Describes an LLM-orchestrated workflow that trains a surrogate on CAE data (R²=0.87), runs NSGA-II optimization, generates morphed geometries, and produces 35 compliant pedestrian-protection designs in a front-bumper case study.
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Surrogate Assisted Pedestrian Protection Design via a Foundation Model Orchestrated Workflow
Describes an LLM-orchestrated workflow that trains a surrogate on CAE data (R²=0.87), runs NSGA-II optimization, generates morphed geometries, and produces 35 compliant pedestrian-protection designs in a front-bumper case study.