SWinvert: A workflow for performing rigorous surface wave inversions
Joseph P. Vantassel, Brady R. Cox

TL;DR
SWinvert is a comprehensive, open-source workflow that enhances surface wave inversion analysis by systematically addressing non-uniqueness, uncertainty, and non-linearity, supported by high-performance computing and adaptable to various inversion tools.
Contribution
It introduces a systematic, open-source workflow with multiple parameterizations and global searches for surface wave inversion, improving uncertainty quantification and addressing non-uniqueness in shear wave velocity profiles.
Findings
Uncertainty effects are minimal for simple models with broadband data.
Non-uniqueness significantly impacts complex models with band-limited data.
The workflow effectively quantifies Vs profile uncertainty.
Abstract
SWinvert is a workflow developed at The University of Texas at Austin for the inversion of surface wave dispersion data. SWinvert encourages analysts to investigate inversion uncertainty and non-uniqueness in shear wave velocity (Vs) by providing a systematic procedure and open-source tools for surface wave inversion. In particular, the workflow enables the use of multiple layering parameterizations to address the inversion's non-uniqueness, multiple global searches for each parameterization to address the inverse problem's non-linearity, and quantification of Vs uncertainty in the resulting profiles. To encourage its adoption, the SWinvert workflow is supported by an open-source Python package, SWprepost, for surface wave inversion pre- and post-processing and an application on the DesignSafe-CyberInfracture, SWbatch, that enlists high-performance computing for performing batch-style…
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