AI RESEARCH

Spatio-temporal, multi-field deep learning of shock propagation in meso-structured media

arXiv CS.LG

ArXi:2509.16139v4 Announce Type: replace Predicting the extreme hydrodynamic response of porous and architected lattice materials is a fundamental challenge in high energy density physics, where shock-induced pore collapse, baroclinic vorticity, and anomalous kinetic and thermodynamic states must be resolved across multiple scales. Traditional high-fidelity hydrocodes are computationally prohibitive for large-scale design exploration in applications like planetary defense and inertial confinement fusion.