AI RESEARCH
Learning to Test: Physics-Informed Representation for Dynamical Instability Detection
arXiv CS.LG
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ArXi:2604.10967v1 Announce Type: new Many safety-critical scientific and engineering systems evolve according to differential-algebraic equations (DAEs), where dynamical behavior is constrained by physical laws and admissibility conditions. In practice, these systems operate under stochastically varying environmental inputs, so stability is not a static property but must be reassessed as the context distribution shifts. Repeated large-scale DAE simulation, however, is computationally prohibitive in high-dimensional or real-time settings.