2024
DOI: 10.1785/0120230207
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Broadband Ground-Motion Synthesis via Generative Adversarial Neural Operators: Development and Validation

Yaozhong Shi,
Grigorios Lavrentiadis,
Domniki Asimaki
et al.

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 dis… Show more

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