Moment-Driven Predictive Control of Mean-Field Collective Dynamics
The synthesis of control laws for interacting agent-based dynamics and their mean-field limit is studied. A linearization-based approach is used for the computation of sub-optimal feedback laws obtained from the solution of differential matrix Riccati equations. Quantification of dynamic performance...
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Zusammenfassung: | The synthesis of control laws for interacting agent-based dynamics and their
mean-field limit is studied. A linearization-based approach is used for the
computation of sub-optimal feedback laws obtained from the solution of
differential matrix Riccati equations. Quantification of dynamic performance of
such control laws leads to theoretical estimates on suitable linearization
points of the nonlinear dynamics. Subsequently, the feedback laws are embedded
into nonlinear model predictive control framework where the control is updated
adaptively in time according to dynamic information on moments of linear
mean-field dynamics. The performance and robustness of the proposed methodology
is assessed through different numerical experiments in collective dynamics. |
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DOI: | 10.48550/arxiv.2101.01970 |