Agentic Exploration of PDE Spaces using Latent Foundation Models for Parameterized Simulations
arXiv cs.AI / 4/14/2026
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Key Points
- The paper proposes an agentic framework that couples multi-agent LLMs with latent foundation models (LFMs) to explore PDE-governed physical systems efficiently across continuous, high-dimensional parameter spaces.
- The LFM is trained as a generative surrogate over parameterized simulations, producing compact, disentangled latent representations that allow agents to query arbitrary PDE boundary/parameter configurations at low cost.
- A hierarchical closed-loop of hypothesis → experimentation → analysis → verification is used to automate exploration without requiring user intervention, leveraging a tool-modular interface.
- Applied to flow past tandem cylinders at Re=500, the system autonomously evaluates 1,600 parameter-location pairs and uncovers regime-dependent scaling laws with a dual-extrema structure near a near-wake to co-shedding transition.
- The authors argue this coupling of learned physical representations with agentic reasoning forms a general paradigm for automated scientific discovery in PDE-governed phenomena.
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