Extended Koopman Models

10/14/2020
by   Span Spanbauer, et al.
0

We introduce two novel generalizations of the Koopman operator method of nonlinear dynamic modeling. Each of these generalizations leads to greatly improved predictive performance without sacrificing a unique trait of Koopman methods: the potential for fast, globally optimal control of nonlinear, nonconvex systems. The first generalization, Convex Koopman Models, uses convex rather than linear dynamics in the lifted space. The second, Extended Koopman Models, additionally introduces an invertible transformation of the control signal which contributes to the lifted convex dynamics. We describe a deep learning architecture for parameterizing these classes of models, and show experimentally that each significantly outperforms traditional Koopman models in trajectory prediction for two nonlinear, nonconvex dynamic systems.

READ FULL TEXT
research
01/27/2022

Towards Data-driven LQR with KoopmanizingFlows

We propose a novel framework for learning linear time-invariant (LTI) mo...
research
07/20/2023

Differentially Flat Learning-based Model Predictive Control Using a Stability, State, and Input Constraining Safety Filter

Learning-based optimal control algorithms control unknown systems using ...
research
05/04/2021

Operator Splitting for Adaptive Radiation Therapy with Nonlinear Health Dynamics

We present an optimization-based approach to radiation treatment plannin...
research
02/16/2022

Deep Koopman Operator with Control for Nonlinear Systems

Recently Koopman operator has become a promising data-driven tool to fac...
research
09/19/2023

Parameter-Varying Koopman Operator for Nonlinear System Modeling and Control

This paper proposes a novel approach for modeling and controlling nonlin...
research
09/29/2022

Dynamic Inference on Graphs using Structured Transition Models

Enabling robots to perform complex dynamic tasks such as picking up an o...

Please sign up or login with your details

Forgot password? Click here to reset