Large-Scale 3D Ground-Motion Synthesis with Physics-Inspired Latent Operator Flow Matching
arXiv cs.LG / 3/19/2026
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Key Points
- GMFlow is a physics-inspired latent operator flow matching framework that generates large-scale regional ground-motion time histories conditioned on physical parameters.
- It delivers a 10,000-fold speedup over conventional physics-based simulations, enabling rapid uncertainty-aware hazard assessment for distributed infrastructure.
- The method is validated on simulated San Francisco Bay Area earthquake scenarios, producing spatially coherent ground motion across more than 9 million grid points.
- GMFlow is mesh-agnostic and represents a broader advance in generative modeling of large-scale spatiotemporal physical fields with potential applications beyond seismology.
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