Fast Physics-Informed Model Predictive Control Approximation for Lyapunov Stability
At the forefront of control techniques is Model Predictive Control (MPC). While MPCs are effective, their requisite to recompute an optimal control given a new state leads to sparse response to the system and may make their implementation infeasible in small systems with low computational resources....
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Zusammenfassung: | At the forefront of control techniques is Model Predictive Control (MPC).
While MPCs are effective, their requisite to recompute an optimal control given
a new state leads to sparse response to the system and may make their
implementation infeasible in small systems with low computational resources. To
address these limitations in stability control, this research presents a small
deterministic Physics-Informed MPC Surrogate model (PI-MPCS). PI-MPCS was
developed to approximate the control by an MPC while encouraging stability and
robustness through the integration of the system dynamics and the formation of
a Lyapunov stability profile. Empirical results are presented on the task of 2D
quadcopter landing. They demonstrate a rapid and precise MPC approximation on a
non-linear system along with an estimated two times speed up on the
computational requirements when compared against an MPC. PI-MPCS, in addition,
displays a level of stable control for in- and out-of-distribution states as
encouraged by the discrete dynamics residual and Lyapunov stability loss
functions. PI-MPCS is meant to serve as a surrogate to MPC on situations in
which the computational resources are limited. |
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DOI: | 10.48550/arxiv.2410.16173 |