Optimal Covariance Steering of Linear Stochastic Systems with Hybrid Transitions
This work addresses the problem of optimally steering the state covariance of a linear stochastic system from an initial to a target, subject to hybrid transitions. The nonlinear and discontinuous jump dynamics complicate the control design for hybrid systems. Under uncertainties, stochastic jump ti...
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Main Authors | , , , |
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Format | Journal Article |
Language | English |
Published |
17.10.2024
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Subjects | |
Online Access | Get full text |
DOI | 10.48550/arxiv.2410.13222 |
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Summary: | This work addresses the problem of optimally steering the state covariance of
a linear stochastic system from an initial to a target, subject to hybrid
transitions. The nonlinear and discontinuous jump dynamics complicate the
control design for hybrid systems. Under uncertainties, stochastic jump timing
and state variations further intensify this challenge. This work aims to
regulate the hybrid system's state trajectory to stay close to a nominal
deterministic one, despite uncertainties and noises. We address this problem by
directly controlling state covariances around a mean trajectory, and this
problem is termed the Hybrid Covariance Steering (H-CS) problem. The jump
dynamics are approximated to the first order by leveraging the Saltation
Matrix. When the jump dynamics are nonsingular, we derive an analytical
closed-form solution to the H-CS problem. For general jump dynamics with
possible singularity and changes in the state dimensions, we reformulate the
problem into a convex optimization over path distributions by leveraging
Schrodinger's Bridge duality to the smooth covariance control problem. The
covariance propagation at hybrid events is enforced as equality constraints to
handle singularity issues. The proposed convex framework scales linearly with
the number of jump events, ensuring efficient, optimal solutions. This work
thus provides a computationally efficient solution to the general H-CS problem.
Numerical experiments are conducted to validate the proposed method. |
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DOI: | 10.48550/arxiv.2410.13222 |