Stochastic Time-Series Spectroscopy
John Scoville

TL;DR
Stochastic Time-Series Spectroscopy (STSS) is a novel method that uses higher moments of spectral data over time to better detect non-equilibrium phenomena, outperforming traditional PCA in certain scenarios.
Contribution
The paper introduces STSS, a scalable approach that leverages stochastic process characterization to enhance detection of non-equilibrium spectral features beyond PCA capabilities.
Findings
STSS can accurately detect non-equilibrium spectral features.
STSS outperforms PCA in specific applications like rock stress analysis.
Higher moments in STSS reveal information inaccessible to average spectra.
Abstract
Spectroscopically measuring low levels of non-equilibrium phenomena (e.g. emission in the presence of a large thermal background) can be problematic due to an unfavorable signal-to-noise ratio. An approach is presented to use time-series spectroscopy to separate non-equilibrium quantities from slowly varying equilibria. A stochastic process associated with the non-equilibrium part of the spectrum is characterized in terms of its central moments or cumulants, which may vary over time. This parameterization encodes information about the non-equilibrium behavior of the system. Stochastic time-series spectroscopy (STSS) can be implemented at very little expense in many settings since a series of scans are typically recorded in order to generate a low-noise averaged spectrum. Higher moments or cumulants may be readily calculated from this series, enabling the observation of quantities that…
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Taxonomy
TopicsAtmospheric and Environmental Gas Dynamics · Geochemistry and Geologic Mapping · Spectroscopy and Chemometric Analyses
