A geometry-aligned multi-fidelity framework for uncertainty quantification of wildfire spread
Konstantinos Vogiatzoglou, Costas Papadimitriou, Vasilis Bontozoglou, Petros Koumoutsakos, Han Gao

TL;DR
This paper introduces a geometry-aligned bi-fidelity surrogate framework for wildfire spread modeling that significantly reduces computational costs and improves accuracy in uncertainty quantification.
Contribution
The work presents a novel geometry-alignment approach that enhances bi-fidelity surrogate models for wildfire simulations, addressing convection-dominated fronts and reducing oscillations.
Findings
Surrogate accurately reproduces temperature and fuel composition with lower error.
Eliminates Gibbs oscillations near steep gradients.
Online predictions are about three orders of magnitude cheaper than high-fidelity evaluations.
Abstract
Forward propagation of input uncertainties in physics-based wildfire models is computationally prohibitive, limiting the use of high-fidelity simulators in risk assessment workflows. This work introduces a geometry-aligned bi-fidelity surrogate framework that addresses the convection-dominated nature of wildfire spread by mapping low- and high-fidelity solution snapshots onto a common reference domain prior to basis selection and reconstruction. Unlike conventional bi-fidelity schemes, which combine spatially shifted snapshots and thus suffer from oscillations and excess basis requirements near sharp fronts, the proposed mapping aligns the dominant front geometry through per-variable shift/stretch transforms in 1D and an activity indicator-based affine alignment in 2D, so that reduced bases compare physically corresponding structures rather than displaced ones. Building on the ADfiRe…
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