Deep Learning of Chaotic Systems from Partially-Observed Data
Victor Churchill, Dongbin Xiu

TL;DR
This paper demonstrates that deep neural networks can effectively learn and model chaotic systems from partial observations, providing accurate qualitative and quantitative predictions despite the inherent unpredictability of chaos.
Contribution
The study applies a neural network framework to chaotic systems, showing it can learn dynamics from limited data and evaluate chaos using multiple measures.
Findings
Neural networks accurately model Lorenz systems from partial data.
The approach captures chaotic behavior with limited observed variables.
Qualitative and quantitative measures confirm successful learning.
Abstract
Recently, a general data driven numerical framework has been developed for learning and modeling of unknown dynamical systems using fully- or partially-observed data. The method utilizes deep neural networks (DNNs) to construct a model for the flow map of the unknown system. Once an accurate DNN approximation of the flow map is constructed, it can be recursively executed to serve as an effective predictive model of the unknown system. In this paper, we apply this framework to chaotic systems, in particular the well-known Lorenz 63 and 96 systems, and critically examine the predictive performance of the approach. A distinct feature of chaotic systems is that even the smallest perturbations will lead to large (albeit bounded) deviations in the solution trajectories. This makes long-term predictions of the method, or any data driven methods, questionable, as the local model accuracy will…
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Taxonomy
TopicsModel Reduction and Neural Networks · Computational Physics and Python Applications · Time Series Analysis and Forecasting
