Data-driven probability density forecast for stochastic dynamical systems
Meng Zhao, Lijian Jiang

TL;DR
This paper introduces a data-driven, nonparametric method using stochastic Koopman operators and EDMD to forecast the probability density evolution of stochastic dynamical systems, offering improved accuracy over existing methods.
Contribution
The paper develops a novel approach combining stochastic Koopman operators and EDMD for probability density forecasting, with convergence guarantees and enhanced accuracy compared to diffusion forecast.
Findings
Method accurately predicts probability density evolution.
Converges to the Galerkin projection of Fokker-Planck solutions.
Outperforms diffusion forecast in numerical examples.
Abstract
In this paper, a data-driven nonparametric approach is presented for forecasting the probability density evolution of stochastic dynamical systems. The method is based on stochastic Koopman operator and extended dynamic mode decomposition (EDMD). To approximate the finite-dimensional eigendecomposition of the stochastic Koopman operator, EDMD is applied to the training data set sampled from the stationary distribution of the underlying stochastic dynamical system. The family of the Koopman operators form a semigroup, which is generated by the infinitesimal generator of the stochastic dynamical system. A significant connection between the generator and Fokker-Planck operator provides a way to construct an orthonormal basis of a weighted Hilbert space. A spectral decomposition of the probability density function is accomplished in this weighted space. This approach is a data-driven method…
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Taxonomy
TopicsModel Reduction and Neural Networks · Gaussian Processes and Bayesian Inference · Probabilistic and Robust Engineering Design
