Computationally Efficient Data-Driven Discovery and Linear Representation of Nonlinear Systems For Control
Systems and Control
2023-09-11 v1 Artificial Intelligence
Systems and Control
Abstract
This work focuses on developing a data-driven framework using Koopman operator theory for system identification and linearization of nonlinear systems for control. Our proposed method presents a deep learning framework with recursive learning. The resulting linear system is controlled using a linear quadratic control. An illustrative example using a pendulum system is presented with simulations on noisy data. We show that our proposed method is trained more efficiently and is more accurate than an autoencoder baseline.
Keywords
Cite
@article{arxiv.2309.04074,
title = {Computationally Efficient Data-Driven Discovery and Linear Representation of Nonlinear Systems For Control},
author = {Madhur Tiwari and George Nehma and Bethany Lusch},
journal= {arXiv preprint arXiv:2309.04074},
year = {2023}
}