AI RESEARCH
SOLIS: Physics-Informed Learning of Interpretable Neural Surrogates for Nonlinear Systems
arXiv CS.AI
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ArXi:2604.14879v1 Announce Type: cross Nonlinear system identification must balance physical interpretability with model flexibility. Classical methods yield structured, control-relevant models but rely on rigid parametric forms that often miss complex nonlinearities, whereas Neural ODEs are expressive yet largely black-box. Physics-Informed Neural Networks (PINNs) sit between these extremes, but inverse PINNs typically assume a known governing equation with fixed coefficients, leading to identifiability failures when the true dynamics are unknown or state-dependent.