Adaptive Modeling Powers Fast Multi-parameter Fitting of CARS Spectra
Gregory J. Hunt, Cody R. Ground, Andrew D. Cutler

TL;DR
This paper introduces an adaptive, kernel-based approximation method for rapid, multi-parameter fitting of CARS spectra, significantly reducing computational costs while maintaining accuracy in gas diagnostics.
Contribution
It presents a novel machine learning-inspired adaptive kernel approach for efficient CARS spectrum modeling, improving speed and flexibility over traditional methods.
Findings
Accurately recovers multiple flow parameters with fewer library spectra.
Reduces computational time compared to traditional spectrum calculators.
Flexible trade-off between speed and accuracy demonstrated.
Abstract
Coherent anti-Stokes Raman Spectroscopy (CARS) is a laser-based measurement technique widely applied across many science and engineering disciplines to perform non-intrusive gas diagnostics. CARS is often used to study combustion, where the measured spectra can be used to simultaneously recover multiple flow parameters from the reacting gas such as temperature and relative species mole fractions. This is typically done by using numerical optimization to find the flow parameters for which a theoretical model of the CARS spectra best matches the actual measurements. The most commonly used theoretical model is the CARSFT spectrum calculator. Unfortunately, this CARSFT spectrum generator is computationally expensive and using it to recover multiple flow parameters can be prohibitively time-consuming, especially when experiments have hundreds or thousands of measurements distributed over…
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Taxonomy
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
