Probabilistic solution of chaotic dynamical system inverse problems
using Bayesian Artificial Neural Networks
- URL: http://arxiv.org/abs/2005.13028v1
- Date: Tue, 26 May 2020 20:35:02 GMT
- Title: Probabilistic solution of chaotic dynamical system inverse problems
using Bayesian Artificial Neural Networks
- Authors: David K. E. Green and Filip Rindler
- Abstract summary: Inverse problems for chaotic systems are numerically challenging.
Small perturbations in model parameters can cause very large changes in estimated forward trajectories.
Bizarre Artificial Neural Networks can be used to simultaneously fit a model and estimate model parameter uncertainty.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper demonstrates the application of Bayesian Artificial Neural
Networks to Ordinary Differential Equation (ODE) inverse problems. We consider
the case of estimating an unknown chaotic dynamical system transition model
from state observation data. Inverse problems for chaotic systems are
numerically challenging as small perturbations in model parameters can cause
very large changes in estimated forward trajectories. Bayesian Artificial
Neural Networks can be used to simultaneously fit a model and estimate model
parameter uncertainty. Knowledge of model parameter uncertainty can then be
incorporated into the probabilistic estimates of the inferred system's forward
time evolution. The method is demonstrated numerically by analysing the chaotic
Sprott B system. Observations of the system are used to estimate a posterior
predictive distribution over the weights of a parametric polynomial kernel
Artificial Neural Network. It is shown that the proposed method is able to
perform accurate time predictions. Further, the proposed method is able to
correctly account for model uncertainties and provide useful prediction
uncertainty bounds.
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