Abstract

Physics-informed neural networks are developed to characterize the state of dynamical systems in a random environment. The neural network approximates the probability density function (pdf) or the characteristic function (chf) of the state of these systems, which satisfy the Fokker-Planck equation or an integro-differential equation under Gaussian and/or Poisson white noises. We examine analytically and numerically the advantages and disadvantages of solving each type of differential equation to characterize the state. It is also demonstrated how prior information of the dynamical system can be exploited to design and simplify the neural network architecture. Numerical examples show that (1) the neural network solution can approximate the target solution even for partial integro-differential equations and a system of partial differential equations describing the time evolution of the pdf/chf, (2) solving either the Fokker-Planck equation or the chf differential equation using neural networks yields similar pdfs of the state, and (3) the solution to these differential equations can be used to study the behavior of the state for different types of random forcings.

Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call