Paper ID: 2402.07763
Multi-level Optimal Control with Neural Surrogate Models
Dante Kalise, EstefanÃa Loayza-Romero, Kirsten A. Morris, Zhengang Zhong
Optimal actuator and control design is studied as a multi-level optimisation problem, where the actuator design is evaluated based on the performance of the associated optimal closed loop. The evaluation of the optimal closed loop for a given actuator realisation is a computationally demanding task, for which the use of a neural network surrogate is proposed. The use of neural network surrogates to replace the lower level of the optimisation hierarchy enables the use of fast gradient-based and gradient-free consensus-based optimisation methods to determine the optimal actuator design. The effectiveness of the proposed surrogate models and optimisation methods is assessed in a test related to optimal actuator location for heat control.
Submitted: Feb 12, 2024