GPSINDy: Data-Driven Discovery of Equations of Motion

09/20/2023
by   Junette Hsin, et al.
0

In this paper, we consider the problem of discovering dynamical system models from noisy data. The presence of noise is known to be a significant problem for symbolic regression algorithms. We combine Gaussian process regression, a nonparametric learning method, with SINDy, a parametric learning approach, to identify nonlinear dynamical systems from data. The key advantages of our proposed approach are its simplicity coupled with the fact that it demonstrates improved robustness properties with noisy data over SINDy. We demonstrate our proposed approach on a Lotka-Volterra model and a unicycle dynamic model in simulation and on an NVIDIA JetRacer system using hardware data. We demonstrate improved performance over SINDy for discovering the system dynamics and predicting future trajectories.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/14/2020

Learning Stable Nonparametric Dynamical Systems with Gaussian Process Regression

Modelling real world systems involving humans such as biological process...
research
01/11/2023

On the functional form of the radial acceleration relation

We apply a new method for learning equations from data – Exhaustive Symb...
research
07/22/2021

Discovering Sparse Interpretable Dynamics from Partial Observations

Identifying the governing equations of a nonlinear dynamical system is k...
research
07/19/2023

A Competitive Learning Approach for Specialized Models: A Solution for Complex Physical Systems with Distinct Functional Regimes

Complex systems in science and engineering sometimes exhibit behavior th...
research
11/20/2022

Estimating Task Completion Times for Network Rollouts using Statistical Models within Partitioning-based Regression Methods

This paper proposes a data and Machine Learning-based forecasting soluti...

Please sign up or login with your details

Forgot password? Click here to reset