This paper focuses on the role of a government of a large population of interacting agents as a meanfield optimal control problem derived from deterministic finite agent dynamics. The control problems are constrained by a Partial Differential Equation of continuity-type without diffusion, governing the dynamics of the probability distribution of the agent population. We derive existence of optimal controls in a measure-theoretical setting as natural limits of finite agent optimal controls without any assumption on the regularity of control competitors. In particular, we prove the consistency of mean-field optimal controls with corresponding underlying finite agent ones. The results follow from a Γ-convergence argument constructed over the mean-field limit, which stems from leveraging the superposition principle.

Mean-field optimal control as Gamma-limit of finite agent controls

Savaré, Giuseppe
;
2019

Abstract

This paper focuses on the role of a government of a large population of interacting agents as a meanfield optimal control problem derived from deterministic finite agent dynamics. The control problems are constrained by a Partial Differential Equation of continuity-type without diffusion, governing the dynamics of the probability distribution of the agent population. We derive existence of optimal controls in a measure-theoretical setting as natural limits of finite agent optimal controls without any assumption on the regularity of control competitors. In particular, we prove the consistency of mean-field optimal controls with corresponding underlying finite agent ones. The results follow from a Γ-convergence argument constructed over the mean-field limit, which stems from leveraging the superposition principle.
2019
2019
Savaré, Giuseppe; Lisini, Stefano; Orrieri, Carlo; Fornasier, Massimo
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11565/4032536
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