Optimal Experimental Design for Inverse Problems in the Presence of Observation Correlations

07/28/2020
by   Ahmed Attia, et al.
0

Optimal experimental design (OED) is the general formalism of sensor placement and decisions about the data collection strategy for engineered or natural experiments. This approach is prevalent in many critical fields such as battery design, numerical weather prediction, geosciences, and environmental and urban studies. State-of-the-art computational methods for experimental design, however, do not accommodate correlation structure in observational errors produced by many expensive-to-operate devices such as X-ray machines, radars, and satellites. Discarding evident data correlations leads to biased results, higher expenses, and waste of valuable resources. We present a general formulation of the OED formalism for model-constrained large-scale Bayesian linear inverse problems, where measurement errors are generally correlated. The proposed approach utilizes the Hadamard product of matrices to formulate the weighted likelihood and is valid for both finite- and infinite-dimensional Bayesian inverse problems. Extensive numerical experiments are carried out for empirical verification of the proposed approach using an advection-diffusion model, where the objective is to optimally place a small set of sensors, under a limited budget, to predict the concentration of a contaminant in a closed and bounded domain.

READ FULL TEXT
research
05/05/2023

Robust A-Optimal Experimental Design for Bayesian Inverse Problems

Optimal design of experiments for Bayesian inverse problems has recently...
research
07/23/2020

Sensor Clusterization in D-optimal Design in Infinite Dimensional Bayesian Inverse Problems

We investigate the problem of sensor clusterization in optimal experimen...
research
02/19/2018

Goal-Oriented Optimal Design of Experiments for Large-Scale Bayesian Linear Inverse Problems

We develop a framework for goal oriented optimal design of experiments (...
research
01/15/2021

Stochastic Learning Approach to Binary Optimization for Optimal Design of Experiments

We present a novel stochastic approach to binary optimization for optima...
research
01/27/2023

A Greedy Sensor Selection Algorithm for Hyperparameterized Linear Bayesian Inverse Problems

We consider optimal sensor placement for a family of linear Bayesian inv...
research
12/13/2019

Solving Optimal Experimental Design with Sequential Quadratic Programming and Chebyshev Interpolation

We propose an optimization algorithm to compute the optimal sensor locat...
research
05/29/2020

Learning and correcting non-Gaussian model errors

All discretized numerical models contain modelling errors - this reality...

Please sign up or login with your details

Forgot password? Click here to reset