Approximate Bayesian Model Inversion for PDEs with Heterogeneous and State-Dependent Coefficients

02/18/2019
by   David A. Barajas-Solano, et al.
0

We present two approximate Bayesian inference methods for parameter estimation in partial differential equation (PDE) models with space-dependent and state-dependent parameters. We demonstrate that these methods provide accurate and cost-effective alternatives to Markov Chain Monte Carlo simulation. We assume a parameterized Gaussian prior on the unknown functions, and approximate the posterior density by a parameterized multivariate Gaussian density. The parameters of the prior and posterior are estimated from sparse observations of the PDE model's states and the unknown functions themselves by maximizing the evidence lower bound (ELBO), a lower bound on the log marginal likelihood of the observations. The first method, Laplace-EM, employs the expectation maximization algorithm to maximize the ELBO, with a Laplace approximation of the posterior on the E-step, and minimization of a Kullback-Leibler divergence on the M-step. The second method, DSVI-EB, employs the doubly stochastic variational inference (DSVI) algorithm, in which the ELBO is maximized via gradient-based stochastic optimization, with nosiy gradients computed via simple Monte Carlo sampling and Gaussian backpropagation. We apply these methods to identifying diffusion coefficients in linear and nonlinear diffusion equations, and we find that both methods provide accurate estimates of posterior densities and the hyperparameters of Gaussian priors. While the Laplace-EM method is more accurate, it requires computing Hessians of the physics model. The DSVI-EB method is found to be less accurate but only requires gradients of the physics model.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/27/2020

Hamiltonian Monte Carlo using an adjoint-differentiated Laplace approximation

Gaussian latent variable models are a key class of Bayesian hierarchical...
research
09/25/2018

Practical bounds on the error of Bayesian posterior approximations: A nonasymptotic approach

Bayesian inference typically requires the computation of an approximatio...
research
07/31/2019

Gaussian Process Regression and Conditional Polynomial Chaos for Parameter Estimation

We present a new approach for constructing a data-driven surrogate model...
research
04/17/2018

Bayesian parameter estimation for relativistic heavy-ion collisions

I develop and apply a Bayesian method for quantitatively estimating prop...
research
05/23/2019

Accelerating Langevin Sampling with Birth-death

A fundamental problem in Bayesian inference and statistical machine lear...
research
04/07/2021

Laplace-aided variational inference for differential equation models

Ordinary differential equation (ODE) model whose regression curves are a...
research
02/06/2023

Reversible random number generation for adjoint Monte Carlo simulation of the heat equation

In PDE-constrained optimization, one aims to find design parameters that...

Please sign up or login with your details

Forgot password? Click here to reset