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Physics-informed graph neural networks enhance scalability of variational nonequilibrium optimal control
[article]
2022
arXiv
pre-print
When a physical system is driven away from equilibrium, the statistical distribution of its dynamical trajectories informs many of its physical properties. Characterizing the nature of the distribution of dynamical observables, such as a current or entropy production rate, has become a central problem in nonequilibrium statistical mechanics. Asymptotically, for a broad class of observables, the distribution of a given observable satisfies a large deviation principle when the dynamics is
arXiv:2204.05493v1
fatcat:oeriz55ycffr7matzgbxbaxadq