中心宽带平台(BBP)生成的模拟地动和记录的 Kiban-Kyoshin 网络(KiK-net)数据上对 cGM-GANO 进行了训练,结果表明该模型可以学习有效振幅谱(EAS)序号和伪谱加速度(PSA)的整体幅度、距离和 VS30 缩放。结果特别表明,cGM-GANO 能够在数据覆盖率足够大的情况下,在相应的构造环境中,在很宽的频率范围内产生与训练数据一致的中值缩放。对于 BBP 数据集,cGM-GANO 无法学习随机频率成分(f > 1 Hz)的地动缩放;对于 KiK-net 数据集,由于此类数据稀少,在短距离(Rrup<50 km)和软土条件(VS30<200 m/s)下观察到最大的不匹配。除这些条件外,EAS 和 PSA 的假定变异性得到了合理的捕捉。最后,对于频率大于 1 Hz 的 PSA 和 EAS,cGM-GANO 产生了与传统地动模型(GMMs)相似的中值比例,但低估了 EAS 的随机变异性。合成地面运动与 GMM 之间的比较差异可归因于训练数据集与用于 GMM 开发的数据集之间的不一致。我们的试验研究证明了 GANO 在高效合成宽带地面运动方面的潜力。
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来源期刊
Bulletin of the Seismological Society of America
Bulletin of the Seismological Society of America 地学-地球化学与地球物理
CiteScore
5.80
自引率
13.30%
发文量
140
审稿时长
3 months
期刊介绍: The Bulletin of the Seismological Society of America, commonly referred to as BSSA, (ISSN 0037-1106) is the premier journal of advanced research in earthquake seismology and related disciplines. It first appeared in 1911 and became a bimonthly in 1963. Each issue is composed of scientific papers on the various aspects of seismology, including investigation of specific earthquakes, theoretical and observational studies of seismic waves, inverse methods for determining the structure of the Earth or the dynamics of the earthquake source, seismometry, earthquake hazard and risk estimation, seismotectonics, and earthquake engineering. Special issues focus on important earthquakes or rapidly changing topics in seismology. BSSA is published by the Seismological Society of America.
期刊最新文献
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