AI RESEARCH
Variational Neural Networks for Observable Thermodynamics (V-NOTS)
arXiv CS.LG
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ArXi:2509.09899v2 Announce Type: replace Much attention has recently been devoted to data-based computing of evolution of physical systems. In such approaches, information about data points from past trajectories in phase space is used to reconstruct the equations of motion and to predict future solutions that have not been observed before. However, in many cases, the available data does not correspond to the variables that define the system's phase space. We focus our attention on the important example of dissipative dynamical systems.