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Stochastic Port-Hamiltonian Neural Networks: Universal Approximation with Passivity Guarantees

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Stochastic port-Hamiltonian systems represent open dynamical systems with dissipation, inputs, and stochastic forcing in an energy based form. We introduce stochastic port-Hamiltonian neural networks, SPH-NNs, which parameterize the Hamiltonian with a feedforward network and enforce skew symmetry of the interconnection matrix and positive semidefiniteness of the dissipation matrix. For It\^o dynamics we establish a weak passivity inequality in expectation under an explicit generator condition, stated for a stopped process on a compact set. We also prove a universal approximation result showing that, on any compact set and finite horizon, SPH-NNs approximate the coefficients of a target stochastic port-Hamiltonian system with $C^2$ accuracy of the Hamiltonian and yield coupled solutions that remain close in mean square up to the exit time. Experiments on noisy mass spring, Duffing, and Van der Pol oscillators show improved long horizon rollouts and reduced energy error relative to a multilayer perceptron baseline.

Luca Di Persio, Matthias Ehrhardt, Youness Outaleb• 2026

Related benchmarks

TaskDatasetResultRank
Learning deterministic mean dynamicsMass-spring oscillator
True MSE0.0011
4
Learning deterministic mean dynamicsDuffing Oscillator
True MSE2.6
4
Learning deterministic mean dynamicsVan der Pol oscillator
True MSE1.5
4
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