Context-aware controller inference for stabilizing dynamical systems from scarce data

07/22/2022
by   Steffen W. R. Werner, et al.
0

This work introduces a data-driven control approach for stabilizing high-dimensional dynamical systems from scarce data. The proposed context-aware controller inference approach is based on the observation that controllers need to act locally only on the unstable dynamics to stabilize systems. This means it is sufficient to learn the unstable dynamics alone, which are typically confined to much lower dimensional spaces than the high-dimensional state spaces of all system dynamics and thus few data samples are sufficient to identify them. Numerical experiments demonstrate that context-aware controller inference learns stabilizing controllers from orders of magnitude fewer data samples than traditional data-driven control techniques and variants of reinforcement learning. The experiments further show that the low data requirements of context-aware controller inference are especially beneficial in data-scarce engineering problems with complex physics, for which learning complete system dynamics is often intractable in terms of data and training costs.

READ FULL TEXT

page 19

page 21

research
03/06/2023

Data-Driven Control with Inherent Lyapunov Stability

Recent advances in learning-based control leverage deep function approxi...
research
02/28/2022

On the sample complexity of stabilizing linear dynamical systems from data

Learning controllers from data for stabilizing dynamical systems typical...
research
04/06/2021

Data-driven Design of Context-aware Monitors for Hazard Prediction in Artificial Pancreas Systems

Medical Cyber-physical Systems (MCPS) are vulnerable to accidental or ma...
research
05/11/2019

Cyclone intensity estimate with context-aware cyclegan

Deep learning approaches to cyclone intensity estimationhave recently sh...
research
07/05/2018

Adaptive Path-Integral Autoencoder: Representation Learning and Planning for Dynamical Systems

We present a representation learning algorithm that learns a low-dimensi...
research
12/02/2022

Operator inference with roll outs for learning reduced models from scarce and low-quality data

Data-driven modeling has become a key building block in computational sc...
research
06/28/2023

Emulating the dynamics of complex systems using autoregressive models on manifolds (mNARX)

In this study, we propose a novel surrogate modelling approach to effici...

Please sign up or login with your details

Forgot password? Click here to reset