OCNANAMay 8

On a mean-field Pontryagin minimum principle for stochastic optimal control

arXiv:2506.105066.01 citationsh-index: 2
Predicted impact top 72% in OC · last 90 daysOriginality Incremental advance
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For researchers in stochastic optimal control, this provides a simplified deterministic alternative to forward-backward SDE methods, though limited to linear-quadratic problems.

This paper extends the Pontryagin minimum principle to stochastic optimal control via a deterministic mean-field formulation, enabling solution through forward mean-field ODEs. Numerical tests on inverted pendulum and Lorenz systems demonstrate applicability.

This paper outlines a novel extension of the classical Pontryagin minimum (maximum) principle to stochastic optimal control problems. Contrary to the well-known stochastic Pontryagin minimum principle involving forward-backward stochastic differential equations, the proposed formulation is deterministic and of mean-field type. We denote it by the McKean-Pontryagin minimum principle. The Hamiltonian structure of the proposed McKean-Pontryagin minimum principle is achieved via the introduction of a pair of auxiliary functions. A gauge freedom in the choice of one of these two functions can be used to decouple the forward and reverse time equations; hence simplifying the solution of the underlying boundary value problem. We also consider infinite horizon discounted cost optimal control problems. In this case, the mean-field formulation allows one to convert the computation of the desired optimal control law into solving a pair of forward mean-field ordinary differential equations. The McKean-Pontryagin minimum principle is tested numerically for a controlled inverted pendulum, a controlled Lorenz-63 system, and a controlled Lorenz-96 system. Although the focus is on linear-quadratic control problems, the proposed methodology is extendable to more general problems including mean-field type control formulations.

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