LiftProj: Physics-Informed Koopman Lifting and Projection for Nonlinear Optimal Control via First-Order Optimization

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초록

This paper proposes a first-order optimization framework for nonlinear optimal control problems, efficiently handling complex dynamics via projection onto a lifted, approximately linear constraint manifold constructed using a physics-informed deep Koopman operator. By circumventing repeated convex programming and avoiding penalty-based refinements, the algorithm mitigates sensitivity to hyperparameters and reduces reliance on domain-specific knowledge and manual modeling. A physics-informed loss function preserves physical consistency when mapping back to the original space, enabling fast convergence to near-optimal solutions. Experiments demonstrate improved computational efficiency and stability over established sequential programming approaches. © 2017 IEEE.

키워드

First-order optimizationKoopman operatornonlinear controlphysics-informed neural networks
제목
LiftProj: Physics-Informed Koopman Lifting and Projection for Nonlinear Optimal Control via First-Order Optimization
저자
Choi, JiwooKim, Jong-Han
DOI
10.1109/LCSYS.2025.3578571
발행일
2025
유형
Article in press
저널명
IEEE Control Systems Letters
9
페이지
817 ~ 822