In this work, we propose an adaptive learning approach based on temporal normalizing flows for solving time-dependent Fokker-Planck (TFP) equations. It is well known that solutions of such equations are probability density functions, and thus our approach relies on modelling the target solutions with the temporal normalizing flows. The temporal normalizing flow is then trained based on the TFP loss function, without requiring any labeled data. Being a machine learning scheme, the proposed approach is mesh-free and can be easily applied to high dimensional problems. We present a variety of test problems to show the effectiveness of the learning approach.Comment: 16page
The mean first exit time, escape probability and transitional probability densities are utilized to ...
The reconstruction of the Fokker-Planck equations from time series without prior information is stil...
Minimal models for the explanation of decision-making in computational neuroscience are based on the...
The method of choice for integrating the time-dependent Fokker-Planck equation in high-dimension is ...
The optimal non-linear filter estimates can be obtained by solving the Fokker-Planck equation (FPE) ...
In this work, we propose a method to learn multivariate probability distributions using sample path ...
We discretize spatial domains into lattices. We provide the multivariate Fokker-Planck partial diffe...
Modeling and predicting the transient behavior of higher dimensional nonlinear dynamical systems sub...
The Kolmogorov $n$-width of the solution manifolds of transport-dominated problems can decay slowly....
In this talk I will discuss the construction of approximate solutions for the Non-linear Fokker-Plan...
In this paper, we develop and analyze numerical methods for high dimensional Fokker-Planck equations...
The issue of the relaxation to equilibrium has been at the core of the kinetic theory of rarefied ga...
The Fokker{Planck equation, or forward Kolmogorov equation, describes the evolution of the probabili...
We study a Fokker-Planck equation modelling the firing rates of two interacting populations of neuro...
We propose a hybrid framework opPINN: physics-informed neural network (PINN) with operator learning ...
The mean first exit time, escape probability and transitional probability densities are utilized to ...
The reconstruction of the Fokker-Planck equations from time series without prior information is stil...
Minimal models for the explanation of decision-making in computational neuroscience are based on the...
The method of choice for integrating the time-dependent Fokker-Planck equation in high-dimension is ...
The optimal non-linear filter estimates can be obtained by solving the Fokker-Planck equation (FPE) ...
In this work, we propose a method to learn multivariate probability distributions using sample path ...
We discretize spatial domains into lattices. We provide the multivariate Fokker-Planck partial diffe...
Modeling and predicting the transient behavior of higher dimensional nonlinear dynamical systems sub...
The Kolmogorov $n$-width of the solution manifolds of transport-dominated problems can decay slowly....
In this talk I will discuss the construction of approximate solutions for the Non-linear Fokker-Plan...
In this paper, we develop and analyze numerical methods for high dimensional Fokker-Planck equations...
The issue of the relaxation to equilibrium has been at the core of the kinetic theory of rarefied ga...
The Fokker{Planck equation, or forward Kolmogorov equation, describes the evolution of the probabili...
We study a Fokker-Planck equation modelling the firing rates of two interacting populations of neuro...
We propose a hybrid framework opPINN: physics-informed neural network (PINN) with operator learning ...
The mean first exit time, escape probability and transitional probability densities are utilized to ...
The reconstruction of the Fokker-Planck equations from time series without prior information is stil...
Minimal models for the explanation of decision-making in computational neuroscience are based on the...