Reduced Order Modeling for First Order Hyperbolic Systems with Application to Multiparameter Acoustic Waveform Inversion
Liliana Borcea, Josselin Garnier, Alexander V. Mamonov, J\"orn Zimmerling

TL;DR
This paper develops data-driven reduced order models for first order hyperbolic systems, enabling more robust and efficient acoustic waveform inversion by improving the objective function used for estimating medium properties.
Contribution
It introduces a novel ROM construction for vectorial waves in hyperbolic systems, applicable to acoustic inversion without requiring prior medium knowledge.
Findings
ROMs improve inversion stability and accuracy.
Efficient non-iterative ROM computation from sensor data.
Applicable to lossless, non-dispersive media.
Abstract
Waveform inversion seeks to estimate an inaccessible heterogeneous medium from data gathered by sensors that emit probing signals and measure the generated waves. It is an inverse problem for a second order wave equation or a first order hyperbolic system, with the sensor excitation modeled as a forcing term and the heterogeneous medium described by unknown, spatially variable coefficients. The traditional ``full waveform inversion" (FWI) formulation estimates the unknown coefficients via minimization of the nonlinear, least squares data fitting objective function. For typical band-limited and high frequency data, this objective function has spurious local minima near and far from the true coefficients. Thus, FWI implemented with gradient based optimization algorithms may fail, even for good initial guesses. Recently, it was shown that it is possible to obtain a better behaved objective…
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