Tipping Point Forecasting in Non-Stationary Dynamics on Function Spaces

08/17/2023
by   Miguel Liu-Schiaffini, et al.
0

Tipping points are abrupt, drastic, and often irreversible changes in the evolution of non-stationary and chaotic dynamical systems. For instance, increased greenhouse gas concentrations are predicted to lead to drastic decreases in low cloud cover, referred to as a climatological tipping point. In this paper, we learn the evolution of such non-stationary dynamical systems using a novel recurrent neural operator (RNO), which learns mappings between function spaces. After training RNO on only the pre-tipping dynamics, we employ it to detect future tipping points using an uncertainty-based approach. In particular, we propose a conformal prediction framework to forecast tipping points by monitoring deviations from physics constraints (such as conserved quantities and partial differential equations), enabling forecasting of these abrupt changes along with a rigorous measure of uncertainty. We illustrate our proposed methodology on non-stationary ordinary and partial differential equations, such as the Lorenz-63 and Kuramoto-Sivashinsky equations. We also apply our methods to forecast a climate tipping point in stratocumulus cloud cover. In our experiments, we demonstrate that even partial or approximate physics constraints can be used to accurately forecast future tipping points.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/14/2020

PhICNet: Physics-Incorporated Convolutional Recurrent Neural Networks for Modeling Dynamical Systems

Dynamical systems involving partial differential equations (PDEs) and or...
research
05/01/2023

Reservoir Computing with Error Correction: Long-term Behaviors of Stochastic Dynamical Systems

The prediction of stochastic dynamical systems and the capture of dynami...
research
01/12/2023

PINN for Dynamical Partial Differential Equations is Not Training Deeper Networks Rather Learning Advection and Time Variance

The concepts and techniques of physics-informed neural networks (PINNs) ...
research
08/08/2019

NeuPDE: Neural Network Based Ordinary and Partial Differential Equations for Modeling Time-Dependent Data

We propose a neural network based approach for extracting models from dy...
research
07/01/2022

Using Machine Learning to Anticipate Tipping Points and Extrapolate to Post-Tipping Dynamics of Non-Stationary Dynamical Systems

In this paper we consider the machine learning (ML) task of predicting t...
research
05/24/2023

Reconstruction, forecasting, and stability of chaotic dynamics from partial data

The forecasting and computation of the stability of chaotic systems from...
research
05/24/2022

Image Trinarization Using a Partial Differential Equations: A Novel Approach to Automatic Sperm Image Analysis

Partial differential equations have recently garnered substantial attent...

Please sign up or login with your details

Forgot password? Click here to reset