4.6 Article

Model inversion via multi-fidelity Bayesian optimization: a new paradigm for parameter estimation in haemodynamics, and beyond

Journal

JOURNAL OF THE ROYAL SOCIETY INTERFACE
Volume 13, Issue 118, Pages -

Publisher

ROYAL SOC
DOI: 10.1098/rsif.2015.1107

Keywords

multi-fidelity modelling; Bayesian optimization; inverse problems; blood flow simulations; outflow conditions; machine learning

Funding

  1. DARPA [HR0011-14-1-0060]
  2. AFOSR [FA9550-12-1-0463]
  3. NIH [1U01HL116323-01]
  4. Argonne Leadership Computing Facility (ALCF) through DOE INCITE programme

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We present a computational framework for model inversion based on multi-fidelity information fusion and Bayesian optimization. The proposed methodology targets the accurate construction of response surfaces in parameter space, and the efficient pursuit to identify global optima while keeping the number of expensive function evaluations at a minimum. We train families of correlated surrogates on available data using Gaussian processes and auto-regressive stochastic schemes, and exploit the resulting predictive posterior distributions within a Bayesian optimization setting. This enables a smart adaptive sampling procedure that uses the predictive posterior variance to balance the exploration versus exploitation trade-off, and is a key enabler for practical computations under limited budgets. The effectiveness of the proposed framework is tested on three parameter estimation problems. The first two involve the calibration of outflow boundary conditions of blood flow simulations in arterial bifurcations using multi-fidelity realizations of one-and three-dimensional models, whereas the last one aims to identify the forcing term that generated a particular solution to an elliptic partial differential equation.

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