MEAN-FIELD OPTIMAL CONTROL AND OPTIMALITY CONDITIONS IN THE SPACE OF PROBABILITY MEASURES
We derive a framework to compute optimal controls for problems with states in the space of probability measures. Since many optimal control problems constrained by a system of ordinary differential equations modeling interacting particles converge to optimal control problems constrained by a partial...
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Veröffentlicht in: | SIAM journal on control and optimization 2021-01, Vol.59 (2), p.977-1006 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | We derive a framework to compute optimal controls for problems with states in the space of probability measures. Since many optimal control problems constrained by a system of ordinary differential equations modeling interacting particles converge to optimal control problems constrained by a partial differential equation in the mean-field limit, it is interesting to have a calculus directly on the mesoscopic level of probability measures which allows us to derive the corresponding first-order optimality system. In addition to this new calculus, we provide relations for the resulting system to the first-order optimality system derived on the particle level and the first-order optimality system based on L-2-calculus under additional regularity assumptions. We further justify the use of the L-2-adjoint in numerical simulations by establishing a link between the adjoint in the space of probability measures and the adjoint corresponding to L-2-calculus. Moreover, we prove a convergence rate for the convergence of the optimal controls corresponding to the particle formulation to the optimal controls of the mean-field problem as the number of particles tends to infinity. |
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ISSN: | 0363-0129 1095-7138 |
DOI: | 10.1137/19M1249461 |