Receding Hamiltonian-Informed Optimal Neural Control and State Estimation for Closed-Loop Dynamical Systems
- URL: http://arxiv.org/abs/2411.01297v2
- Date: Sat, 09 Nov 2024 18:19:03 GMT
- Title: Receding Hamiltonian-Informed Optimal Neural Control and State Estimation for Closed-Loop Dynamical Systems
- Authors: Josue N. Rivera, Dengfeng Sun,
- Abstract summary: Hamiltonian-Informed Optimal Neural (Hion) controllers are a novel class of neural network-based controllers for dynamical systems.
Hion controllers estimate future states and compute optimal control inputs using Pontryagin's Principle.
- Score: 4.05766189327054
- License:
- Abstract: This paper formalizes Hamiltonian-Informed Optimal Neural (Hion) controllers, a novel class of neural network-based controllers for dynamical systems and explicit non-linear model predictive control. Hion controllers estimate future states and compute optimal control inputs using Pontryagin's Maximum Principle. The proposed framework allows for customization of transient behavior, addressing limitations of existing methods. The Taylored Multi-Faceted Approach for Neural ODE and Optimal Control (T-mano) architecture facilitates training and ensures accurate state estimation. Optimal control strategies are demonstrated for both linear and non-linear dynamical systems.
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