AI RESEARCH

Symbolic recovery of PDEs from measurement data

arXiv CS.LG

ArXi:2602.15603v2 Announce Type: replace Models based on partial differential equations (PDEs) are powerful for describing a wide range of complex phenomena in the natural sciences. Accurately identifying the PDE model, which represents the underlying physical law, is essential for a proper understanding of the problem. This reconstruction typically relies on indirect and noisy measurements of the system's state and, without specifically tailored methods, rarely yields symbolic expressions, thereby limiting interpretability.