Learning Stable Deep Dynamics Models for Partially Observed or Delayed Dynamical Systems

10/27/2021
by   Andreas Schlaginhaufen, et al.
0

Learning how complex dynamical systems evolve over time is a key challenge in system identification. For safety critical systems, it is often crucial that the learned model is guaranteed to converge to some equilibrium point. To this end, neural ODEs regularized with neural Lyapunov functions are a promising approach when states are fully observed. For practical applications however, partial observations are the norm. As we will demonstrate, initialization of unobserved augmented states can become a key problem for neural ODEs. To alleviate this issue, we propose to augment the system's state with its history. Inspired by state augmentation in discrete-time systems, we thus obtain neural delay differential equations. Based on classical time delay stability analysis, we then show how to ensure stability of the learned models, and theoretically analyze our approach. Our experiments demonstrate its applicability to stable system identification of partially observed systems and learning a stabilizing feedback policy in delayed feedback control.

READ FULL TEXT
research
01/17/2020

Learning Stable Deep Dynamics Models

Deep networks are commonly used to model dynamical systems, predicting h...
research
04/27/2021

Initializing LSTM internal states via manifold learning

We present an approach, based on learning an intrinsic data manifold, fo...
research
01/24/2023

Inference of Continuous Linear Systems from Data with Guaranteed Stability

Machine-learning technologies for learning dynamical systems from data p...
research
06/16/2021

Lorenz System State Stability Identification using Neural Networks

Nonlinear dynamical systems such as Lorenz63 equations are known to be c...
research
06/11/2020

Deep Learning for Stable Monotone Dynamical Systems

Monotone systems, originating from real-world (e.g., biological or chemi...
research
03/26/2021

Almost Surely Stable Deep Dynamics

We introduce a method for learning provably stable deep neural network b...
research
11/11/2022

Delay Embedded Echo-State Network: A Predictor for Partially Observed Systems

This paper considers the problem of data-driven prediction of partially ...

Please sign up or login with your details

Forgot password? Click here to reset