Sequential Bayesian experimental design for estimation of extreme-event probability in stochastic dynamical systems

02/22/2021
by   Xianliang Gong, et al.
0

We consider a dynamical system with two sources of uncertainties: (1) parameterized input with a known probability distribution and (2) stochastic input-to-response (ItR) function with heteroscedastic randomness. Our purpose is to efficiently quantify the extreme response probability when the ItR function is expensive to evaluate. The problem setup arises often in physics and engineering problems, with randomness in ItR coming from either intrinsic uncertainties (say, as a solution to a stochastic equation) or additional (critical) uncertainties that are not incorporated in the input parameter space. To reduce the required sampling numbers, we develop a sequential Bayesian experimental design method leveraging the variational heteroscedastic Gaussian process regression (VHGPR) to account for the stochastic ItR, along with a new criterion to select the next-best samples sequentially. The validity of our new method is first tested in two synthetic problems with the stochastic ItR functions defined artificially. Finally, we demonstrate the application of our method to an engineering problem of estimating the extreme ship motion probability in ensemble of wave groups, where the uncertainty in ItR naturally originates from the uncertain initial condition of ship motion in each wave group.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/19/2018

A sequential sampling strategy for extreme event statistics in nonlinear dynamical systems

We develop a method for the evaluation of extreme event statistics assoc...
research
06/03/2023

An information field theory approach to Bayesian state and parameter estimation in dynamical systems

Dynamical system state estimation and parameter calibration problems are...
research
06/27/2023

Evaluation of machine learning architectures on the quantification of epistemic and aleatoric uncertainties in complex dynamical systems

Machine learning methods for the construction of data-driven reduced ord...
research
05/19/2023

Bayesian approach to Gaussian process regression with uncertain inputs

Conventional Gaussian process regression exclusively assumes the existen...
research
07/17/2019

Output-weighted optimal sampling for Bayesian regression and rare event statistics using few samples

For many important problems the quantity of interest (or output) is an u...
research
04/07/2023

Data-Driven Response Regime Exploration and Identification for Dynamical Systems

Data-Driven Response Regime Exploration and Identification (DR^2EI) is a...
research
12/08/2022

Parameter Estimation with Maximal Updated Densities

A recently developed measure-theoretic framework solves a stochastic inv...

Please sign up or login with your details

Forgot password? Click here to reset