We present a nonparametric Bayesian framework to infer radial distribution functions from experimental scattering measurements with uncertainty quantification using nonstationary Gaussian processes. The Gaussian process prior mean and kernel functions are designed to mitigate well-known numerical challenges with the Fourier transform, including discrete measurement binning and detector windowing, while encoding fundamental yet minimal physical knowledge of the liquid structure. We demonstrate uncertainty propagation of the Gaussian process posterior to unmeasured quantities of interest. Experimental radial distribution functions of liquid argon and water with uncertainty quantification are provided as both a proof of principle for the method and a benchmark for molecular models.
Physics-Informed Gaussian Process Inference of Liquid Structure from Scattering Data
Harry W Sullivan,M. Cervenka,Brennon L. Shanks,Michael P. Hoepfner
Published 2025 in Journal of Physical Chemistry B
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- Publication year
2025
- Venue
Journal of Physical Chemistry B
- Publication date
2025-07-10
- Fields of study
Medicine, Physics
- Identifiers
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- Source metadata
Semantic Scholar, PubMed
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